{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "colab": {
     "base_uri": "https://localhost:8080/"
    },
    "id": "MI1G7yUN7t5H",
    "outputId": "82587ef2-2e18-4778-e41b-02b3ff73093f"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "WARNING:tensorflow:From C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\keras\\src\\losses.py:2976: The name tf.losses.sparse_softmax_cross_entropy is deprecated. Please use tf.compat.v1.losses.sparse_softmax_cross_entropy instead.\n",
      "\n",
      "%pylab is deprecated, use %matplotlib inline and import the required libraries.\n",
      "Populating the interactive namespace from numpy and matplotlib\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\tensorflow_addons\\utils\\tfa_eol_msg.py:23: UserWarning: \n",
      "\n",
      "TensorFlow Addons (TFA) has ended development and introduction of new features.\n",
      "TFA has entered a minimal maintenance and release mode until a planned end of life in May 2024.\n",
      "Please modify downstream libraries to take dependencies from other repositories in our TensorFlow community (e.g. Keras, Keras-CV, and Keras-NLP). \n",
      "\n",
      "For more information see: https://github.com/tensorflow/addons/issues/2807 \n",
      "\n",
      "  warnings.warn(\n",
      "C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\tensorflow_addons\\utils\\ensure_tf_install.py:53: UserWarning: Tensorflow Addons supports using Python ops for all Tensorflow versions above or equal to 2.12.0 and strictly below 2.15.0 (nightly versions are not supported). \n",
      " The versions of TensorFlow you are currently using is 2.15.1 and is not supported. \n",
      "Some things might work, some things might not.\n",
      "If you were to encounter a bug, do not file an issue.\n",
      "If you want to make sure you're using a tested and supported configuration, either change the TensorFlow version or the TensorFlow Addons's version. \n",
      "You can find the compatibility matrix in TensorFlow Addon's readme:\n",
      "https://github.com/tensorflow/addons\n",
      "  warnings.warn(\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "WARNING:tensorflow:From C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\keras\\src\\backend.py:1398: The name tf.executing_eagerly_outside_functions is deprecated. Please use tf.compat.v1.executing_eagerly_outside_functions instead.\n",
      "\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\vit_keras\\utils.py:81: UserWarning: Resizing position embeddings from 24, 24 to 14, 14\n",
      "  warnings.warn(\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "WARNING:tensorflow:From C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\keras\\src\\layers\\pooling\\max_pooling2d.py:161: The name tf.nn.max_pool is deprecated. Please use tf.nn.max_pool2d instead.\n",
      "\n",
      "WARNING:tensorflow:`input_shape` is undefined or non-square, or `rows` is not in [96, 128, 160, 192, 224]. Weights for input shape (224, 224) will be loaded as the default.\n"
     ]
    }
   ],
   "source": [
    "import os\n",
    "from PIL import Image\n",
    "import numpy as np\n",
    "# import keras\n",
    "from tensorflow import keras\n",
    "import os\n",
    "import cv2\n",
    "from matplotlib import pyplot as plt\n",
    "from keras.applications.vgg16 import VGG16\n",
    "from tensorflow.keras.applications.resnet50 import ResNet50\n",
    "from keras.applications.inception_v3 import InceptionV3\n",
    "# from keras.applications.densenet import DenseNet121\n",
    "from keras.applications.xception import Xception\n",
    "from keras.applications.mobilenet_v2 import MobileNetV2\n",
    "# from keras.applications.densenet import DenseNet121\n",
    "\n",
    "from tensorflow.keras.preprocessing import image\n",
    "from tensorflow.keras.applications.vgg16 import preprocess_input\n",
    "import numpy as np\n",
    "from tensorflow.keras.applications.vgg16 import decode_predictions\n",
    "%pylab inline\n",
    "import matplotlib.pyplot as plt\n",
    "\n",
    "import numpy as np\n",
    "# Import from vit_keras library\n",
    "from vit_keras import vit\n",
    "\n",
    "\n",
    "from tensorflow.keras.layers import Flatten, Dense, concatenate\n",
    "from tensorflow.keras.models import Model\n",
    "from sklearn.feature_selection import SelectKBest, f_classif\n",
    "# ... other necessary libraries\n",
    "image_size = (224, 224)\n",
    "# Load and configure ViT model (adjust hyperparameters as needed)\n",
    "vit_model = vit.vit_b16(\n",
    "        image_size = image_size,\n",
    "        activation = 'softmax',\n",
    "        pretrained = True,\n",
    "        include_top = False,\n",
    "        pretrained_top = False,)\n",
    "\n",
    "vggModel = VGG16(weights='imagenet', include_top=False)\n",
    "resModel = ResNet50(weights='imagenet',include_top=False)\n",
    "inceptionModel = InceptionV3(weights='imagenet',include_top=False)\n",
    "xceModel = Xception(weights='imagenet',include_top=False)\n",
    "mobModel = MobileNetV2(weights='imagenet',include_top=False)\n",
    "\n",
    "model = vggModel\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {
    "colab": {
     "base_uri": "https://localhost:8080/"
    },
    "id": "nxYAdAhWv-SM",
    "outputId": "b9553e3b-c3e8-4388-e7f4-8ce98b288458",
    "scrolled": true
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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      "positive\n",
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      "1/1 [==============================] - 0s 121ms/step\n",
      "1/1 [==============================] - 0s 298ms/step\n",
      "1/1 [==============================] - 0s 126ms/step\n",
      "1/1 [==============================] - 0s 284ms/step\n",
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      "1/1 [==============================] - 0s 110ms/step\n",
      "1/1 [==============================] - 0s 283ms/step\n",
      "1/1 [==============================] - 0s 110ms/step\n",
      "1/1 [==============================] - 0s 297ms/step\n",
      "No of classes :  2\n"
     ]
    }
   ],
   "source": [
    "\n",
    "X_m = []\n",
    "X_v = []\n",
    "X_org = []\n",
    "Y = []\n",
    "classCount = 0\n",
    "\n",
    "base_path='./New_Dataset'\n",
    "a=0\n",
    "source_path=base_path\n",
    "for child in os.listdir(source_path):\n",
    "    classCount +=1\n",
    "    print(child)\n",
    "    c=0\n",
    "    sub_path = os.path.join(source_path, child)\n",
    "    if os.path.isdir(sub_path):\n",
    "        a+=1\n",
    "        for data_file in os.listdir(sub_path):\n",
    "            Qry = Image.open(os.path.join(sub_path, data_file))\n",
    "            Qry = Qry.convert(\"RGB\")\n",
    "            Qry_ = np.array(Qry.resize((224,224)))\n",
    "            X_org.append(Qry_)\n",
    "            Qry = Qry_.reshape([-1,224,224,3])\n",
    "            feature_r=(model.predict([Qry])).flatten()\n",
    "            X_m.append(feature_r)\n",
    "            feature_v=(vit_model.predict([Qry])).flatten()\n",
    "            X_v.append(feature_v)\n",
    "            Y.append(child)\n",
    "\n",
    "print('No of classes : ',classCount)\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {
    "id": "2a0Qj6B47t5M"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(2700, 25088)\n",
      "(2700,)\n"
     ]
    }
   ],
   "source": [
    "print(np.shape(X_m))\n",
    "print(np.shape(Y))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(2700, 768)\n",
      "(2700,)\n"
     ]
    }
   ],
   "source": [
    "print(np.shape(X_v))\n",
    "print(np.shape(Y))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(2700, 25856)\n",
      "(2700,)\n"
     ]
    }
   ],
   "source": [
    "concatenated_features = np.concatenate((X_m, X_v), axis=1)\n",
    "print(np.shape(concatenated_features))\n",
    "print(np.shape(Y))\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 93,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Requirement already satisfied: shap in c:\\users\\asus\\anaconda3\\lib\\site-packages (0.45.0)\n",
      "Requirement already satisfied: numpy in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (1.26.4)\n",
      "Requirement already satisfied: scipy in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (1.11.4)\n",
      "Requirement already satisfied: scikit-learn in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (1.2.2)\n",
      "Requirement already satisfied: pandas in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (2.1.4)\n",
      "Requirement already satisfied: tqdm>=4.27.0 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (4.65.0)\n",
      "Requirement already satisfied: packaging>20.9 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (23.1)\n",
      "Requirement already satisfied: slicer==0.0.7 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (0.0.7)\n",
      "Requirement already satisfied: numba in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (0.59.0)\n",
      "Requirement already satisfied: cloudpickle in c:\\users\\asus\\anaconda3\\lib\\site-packages (from shap) (2.2.1)\n",
      "Requirement already satisfied: colorama in c:\\users\\asus\\anaconda3\\lib\\site-packages (from tqdm>=4.27.0->shap) (0.4.6)\n",
      "Requirement already satisfied: llvmlite<0.43,>=0.42.0dev0 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from numba->shap) (0.42.0)\n",
      "Requirement already satisfied: python-dateutil>=2.8.2 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from pandas->shap) (2.8.2)\n",
      "Requirement already satisfied: pytz>=2020.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from pandas->shap) (2023.3.post1)\n",
      "Requirement already satisfied: tzdata>=2022.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from pandas->shap) (2023.3)\n",
      "Requirement already satisfied: joblib>=1.1.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-learn->shap) (1.2.0)\n",
      "Requirement already satisfied: threadpoolctl>=2.0.0 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-learn->shap) (2.2.0)\n",
      "Requirement already satisfied: six>=1.5 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from python-dateutil>=2.8.2->pandas->shap) (1.16.0)\n"
     ]
    }
   ],
   "source": [
    "!pip install shap"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "13/13 [==============================] - 0s 1ms/step\n"
     ]
    },
    {
     "ename": "NameError",
     "evalue": "name 'confusion_matrix' is not defined",
     "output_type": "error",
     "traceback": [
      "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m",
      "\u001b[1;31mNameError\u001b[0m                                 Traceback (most recent call last)",
      "Cell \u001b[1;32mIn[13], line 78\u001b[0m\n\u001b[0;32m     76\u001b[0m     \u001b[38;5;28;01mreturn\u001b[39;00m model, X\n\u001b[0;32m     77\u001b[0m \u001b[38;5;66;03m# Train the model with regularization and cross-validation\u001b[39;00m\n\u001b[1;32m---> 78\u001b[0m dnnModel, X \u001b[38;5;241m=\u001b[39m model_train_with_regularization(concatenated_features, Y, \u001b[38;5;124m\"\u001b[39m\u001b[38;5;124mvgg\u001b[39m\u001b[38;5;124m\"\u001b[39m)\n",
      "Cell \u001b[1;32mIn[13], line 57\u001b[0m, in \u001b[0;36mmodel_train_with_regularization\u001b[1;34m(X, Y, m_name)\u001b[0m\n\u001b[0;32m     55\u001b[0m \u001b[38;5;66;03m# Confusion matrix\u001b[39;00m\n\u001b[0;32m     56\u001b[0m y_pred \u001b[38;5;241m=\u001b[39m np\u001b[38;5;241m.\u001b[39margmax(model\u001b[38;5;241m.\u001b[39mpredict(X_test), axis\u001b[38;5;241m=\u001b[39m\u001b[38;5;241m1\u001b[39m)\n\u001b[1;32m---> 57\u001b[0m cm \u001b[38;5;241m=\u001b[39m confusion_matrix(y_test, y_pred)\n\u001b[0;32m     58\u001b[0m disp \u001b[38;5;241m=\u001b[39m ConfusionMatrixDisplay(confusion_matrix\u001b[38;5;241m=\u001b[39mcm)\n\u001b[0;32m     59\u001b[0m disp\u001b[38;5;241m.\u001b[39mplot()\n",
      "\u001b[1;31mNameError\u001b[0m: name 'confusion_matrix' is not defined"
     ]
    }
   ],
   "source": [
    "import numpy as np\n",
    "import matplotlib.pyplot as plt\n",
    "from sklearn.model_selection import StratifiedKFold\n",
    "from sklearn.preprocessing import LabelEncoder\n",
    "from sklearn.metrics import ConfusionMatrixDisplay, confusion_matrix, accuracy_score, f1_score\n",
    "from tensorflow.keras import layers, models\n",
    "from sklearn.feature_selection import SelectFromModel\n",
    "from sklearn.ensemble import RandomForestClassifier\n",
    "import shap\n",
    "import matplotlib.colors as mcolors\n",
    "\n",
    "# Define color maps for visualizing the cross-validation process\n",
    "cmap_cv = mcolors.ListedColormap(['#FFAAAA', '#AAFFAA'])\n",
    "cmap_data = mcolors.ListedColormap(['#AAAAFF', '#FFFFAA', '#FFA500'])\n",
    "\n",
    "\n",
    "def plot_cv_indices(cv, X, y, group, ax, n_splits, lw=10):\n",
    "    \"\"\"Create a sample plot for indices of a cross-validation object.\"\"\"\n",
    "    use_groups = \"Group\" in type(cv).__name__\n",
    "    groups = group if use_groups else None\n",
    "\n",
    "    # Generate the training/testing visualizations for each CV split\n",
    "    for ii, (tr, tt) in enumerate(cv.split(X=X, y=y, groups=groups)):\n",
    "        # Fill in indices with the training/test groups\n",
    "        indices = np.array([np.nan] * len(X))\n",
    "        indices[tt] = 1\n",
    "        indices[tr] = 0\n",
    "\n",
    "        # Visualize the results\n",
    "        ax.scatter(\n",
    "            range(len(indices)),\n",
    "            [ii + 0.5] * len(indices),\n",
    "            c=indices,\n",
    "            marker=\"_\",\n",
    "            lw=lw,\n",
    "            cmap=cmap_cv,\n",
    "            vmin=-0.2,\n",
    "            vmax=1.2,\n",
    "        )\n",
    "\n",
    "    # Plot the data classes and groups at the end\n",
    "    ax.scatter(\n",
    "        range(len(X)), [ii + 1.5] * len(X), c=y, marker=\"_\", lw=lw, cmap=cmap_data\n",
    "    )\n",
    "\n",
    "    if group is not None:\n",
    "        ax.scatter(\n",
    "            range(len(X)), [ii + 2.5] * len(X), c=group, marker=\"_\", lw=lw, cmap=cmap_data\n",
    "        )\n",
    "\n",
    "    # Formatting\n",
    "    yticklabels = list(range(n_splits)) + [\"class\", \"group\"]\n",
    "    ax.set(\n",
    "        yticks=np.arange(n_splits + 2) + 0.5,\n",
    "        yticklabels=yticklabels,\n",
    "        xlabel=\"Sample index\",\n",
    "        ylabel=\"CV iteration\",\n",
    "        ylim=[n_splits + 2.2, -0.2],\n",
    "        xlim=[0, len(X)],\n",
    "    )\n",
    "    ax.set_title(f\"{type(cv).__name__}\", fontsize=15)\n",
    "    return ax\n",
    "\n",
    "\n",
    "def plot_loss_accuracy(history_list):\n",
    "    # Function to plot the loss and accuracy for all cross-validation folds\n",
    "    for i, history in enumerate(history_list, 1):\n",
    "        plt.figure(figsize=(12, 4))\n",
    "\n",
    "        # Loss plot\n",
    "        plt.subplot(1, 2, 1)\n",
    "        plt.plot(history.history['loss'], label='Fold ' + str(i))\n",
    "        plt.title(f'Loss per Fold {i}')\n",
    "        plt.xlabel('Epoch')\n",
    "        plt.ylabel('Loss')\n",
    "        plt.legend()\n",
    "\n",
    "        # Accuracy plot\n",
    "        plt.subplot(1, 2, 2)\n",
    "        plt.plot(history.history['accuracy'], label='Fold ' + str(i))\n",
    "        plt.title(f'Accuracy per Fold {i}')\n",
    "        plt.xlabel('Epoch')\n",
    "        plt.ylabel('Accuracy')\n",
    "        plt.legend()\n",
    "\n",
    "        plt.show()\n",
    "\n",
    "\n",
    "def model_train_with_regularization(X, Y, m_name):\n",
    "    # Feature selection with Random Forest\n",
    "    clf = RandomForestClassifier(n_estimators=100, random_state=42)\n",
    "    clf = clf.fit(X, Y)\n",
    "    model_fet = SelectFromModel(clf, prefit=True)\n",
    "    X = model_fet.transform(X)\n",
    "\n",
    "    labelBinarizer = LabelEncoder()\n",
    "    y = labelBinarizer.fit_transform(Y)\n",
    "    class_labels = labelBinarizer.classes_\n",
    "\n",
    "    # Cross-validation\n",
    "    kfold = StratifiedKFold(n_splits=7, shuffle=True, random_state=42)\n",
    "    history_list = []\n",
    "    accuracies = []\n",
    "    f1_scores = []\n",
    "\n",
    "    # Visualize cross-validation behavior\n",
    "    fig, ax = plt.subplots(figsize=(12, 8))\n",
    "    plot_cv_indices(kfold, X, y, None, ax, n_splits=kfold.n_splits, lw=10)\n",
    "    plt.show()\n",
    "\n",
    "    for fold, (train_index, test_index) in enumerate(kfold.split(X, y), 1):\n",
    "        X_train, X_test = X[train_index], X[test_index]\n",
    "        y_train, y_test = y[train_index], y[test_index]\n",
    "\n",
    "        # Define and compile the model with regularization\n",
    "        model = models.Sequential([\n",
    "            layers.Dense(10, activation='relu', kernel_regularizer='l2'),\n",
    "            layers.Dropout(0.5),\n",
    "            layers.Dense(len(np.unique(y)), activation='softmax')\n",
    "        ])\n",
    "\n",
    "        model.compile(optimizer='Adam', loss='sparse_categorical_crossentropy', metrics=['accuracy'])\n",
    "\n",
    "        # Train the model\n",
    "        history = model.fit(X_train, y_train, epochs=40, batch_size=32, verbose=0)\n",
    "\n",
    "        # Evaluate the model\n",
    "        _, accuracy = model.evaluate(X_test, y_test, verbose=0)\n",
    "        accuracies.append(accuracy)\n",
    "\n",
    "        # Predictions and Confusion Matrix\n",
    "        y_pred = np.argmax(model.predict(X_test), axis=1)\n",
    "\n",
    "        # Calculate F1 Score\n",
    "        f1 = f1_score(y_test, y_pred, average='weighted')\n",
    "        f1_scores.append(f1)\n",
    "\n",
    "        # Confusion matrix\n",
    "        cm = confusion_matrix(y_test, y_pred)\n",
    "        disp = ConfusionMatrixDisplay(confusion_matrix=cm, display_labels=class_labels)\n",
    "        disp.plot(cmap=plt.cm.Blues)\n",
    "        plt.title(f'Confusion Matrix for Fold {fold}')\n",
    "        plt.show()\n",
    "\n",
    "        print(f\"Fold {fold} - Accuracy: {accuracy:.4f}, F1 Score: {f1:.4f}\")\n",
    "\n",
    "        # Feature Importance Analysis with SHAP\n",
    "        explainer = shap.DeepExplainer(model, data=X_train[:100])\n",
    "        shap_values = explainer.shap_values(X_test[:10])\n",
    "\n",
    "        shap.summary_plot(shap_values, X_test[:10])  # No feature_names provided\n",
    "\n",
    "        history_list.append(history)\n",
    "\n",
    "    # Average accuracy and F1 score across all folds\n",
    "    avg_accuracy = np.mean(accuracies)\n",
    "    avg_f1 = np.mean(f1_scores)\n",
    "    print(\"Average cross-validation accuracy:\", avg_accuracy)\n",
    "    print(\"Average cross-validation F1 score:\", avg_f1)\n",
    "\n",
    "    # Plot loss and accuracy for each fold\n",
    "    plot_loss_accuracy(history_list)\n",
    "\n",
    "    return model, X\n",
    "\n",
    "# Train the model with regularization and cross-validation\n",
    "dnnModel, X = model_train_with_regularization(concatenated_features, Y, \"vgg\")\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [
    {
     "ename": "NameError",
     "evalue": "name 'dnnModel' is not defined",
     "output_type": "error",
     "traceback": [
      "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m",
      "\u001b[1;31mNameError\u001b[0m                                 Traceback (most recent call last)",
      "Cell \u001b[1;32mIn[8], line 1\u001b[0m\n\u001b[1;32m----> 1\u001b[0m dnnModel\u001b[38;5;241m.\u001b[39msummary()\n",
      "\u001b[1;31mNameError\u001b[0m: name 'dnnModel' is not defined"
     ]
    }
   ],
   "source": [
    "dnnModel.summary()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 95,
   "metadata": {
    "id": "ZWF4CmYw7t5N"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(6000, 292)\n"
     ]
    }
   ],
   "source": [
    "print(np.shape(X))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "id": "G8HJktzv7t5O"
   },
   "outputs": [],
   "source": [
    "\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 97,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "38/38 [==============================] - 0s 720us/step\n"
     ]
    }
   ],
   "source": [
    "import numpy as np\n",
    "import matplotlib.pyplot as plt\n",
    "from sklearn.preprocessing import LabelBinarizer\n",
    "from sklearn.metrics import roc_curve, auc, roc_auc_score\n",
    "from sklearn.model_selection import train_test_split\n",
    "# Binarize labels\n",
    "labelBinarizer = LabelBinarizer()\n",
    "y_bin = labelBinarizer.fit_transform(Y)\n",
    "\n",
    "# Train-test split\n",
    "X_train, X_test, y_train, y_test = train_test_split(np.array(X), np.array(y_bin),\n",
    "                                                    test_size=0.2, random_state=66)\n",
    "\n",
    "# Get predicted probabilities from the model\n",
    "probas = dnnModel.predict(X_test)\n",
    "y_pred = np.argmax(probas, axis=1).reshape(-1, 1).astype(\"float\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 98,
   "metadata": {
    "id": "sNxxGNk67t5P"
   },
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<Figure size 800x800 with 0 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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uoJ7pKSos+lB77D/ot7+6MtChwUcslhMv1Xh6fLAKWLKPjIxURkaGVq9erV/+8pfO8dWrV2vYsGGBCst0zm0Tp6cfvEEJ1ubaX3lQm3bs0aC7nlbp3kpJUtYfX9TDtw/Qwmm/UuvYGJXu/VF/Wvz2KW+qAwSrEYMy9ENljeY8/ab27neoy/nt9Hz+BHVox3fsEfwC2safNGmSbrnlFvXo0UO9evXSwoULtXv3bo0fPz6QYZlK1p9e/Mn95RXVumvOKx6ds/XV072ICAiccTdepXE3XhXoMOAnRyt7b9r4PgymiQU02Y8aNUoHDhzQo48+qrKyMqWlpemNN95Qx44dAxkWACAUednG56t3XpgwYYImTJgQ6DAAAAhZAU/2AAA0BVbjAwAQ4sy8Gj/gD8IBAAD+RWUPADCFsDCL84ZgZ8Lw4thAI9kDAEyBNj4AAAhZVPYAAFNgNT4AACHOzG18kj0AwBTMXNlzzR4AgBBHZQ8AMAUzV/YkewCAKZj5mj1tfAAAQhyVPQDAFCzyso0fxM+4JdkDAEyBNj4AAAhZVPYAAFNgNT4AACGONj4AAAhZVPYAAFOgjQ8AQIgzcxufZA8AMAUzV/ZcswcAIMRR2QMAzMHLNn4Q30CPZA8AMAfa+AAAIGSR7AEApnBsNb4325nKzc2VxWJRdna2c8wwDM2YMUNJSUmKiYlR3759tX37dpfj6urqNHHiRLVp00YtWrTQ9ddfrz179nj8/iR7AIApHGvje7OdiY0bN2rhwoW69NJLXcbnzJmjvLw8zZs3Txs3bpTNZtPAgQNVVVXlnJOdna2ioiKtWLFC69atU3V1tYYOHarGxkaPYiDZAwDgJ9XV1RozZowWLVqk1q1bO8cNw1B+fr6mTZumESNGKC0tTYWFhTp48KCWL18uSaqsrNTixYv12GOPacCAAerevbuWLVumrVu3as2aNR7FQbIHAJiCr9r4DofDZaurqzvle95555269tprNWDAAJfxkpIS2e12DRo0yDkWFRWlPn36aP369ZKk4uJiHT582GVOUlKS0tLSnHPcRbIHAJiCr9r4ycnJslqtzi03N/ek77dixQp9+umnJ91vt9slSYmJiS7jiYmJzn12u12RkZEuHYHj57iLr94BAOCB0tJSxcXFOV9HRUWddM4999yjVatWKTo6+pTnOn4dgGEYp10b4M6c41HZAwBMwVeVfVxcnMt2smRfXFys8vJyZWRkKDw8XOHh4Vq7dq2eeOIJhYeHOyv64yv08vJy5z6bzab6+npVVFScco67SPYAAFNoyq/e9e/fX1u3btWWLVucW48ePTRmzBht2bJFnTp1ks1m0+rVq53H1NfXa+3aterdu7ckKSMjQxERES5zysrKtG3bNuccd9HGBwCYQlPeQS82NlZpaWkuYy1atFBCQoJzPDs7Wzk5OUpNTVVqaqpycnLUvHlzjR49WpJktVqVlZWlyZMnKyEhQfHx8ZoyZYrS09NPWPB3OiR7AAACYOrUqaqtrdWECRNUUVGhzMxMrVq1SrGxsc45c+fOVXh4uEaOHKna2lr1799fBQUFatasmUfvZTEMw/D1B2gqDodDVqtVUb3ukyX8xGsmQCioeOeRQIcA+I3D4VBiglWVlZUui958/R5Wq1U/n7VK4dEtzvg8DYdqtO4Pg/waq79Q2QMATIEH4QAAgJBFZQ8AMAWLvHuYTfDW9SR7AIBJhFksCvMi23tzbKDRxgcAIMRR2QMATMHbZ9IHcWFPsgcAmIOZV+OT7AEAphBmObp5c3yw4po9AAAhjsoeAGAOFi9b8UFc2ZPsAQCmYOYFerTxAQAIcVT2AABTsPz3lzfHByuSPQDAFFiNDwAAQhaVPQDAFLipDgAAIc7Mq/HdSvZPPPGE2ye8++67zzgYAADge24l+7lz57p1MovFQrIHAJyVzPyIW7eSfUlJib/jAADAr8zcxj/j1fj19fXatWuXGhoafBkPAAB+cWyBnjdbsPI42R88eFBZWVlq3ry5LrnkEu3evVvS0Wv1s2bN8nmAAADAOx4n+/vvv1+fffaZ3nvvPUVHRzvHBwwYoOeff96nwQEA4CvH2vjebMHK46/evfLKK3r++ed1+eWXu7Q0Lr74Yv3nP//xaXAAAPiKmRfoeVzZ79u3T23btj1hvKamJqivZwAAEKo8TvY9e/bUv/71L+frYwl+0aJF6tWrl+8iAwDAhyw+2IKVx2383Nxc/eIXv9COHTvU0NCgxx9/XNu3b9dHH32ktWvX+iNGAAC8Zubb5Xpc2ffu3VsffvihDh48qPPPP1+rVq1SYmKiPvroI2VkZPgjRgAA4IUzujd+enq6CgsLfR0LAAB+Y+ZH3J5Rsm9sbFRRUZF27twpi8WiLl26aNiwYQoP57k6AICzk5nb+B5n523btmnYsGGy2+268MILJUlffvmlzjnnHL322mtKT0/3eZAAAODMeXzNfty4cbrkkku0Z88effrpp/r0009VWlqqSy+9VL/73e/8ESMAAD5hxhvqSGdQ2X/22WfatGmTWrdu7Rxr3bq1Zs6cqZ49e/o0OAAAfMXMbXyPK/sLL7xQe/fuPWG8vLxcnTt39klQAAD42rEFet5swcqtZO9wOJxbTk6O7r77br344ovas2eP9uzZoxdffFHZ2dmaPXu2v+MFAAAecquN36pVK5f2hWEYGjlypHPMMAxJ0nXXXafGxkY/hAkAgHfM3MZ3K9m/++67/o4DAAC/8vaWt8Gb6t1M9n369PF3HAAAwE/O+C44Bw8e1O7du1VfX+8yfumll3odFAAAvmbmR9x6nOz37dun3/72t3rzzTdPup9r9gCAs5G335cP4lzv+VfvsrOzVVFRoQ0bNigmJkYrV65UYWGhUlNT9dprr/kjRgAA4AWPK/t33nlHr776qnr27KmwsDB17NhRAwcOVFxcnHJzc3Xttdf6I04AALxi5tX4Hlf2NTU1atu2rSQpPj5e+/btk3T0SXiffvqpb6MDAMBHvLlVbrDfMveM7qC3a9cuSVK3bt301FNP6bvvvtPf/vY3tWvXzucBAgAA73jcxs/OzlZZWZkkafr06Ro8eLCeffZZRUZGqqCgwNfxAQDgE6zG98CYMWOcv+/evbu++eYbffHFF+rQoYPatGnj0+AAAPAVM6/GP+Pv2R/TvHlzXXbZZb6IBQAAvzHzAj23kv2kSZPcPmFeXt4ZBwMAAHzPrWS/efNmt04WqJ96dr/+gOLi4gLy3oC/te55V6BDAPzGaKw//SQfCdMZrEo/7vhgxYNwAACm0NRt/AULFmjBggX65ptvJEmXXHKJHn74YQ0ZMkTS0SfGPvLII1q4cKEqKiqUmZmpv/71r7rkkkuc56irq9OUKVP03HPPqba2Vv3799f8+fPVvn17j2IJ5h9UAAA4a7Vv316zZs3Spk2btGnTJl199dUaNmyYtm/fLkmaM2eO8vLyNG/ePG3cuFE2m00DBw5UVVWV8xzZ2dkqKirSihUrtG7dOlVXV2vo0KEe35qeZA8AMAWLRQrzYvO0KXDdddfpmmuu0QUXXKALLrhAM2fOVMuWLbVhwwYZhqH8/HxNmzZNI0aMUFpamgoLC3Xw4EEtX75cklRZWanFixfrscce04ABA9S9e3ctW7ZMW7du1Zo1azyKhWQPADAFbxL9sU2SHA6Hy1ZXV3fa925sbNSKFStUU1OjXr16qaSkRHa7XYMGDXLOiYqKUp8+fbR+/XpJUnFxsQ4fPuwyJykpSWlpac45bn92j2YDAGByycnJslqtzi03N/eUc7du3aqWLVsqKipK48ePV1FRkS6++GLZ7XZJUmJiosv8xMRE5z673a7IyEi1bt36lHPc5fX37AEACAa+WqBXWlrq8g2wqKioUx5z4YUXasuWLfrxxx/10ksvaezYsVq7du0J5zzGMIzTxujOnOOdUWW/dOlSXXHFFUpKStK3334rScrPz9err756JqcDAMDvfNXGj4uLc9l+KtlHRkaqc+fO6tGjh3Jzc9W1a1c9/vjjstlsknRChV5eXu6s9m02m+rr61VRUXHKOW5/do9m6+hXCSZNmqRrrrlGP/74o3NFYKtWrZSfn+/p6QAAMA3DMFRXV6eUlBTZbDatXr3aua++vl5r165V7969JUkZGRmKiIhwmVNWVqZt27Y557jL4zb+k08+qUWLFmn48OGaNWuWc7xHjx6aMmWKp6cDAKBJNPW98R944AENGTJEycnJqqqq0ooVK/Tee+9p5cqVslgsys7OVk5OjlJTU5WamqqcnBw1b95co0ePliRZrVZlZWVp8uTJSkhIUHx8vKZMmaL09HQNGDDAo1g8TvYlJSXq3r37CeNRUVGqqanx9HQAADSJpn7q3d69e3XLLbeorKxMVqtVl156qVauXKmBAwdKkqZOnara2lpNmDDBeVOdVatWKTY21nmOuXPnKjw8XCNHjnTeVKegoEDNmjXzKBaPk31KSoq2bNmijh07uoy/+eabuvjiiz09HQAATaKpb5e7ePHin9xvsVg0Y8YMzZgx45RzoqOj9eSTT+rJJ5/08N1deZzs7733Xt155506dOiQDMPQJ598oueee065ubl6+umnvQoGAAD4nsfJ/re//a0aGho0depUHTx4UKNHj9a5556rxx9/XDfddJM/YgQAwGs8z95Dt99+u26//Xbt379fR44cUdu2bX0dFwAAPhUmL6/ZK3izvVc31WnTpo2v4gAAAH5yRgv0furOPV9//bVXAQEA4A+08T2QnZ3t8vrw4cPavHmzVq5cqXvvvddXcQEA4FP/exe8Mz0+WHmc7O+5556Tjv/1r3/Vpk2bvA4IAAD4ls+eejdkyBC99NJLvjodAAA+dfR59pYz3kzVxj+VF198UfHx8b46HQAAPsU1ew90797dZYGeYRiy2+3at2+f5s+f79PgAACA9zxO9sOHD3d5HRYWpnPOOUd9+/bVRRdd5Ku4AADwKRbouamhoUHnnXeeBg8e7HwWLwAAwcDy31/eHB+sPFqgFx4ert///veqq6vzVzwAAPjFscremy1YebwaPzMzU5s3b/ZHLAAAwA88vmY/YcIETZ48WXv27FFGRoZatGjhsv/SSy/1WXAAAPgK1+zdcNtttyk/P1+jRo2SJN19993OfRaLRYZhyGKxqLGx0fdRAgDgJYvF8pO3e3fn+GDldrIvLCzUrFmzVFJS4s94AACAj7md7A3DkCR17NjRb8EAAOAvtPHdFMwtDACAuXEHPTddcMEFp034P/zwg1cBAQAA3/Io2T/yyCOyWq3+igUAAL859kAbb44PVh4l+5tuuklt27b1VywAAPiNma/Zu31THa7XAwAQnDxejQ8AQFDycoFeEN8a3/1kf+TIEX/GAQCAX4XJojAvMrY3xwaax7fLBQAgGJn5q3cePwgHAAAEFyp7AIApmHk1PskeAGAKZv6ePW18AABCHJU9AMAUzLxAj2QPADCFMHnZxg/ir97RxgcAIMRR2QMATIE2PgAAIS5M3rWzg7kVHsyxAwAAN1DZAwBMwWKxePUE12B++ivJHgBgChZ59+C64E31JHsAgElwBz0AABCyqOwBAKYRvLW5d0j2AABTMPP37GnjAwAQ4qjsAQCmwFfvAAAIcdxBDwAAhCwqewCAKdDGBwAgxJn5Dnq08QEACHEkewCAKRxr43uzeSI3N1c9e/ZUbGys2rZtq+HDh2vXrl0ucwzD0IwZM5SUlKSYmBj17dtX27dvd5lTV1eniRMnqk2bNmrRooWuv/567dmzx6NYSPYAAFMI88HmibVr1+rOO+/Uhg0btHr1ajU0NGjQoEGqqalxzpkzZ47y8vI0b948bdy4UTabTQMHDlRVVZVzTnZ2toqKirRixQqtW7dO1dXVGjp0qBobG92OhWv2AABTaOoFeitXrnR5vWTJErVt21bFxcW66qqrZBiG8vPzNW3aNI0YMUKSVFhYqMTERC1fvlx33HGHKisrtXjxYi1dulQDBgyQJC1btkzJyclas2aNBg8e7FYsVPYAAHjA4XC4bHV1dW4dV1lZKUmKj4+XJJWUlMhut2vQoEHOOVFRUerTp4/Wr18vSSouLtbhw4dd5iQlJSktLc05xx0kewCAKVh8sElScnKyrFarc8vNzT3texuGoUmTJunnP/+50tLSJEl2u12SlJiY6DI3MTHRuc9utysyMlKtW7c+5Rx30MYHAJiCrx6EU1paqri4OOd4VFTUaY+966679Pnnn2vdunUnOa9rUIZhnPaSgTtz/heVPQAAHoiLi3PZTpfsJ06cqNdee03vvvuu2rdv7xy32WySdEKFXl5e7qz2bTab6uvrVVFRcco57iDZAwBMIUwWrzdPGIahu+66Sy+//LLeeecdpaSkuOxPSUmRzWbT6tWrnWP19fVau3atevfuLUnKyMhQRESEy5yysjJt27bNOccdtPEBAKbQ1M+zv/POO7V8+XK9+uqrio2NdVbwVqtVMTExslgsys7OVk5OjlJTU5WamqqcnBw1b95co0ePds7NysrS5MmTlZCQoPj4eE2ZMkXp6enO1fnuINkDAOAHCxYskCT17dvXZXzJkiW69dZbJUlTp05VbW2tJkyYoIqKCmVmZmrVqlWKjY11zp87d67Cw8M1cuRI1dbWqn///iooKFCzZs3cjsViGIbh9ScKEIfDIavVqr0HKl0WSwChpHXPuwIdAuA3RmO96rYuUmWl//4dP5YrXvjoKzVvGXv6A07hYHWVRvbq7NdY/YXKHgBgCk3dxj+bsEAPAIAQR2UPADAFyxmsqD/++GBFsgcAmIKZ2/gkewCAKZg52XPNHgCAEEdlDwAwBct/f3lzfLAi2QMATCHMcnTz5vhgRRsfAIAQR2UPADAF2vgAAIQ4VuMDAICQRWUPADAFi7xrxQdxYU+yBwCYA6vxAQBAyKKyh9ue/sf7enLZ29q7v1IXdWqnnEm/Uu/unQMdFnBa7c6xasbEYRrQ6xJFR0foP7vLNfGPz+qzL0olSUP7ddWtv/y5unVJVkKrlrpyTK62ffndCefpmZ6iB38/VBlp56mhoVFbv/xON94zX4fqDjf1R8IZYDU+cBovryrWA3kv6S/3jVJm104qeHmdRt4zXx+98KCSbfGBDg84JWtsjFY+PUkfFP9bN94zX/sqqpTSvo0qq2qdc1pER+rjz/+jV9/+VE88OOak5+mZnqIXn5iguQWrdN9f/qH6w41KSz1XR44YTfVR4CUzr8YPaLJ///339ec//1nFxcUqKytTUVGRhg8fHsiQcArzl7+jm4f10m+G95Yk5U6+Qe9s2Km/v/iBpt81LMDRAaeWPXagvttbobseXeYcKy37wWXO829ulCQltzv1D64z/2+Ennr+PeUXrnaOfV26z8fRwp8s8m6RXRDn+sBes6+pqVHXrl01b968QIaB06g/3KAtX5Tq6swuLuP9Mrvok89LAhQV4J5fXJmuzTt3a0nubfryrVytXXaf84dWd7Vp3VI901O074dqvbV4knatzNHrT92jy7t28lPUgG8FtLIfMmSIhgwZ4vb8uro61dXVOV87HA5/hIXjHPixWo2NR3ROfKzL+DkJsSo/wH8DnN3OO7eNbvvVlZq//B3lLVmljEs6atbkG1RX36Dn3/jE7XNI0h9uv0YPPVGkrbv26KZrf6ZX5k9U75tyqPCDRJgsCvOiFx8WxLV9UK3Gz83NldVqdW7JycmBDslUjv9/xDAMWYL5IhZMISzMos93leqP8/+prV/uUUHRh3rmlfW67VdXenQOSSooWqfl/9ygrV/u0bS5L+urb8t18/W9/BU6fMzigy1YBVWyv//++1VZWencSktLAx2SKSS0aqlmzcJUfqDKZXz/D9UnVPvA2Wbvfoe++NruMvblN3a1t7V2+xz2/Uc7WLtKXM+zy8PzAIESVMk+KipKcXFxLhv8LzIiXN0uSta7H3/hMv7eJ1/oZ5emBCgqwD0ff/a1Uju2dRk7v0Nb7bH/cIojTrT7+wP6vvxHdT7uPJ07tD1hsR/OYiYu7YMq2SNwJoy+WktfXa9lr32kXSV2PZD3kvbYf9BvPWiFAoEw/7l31CM9RZNuHaSU9m10w+AeGvvLK/T0P953zmkV11xpF5yri1JskqTUjolKu+BctU34/52rJ5et0R2j+ur6q7sppX0bPTD+WqV2TNTSVz9q8s+EM2Pxwa9gxffs4ZYRgzL0Q2WN5jz9pvbud6jL+e30fP4EdfiJryoBZ4PNO3brlnsX6eE7r9e944bo2+8P6IG8l/SPlZucc4Zcla75029xvv57zm2SpFkL39DsRW9Ikv723HuKjoxQzqRfqVVcc23/93cacdc8ffPd/qb9QMAZsBiGEbA7QlRXV+urr76SJHXv3l15eXnq16+f4uPj1aFDh9Me73A4ZLVatfdAJS19hKzWPe8KdAiA3xiN9arbukiVlf77d/xYrnh7y261jD3z96iucqh/tw5+jdVfAlrZb9q0Sf369XO+njRpkiRp7NixKigoCFBUAIBQZOab6gQ02fft21cBbCwAAGAKXLMHAJiDiUt7kj0AwBR46h0AACHOzE+943v2AACEOCp7AIApmPiSPckeAGASJs72tPEBAAhxVPYAAFNgNT4AACGO1fgAACBkUdkDAEzBxOvzSPYAAJMwcbanjQ8AQIijsgcAmAKr8QEACHFmXo1PsgcAmIKJL9lzzR4AgFBHZQ8AMAcTl/YkewCAKZh5gR5tfAAAQhyVPQDAFMy8Gp/KHgBgChYfbJ54//33dd111ykpKUkWi0WvvPKKy37DMDRjxgwlJSUpJiZGffv21fbt213m1NXVaeLEiWrTpo1atGih66+/Xnv27PEwEpI9AAB+UVNTo65du2revHkn3T9nzhzl5eVp3rx52rhxo2w2mwYOHKiqqirnnOzsbBUVFWnFihVat26dqqurNXToUDU2NnoUC218AIA5NPFq/CFDhmjIkCEn3WcYhvLz8zVt2jSNGDFCklRYWKjExEQtX75cd9xxhyorK7V48WItXbpUAwYMkCQtW7ZMycnJWrNmjQYPHux2LFT2AABTsPjglyQ5HA6Xra6uzuNYSkpKZLfbNWjQIOdYVFSU+vTpo/Xr10uSiouLdfjwYZc5SUlJSktLc85xF8keAAAPJCcny2q1Orfc3FyPz2G32yVJiYmJLuOJiYnOfXa7XZGRkWrduvUp57iLNj4AwBR8tRq/tLRUcXFxzvGoqCgvzukakGEYJ4wdz505x6OyBwCYgq9W48fFxblsZ5LsbTabJJ1QoZeXlzurfZvNpvr6elVUVJxyjrtI9gAAc2jq7979hJSUFNlsNq1evdo5Vl9fr7Vr16p3796SpIyMDEVERLjMKSsr07Zt25xz3EUbHwAAP6iurtZXX33lfF1SUqItW7YoPj5eHTp0UHZ2tnJycpSamqrU1FTl5OSoefPmGj16tCTJarUqKytLkydPVkJCguLj4zVlyhSlp6c7V+e7i2QPADCFpr43/qZNm9SvXz/n60mTJkmSxo4dq4KCAk2dOlW1tbWaMGGCKioqlJmZqVWrVik2NtZ5zNy5cxUeHq6RI0eqtrZW/fv3V0FBgZo1a+ZZ7IZhGB4dcRZxOByyWq3ae6DSZbEEEEpa97wr0CEAfmM01qtu6yJVVvrv3/FjueLTr+yKjT3z96iqcuiyzja/xuovXLMHACDE0cYHAJiCiR9nT7IHAJiEibM9bXwAAEIclT0AwBSaejX+2YRkDwAwBV/dLjcY0cYHACDEUdkDAEzBxOvzSPYAAJMwcbYn2QMATMHMC/S4Zg8AQIijsgcAmIJFXq7G91kkTY9kDwAwBRNfsqeNDwBAqKOyBwCYgplvqkOyBwCYhHkb+bTxAQAIcVT2AABToI0PAECIM28TnzY+AAAhj8oeAGAKtPEBAAhxZr43PskeAGAOJr5ozzV7AABCHJU9AMAUTFzYk+wBAOZg5gV6tPEBAAhxVPYAAFNgNT4AAKHOxBftaeMDABDiqOwBAKZg4sKeZA8AMAdW4wMAgJBFZQ8AMAnvVuMHcyOfZA8AMAXa+AAAIGSR7AEACHG08QEApmDmNj7JHgBgCma+XS5tfAAAQhyVPQDAFGjjAwAQ4sx8u1za+AAAhDgqewCAOZi4tCfZAwBMgdX4AAAgZFHZAwBMgdX4AACEOBNfsifZAwBMwsTZnmv2AAD40fz585WSkqLo6GhlZGTogw8+aPIYSPYAAFOw+OCXp55//nllZ2dr2rRp2rx5s6688koNGTJEu3fv9sMnPDWSPQDAFI4t0PNm81ReXp6ysrI0btw4denSRfn5+UpOTtaCBQt8/wF/QlBfszcMQ5JU5XAEOBLAf4zG+kCHAPjNsb/fx/499yeHl7ni2PHHnycqKkpRUVEnzK+vr1dxcbH+8Ic/uIwPGjRI69ev9yoWTwV1sq+qqpIkdU5JDnAkAABvVFVVyWq1+uXckZGRstlsSvVBrmjZsqWSk13PM336dM2YMeOEufv371djY6MSExNdxhMTE2W3272OxRNBneyTkpJUWlqq2NhYWYL5C5BBxOFwKDk5WaWlpYqLiwt0OIBP8fe76RmGoaqqKiUlJfntPaKjo1VSUqL6eu+7ZIZhnJBvTlbV/6/j55/sHP4W1Mk+LCxM7du3D3QYphQXF8c/hghZ/P1uWv6q6P9XdHS0oqOj/f4+/6tNmzZq1qzZCVV8eXn5CdW+v7FADwAAP4iMjFRGRoZWr17tMr569Wr17t27SWMJ6soeAICz2aRJk3TLLbeoR48e6tWrlxYuXKjdu3dr/PjxTRoHyR4eiYqK0vTp0097jQoIRvz9hq+NGjVKBw4c0KOPPqqysjKlpaXpjTfeUMeOHZs0DovRFN93AAAAAcM1ewAAQhzJHgCAEEeyBwAgxJHsAQAIcSR7uO1seEwj4A/vv/++rrvuOiUlJcliseiVV14JdEiAT5Hs4Zaz5TGNgD/U1NSoa9eumjdvXqBDAfyCr97BLZmZmbrssstcHsvYpUsXDR8+XLm5uQGMDPAti8WioqIiDR8+PNChAD5DZY/TOvaYxkGDBrmMB+IxjQAAz5HscVpn02MaAQCeI9nDbWfDYxoBAJ4j2eO0zqbHNAIAPEeyx2mdTY9pBAB4jqfewS1ny2MaAX+orq7WV1995XxdUlKiLVu2KD4+Xh06dAhgZIBv8NU7uG3+/PmaM2eO8zGNc+fO1VVXXRXosACvvffee+rXr98J42PHjlVBQUHTBwT4GMkeAIAQxzV7AABCHMkeAIAQR7IHACDEkewBAAhxJHsAAEIcyR4AgBBHsgcAIMSR7AEACHEke8BLM2bMULdu3Zyvb731Vg0fPrzJ4/jmm29ksVi0ZcuWU84577zzlJ+f7/Y5CwoK1KpVK69js1gseuWVV7w+D4AzQ7JHSLr11ltlsVhksVgUERGhTp06acqUKaqpqfH7ez/++ONu32LVnQQNAN7iQTgIWb/4xS+0ZMkSHT58WB988IHGjRunmpoaLViw4IS5hw8fVkREhE/e12q1+uQ8AOArVPYIWVFRUbLZbEpOTtbo0aM1ZswYZyv5WOv973//uzp16qSoqCgZhqHKykr97ne/U9u2bRUXF6err75an332mct5Z82apcTERMXGxiorK0uHDh1y2X98G//IkSOaPXu2OnfurKioKHXo0EEzZ86UJKWkpEiSunfvLovFor59+zqPW7Jkibp06aLo6GhddNFFmj9/vsv7fPLJJ+revbuio6PVo0cPbd682eM/o7y8PKWnp6tFixZKTk7WhAkTVF1dfcK8V155RRdccIGio6M1cOBAlZaWuuz/5z//qYyMDEVHR6tTp0565JFH1NDQ4HE8APyDZA/TiImJ0eHDh52vv/rqK73wwgt66aWXnG30a6+9Vna7XW+88YaKi4t12WWXqX///vrhhx8kSS+88IKmT5+umTNnatOmTWrXrt0JSfh4999/v2bPnq2HHnpIO3bs0PLly5WYmCjpaMKWpDVr1qisrEwvv/yyJGnRokWaNm2aZs6cqZ07dyonJ0cPPfSQCgsLJUk1NTUaOnSoLrzwQhUXF2vGjBmaMmWKx38mYWFheuKJJ7Rt2zYVFhbqnXfe0dSpU13mHDx4UDNnzlRhYaE+/PBDORwO3XTTTc79b731lm6++Wbdfffd2rFjh5566ikVFBQ4f6ABcBYwgBA0duxYY9iwYc7XH3/8sZGQkGCMHDnSMAzDmD59uhEREWGUl5c757z99ttGXFyccejQIZdznX/++cZTTz1lGIZh9OrVyxg/frzL/szMTKNr164nfW+Hw2FERUUZixYtOmmcJSUlhiRj8+bNLuPJycnG8uXLXcb++Mc/Gr169TIMwzCeeuopIz4+3qipqXHuX7BgwUnP9b86duxozJ0795T7X3jhBSMhIcH5esmSJYYkY8OGDc6xnTt3GpKMjz/+2DAMw7jyyiuNnJwcl/MsXbrUaNeunfO1JKOoqOiU7wvAv7hmj5D1+uuvq2XLlmpoaNDhw4c1bNgwPfnkk879HTt21DnnnON8XVxcrOrqaiUkJLicp7a2Vv/5z38kSTt37tT48eNd9vfq1UvvvvvuSWPYuXOn6urq1L9/f7fj3rdvn0pLS5WVlaXbb7/dOd7Q0OBcD7Bz50517dpVzZs3d4nDU++++65ycnK0Y8cOORwONTQ06NChQ6qpqVGLFi0kSeHh4erRo4fzmIsuukitWrXSzp079bOf/UzFxcXauHGjSyXf2NioQ4cO6eDBgy4xAggMkj1CVr9+/bRgwQJFREQoKSnphAV4x5LZMUeOHFG7du303nvvnXCuM/36WUxMjMfHHDlyRNLRVn5mZqbLvmbNmkmSDMM4o3j+17fffqtrrrlG48eP1x//+EfFx8dr3bp1ysrKcrncIR396tzxjo0dOXJEjzzyiEaMGHHCnOjoaK/jBOA9kj1CVosWLdS5c2e351922WWy2+0KDw/Xeeedd9I5Xbp00YYNG/Sb3/zGObZhw4ZTnjM1NVUxMTF6++23NW7cuBP2R0ZGSjpaCR+TmJioc889V19//bXGjBlz0vNefPHFWrp0qWpra50/UPxUHCezadMmNTQ06LHHHlNY2NHlOy+88MIJ8xoaGrRp0yb97Gc/kyTt2rVLP/74oy666CJJR//cdu3a5dGfNYCmRbIH/mvAgAHq1auXhg8frtmzZ+vCCy/U999/rzfeeEPDhw9Xjx49dM8992js2LHq0aOHfv7zn+vZZ5/V9u3b1alTp5OeMzo6Wvfdd5+mTp2qyMhIXXHFFdq3b5+2b9+urKwstW3bVjExMVq5cqXat2+v6OhoWa1WzZgxQ3fffbfi4uI0ZMgQ1dXVadOmTaqoqNCkSZM0evRoTZs2TVlZWXrwwQf1zTff6C9/+YtHn/f8889XQ0ODnnzySV133XX68MMP9be//e2EeREREZo4caKeeOIJRURE6K677tLll1/uTP4PP/ywhg4dquTkZN14440KCwvT559/rq1bt+pPf/qT5/8hAPgcq/GB/7JYLHrjjTd01VVX6bbbbtMFF1ygm266Sd98841z9fyoUaP08MMP67777lNGRoa+/fZb/f73v//J8z700EOaPHmyHn74YXXp0kWjRo1SeXm5pKPXw5944gk99dRTSkpK0rBhwyRJ48aN09NPP62CggKlp6erT58+KigocH5Vr2XLlvrnP/+pHTt2qHv37po2bZpmz57t0eft1q2b8vLyNHv2bKWlpenZZ59Vbm7uCfOaN2+u++67T6NHj1avXr0UExOjFStWOPcPHjxYr7/+ulavXq2ePXvq8ssvV15enjp27OhRPAD8x2L44uIfAAA4a1HZAwAQ4kj2AACEOJI9AAAhjmQPAECII9kDABDiSPYAAIQ4kj0AACGOZA8AQIgj2QMAEOJI9gAAhDiSPQAAIe7/AYhmpPyloyDrAAAAAElFTkSuQmCC",
      "text/plain": [
       "<Figure size 640x480 with 2 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "\n",
    "# Calculate the confusion matrix using sklearn.metrics\n",
    "import sklearn.metrics as metrics\n",
    "from sklearn.metrics import ConfusionMatrixDisplay\n",
    "import matplotlib.pyplot as plt\n",
    "cm = metrics.confusion_matrix(y_true=y_test, y_pred=y_pred)  # shape=(12, 12)\n",
    "\n",
    "# disp = ConfusionMatrixDisplay(confusion_matrix=cm, display_labels=labels)\n",
    "disp = ConfusionMatrixDisplay(confusion_matrix=cm)\n",
    "\n",
    "figure = plt.figure(figsize=(8, 8))\n",
    "disp.plot(cmap=plt.cm.Blues)\n",
    "plt.show()\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": 114,
   "metadata": {
    "id": "7S535uuj7t5R"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "\n",
      "Accuracy: 1.00\n",
      "\n",
      "Micro Precision: 1.00\n",
      "Micro Recall: 1.00\n",
      "Micro F1-score: 1.00\n",
      "\n",
      "Macro Precision: 1.00\n",
      "Macro Recall: 1.00\n",
      "Macro F1-score: 1.00\n",
      "\n",
      "Weighted Precision: 1.00\n",
      "Weighted Recall: 1.00\n",
      "Weighted F1-score: 1.00\n",
      "\n",
      "Classification Report\n",
      "\n",
      "              precision    recall  f1-score   support\n",
      "\n",
      "    Positive       1.00      1.00      1.00       584\n",
      "    Negative       1.00      1.00      1.00       616\n",
      "\n",
      "    accuracy                           1.00      1200\n",
      "   macro avg       1.00      1.00      1.00      1200\n",
      "weighted avg       1.00      1.00      1.00      1200\n",
      "\n"
     ]
    }
   ],
   "source": [
    "from sklearn.metrics import accuracy_score, precision_score, recall_score, f1_score\n",
    "print('\\nAccuracy: {:.2f}\\n'.format(accuracy_score(y_test, y_pred)))\n",
    "\n",
    "print('Micro Precision: {:.2f}'.format(precision_score(y_test, y_pred, average='micro')))\n",
    "print('Micro Recall: {:.2f}'.format(recall_score(y_test, y_pred, average='micro')))\n",
    "print('Micro F1-score: {:.2f}\\n'.format(f1_score(y_test, y_pred, average='micro')))\n",
    "\n",
    "print('Macro Precision: {:.2f}'.format(precision_score(y_test, y_pred, average='macro')))\n",
    "print('Macro Recall: {:.2f}'.format(recall_score(y_test, y_pred, average='macro')))\n",
    "print('Macro F1-score: {:.2f}\\n'.format(f1_score(y_test, y_pred, average='macro')))\n",
    "\n",
    "print('Weighted Precision: {:.2f}'.format(precision_score(y_test, y_pred, average='weighted')))\n",
    "print('Weighted Recall: {:.2f}'.format(recall_score(y_test, y_pred, average='weighted')))\n",
    "print('Weighted F1-score: {:.2f}'.format(f1_score(y_test, y_pred, average='weighted')))\n",
    "\n",
    "from sklearn.metrics import classification_report\n",
    "print('\\nClassification Report\\n')\n",
    "print(classification_report(y_test, y_pred, target_names=['Positive', 'Negative']))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 115,
   "metadata": {
    "id": "iPjmZTIO7t5S"
   },
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from sklearn.metrics import precision_recall_curve\n",
    "import matplotlib.pyplot as plt\n",
    "\n",
    "precision, recall, thresholds = precision_recall_curve(y_test, y_pred, pos_label=0)\n",
    "\n",
    "#create precision recall curve\n",
    "fig, ax = plt.subplots()\n",
    "ax.plot(recall, precision, color='purple')\n",
    "\n",
    "#add axis labels to plot\n",
    "ax.set_title('Precision-Recall Curve')\n",
    "ax.set_ylabel('Precision')\n",
    "ax.set_xlabel('Recall')\n",
    "\n",
    "#display plot\n",
    "\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 116,
   "metadata": {
    "id": "skGQ9Ys27t5S"
   },
   "outputs": [],
   "source": [
    "def perf_measure(y_actual, y_hat):\n",
    "    TP = 0\n",
    "    FP = 0\n",
    "    TN = 0\n",
    "    FN = 0\n",
    "\n",
    "    for i in range(len(y_hat)):\n",
    "        if y_actual[i]==y_hat[i]==1:\n",
    "           TP += 1\n",
    "        if y_hat[i]==1 and y_actual[i]!=y_hat[i]:\n",
    "           FP += 1\n",
    "        if y_actual[i]==y_hat[i]==0:\n",
    "           TN += 1\n",
    "        if y_hat[i]==0 and y_actual[i]!=y_hat[i]:\n",
    "           FN += 1\n",
    "\n",
    "    return(TP, FP, TN, FN)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 117,
   "metadata": {
    "id": "VaKYhTRf7t5T"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "true positive rate :  616\n",
      "true negative rate :  584\n",
      "false positive rate :  0\n"
     ]
    }
   ],
   "source": [
    "(TPR,FPR,TNR,FNR)=perf_measure(y_test, y_pred)\n",
    "# Overall accuracy\n",
    "print(\"true positive rate : \",TPR)\n",
    "print(\"true negative rate : \",TNR)\n",
    "print(\"false positive rate : \",FPR)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 129,
   "metadata": {
    "id": "iblJ2qtpv-SX"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Target Class: Negative\n",
      "Target Class: Positive\n",
      "ROC AUC score: 1.0\n"
     ]
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 400x400 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "\n",
    "# Define target classes\n",
    "target = [\"Negative\", \"Positive\"]\n",
    "probas = y_pred\n",
    "# Set plot figure size\n",
    "fig, c_ax = plt.subplots(1, 1, figsize=(4, 4))\n",
    "\n",
    "def multiclass_roc_auc_score(y_test, y_pred, average=\"macro\"):\n",
    "    roc_auc = 0.0\n",
    "    for idx, c_label in enumerate(target):\n",
    "        print(\"Target Class:\", c_label)\n",
    "   \n",
    "        fpr, tpr, _ = roc_curve(y_test, y_pred)  # Remove indexing\n",
    "        roc_auc += auc(fpr, tpr)\n",
    "        c_ax.plot(fpr, tpr, label='%s (AUC:%0.2f)' % (c_label, auc(fpr, tpr)))\n",
    "    roc_auc /= len(target)\n",
    "    return roc_auc\n",
    "\n",
    "print('ROC AUC score:', multiclass_roc_auc_score(y_test, probas))\n",
    "\n",
    "\n",
    "\n",
    "# Set labels and legend\n",
    "c_ax.legend()\n",
    "c_ax.set_xlabel('False Positive Rate')\n",
    "c_ax.set_ylabel('True Positive Rate')\n",
    "plt.show()\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 136,
   "metadata": {},
   "outputs": [
    {
     "ename": "AttributeError",
     "evalue": "'Sequential' object has no attribute 'predict_probas'",
     "output_type": "error",
     "traceback": [
      "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m",
      "\u001b[1;31mAttributeError\u001b[0m                            Traceback (most recent call last)",
      "Cell \u001b[1;32mIn[136], line 11\u001b[0m\n\u001b[0;32m      8\u001b[0m \u001b[38;5;28;01mfrom\u001b[39;00m \u001b[38;5;21;01msklearn\u001b[39;00m\u001b[38;5;21;01m.\u001b[39;00m\u001b[38;5;21;01mmodel_selection\u001b[39;00m \u001b[38;5;28;01mimport\u001b[39;00m train_test_split\n\u001b[0;32m      9\u001b[0m X_train, X_test, y_train, y_test \u001b[38;5;241m=\u001b[39m train_test_split(np\u001b[38;5;241m.\u001b[39marray(X), np\u001b[38;5;241m.\u001b[39marray(y), \n\u001b[0;32m     10\u001b[0m                                                     test_size\u001b[38;5;241m=\u001b[39m\u001b[38;5;241m0.2\u001b[39m, random_state\u001b[38;5;241m=\u001b[39m\u001b[38;5;241m42\u001b[39m)\n\u001b[1;32m---> 11\u001b[0m probas \u001b[38;5;241m=\u001b[39m dnnModel\u001b[38;5;241m.\u001b[39mpredict_probas(X_test)\n\u001b[0;32m     12\u001b[0m target\u001b[38;5;241m=\u001b[39m [\u001b[38;5;124m'\u001b[39m\u001b[38;5;124mBenign Cases\u001b[39m\u001b[38;5;124m'\u001b[39m, \u001b[38;5;124m'\u001b[39m\u001b[38;5;124mMalignant Cases\u001b[39m\u001b[38;5;124m'\u001b[39m]\n\u001b[0;32m     14\u001b[0m \u001b[38;5;66;03m# set plot figure size\u001b[39;00m\n",
      "\u001b[1;31mAttributeError\u001b[0m: 'Sequential' object has no attribute 'predict_probas'"
     ]
    }
   ],
   "source": [
    "import matplotlib.pyplot as plt \n",
    "from sklearn.preprocessing import LabelBinarizer\n",
    "from sklearn.metrics import roc_curve, auc, roc_auc_score\n",
    "from sklearn.preprocessing import LabelEncoder,LabelBinarizer\n",
    "labelBinarizer = LabelBinarizer()\n",
    "y = labelBinarizer.fit_transform(Y)\n",
    "        \n",
    "from sklearn.model_selection import train_test_split\n",
    "X_train, X_test, y_train, y_test = train_test_split(np.array(X), np.array(y), \n",
    "                                                    test_size=0.2, random_state=42)\n",
    "probas = dnnModel.predict_probas(X_test)\n",
    "target= ['Benign Cases', 'Malignant Cases']\n",
    "\n",
    "# set plot figure size\n",
    "fig, c_ax = plt.subplots(1,1, figsize = (5, 5))\n",
    "# function for scoring roc auc score for multi-class\n",
    "def multiclass_roc_auc_score(y_test, y_pred, average=\"macro\"):\n",
    "    for (idx, c_label) in enumerate(target):\n",
    "        fpr, tpr, thresholds = roc_curve(y_test[:,idx].astype(int), y_pred[:,idx])\n",
    "        c_ax.plot(fpr, tpr, label = '%s (AUC:%0.2f)'  % (c_label, auc(fpr, tpr)))\n",
    "    #c_ax.plot(fpr, fpr, 'b-', label = 'Random Guessing')\n",
    "    return roc_auc_score(y_test, y_pred, average=average)\n",
    "\n",
    "\n",
    "print('ROC AUC score:', multiclass_roc_auc_score(y_test, probas))\n",
    "\n",
    "c_ax.legend()\n",
    "c_ax.set_title('ROC-AUC Curve')\n",
    "c_ax.set_xlabel('False Positive Rate')\n",
    "c_ax.set_ylabel('True Positive Rate')\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 119,
   "metadata": {},
   "outputs": [],
   "source": [
    "\n",
    "img_path = './AXIAL-MIP-24.jpg'"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 120,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 344ms/step\n"
     ]
    },
    {
     "data": {
      "image/png": "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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "import numpy as np\n",
    "import matplotlib.pyplot as plt\n",
    "from tensorflow.keras.applications import VGG16, imagenet_utils\n",
    "from tensorflow.keras.preprocessing import image\n",
    "from tensorflow.keras.models import Model\n",
    "\n",
    "# Load VGG model\n",
    "model = VGG16(weights='imagenet')\n",
    "layer_names = ['block5_conv3', 'fc1', 'predictions']\n",
    "\n",
    "# Get the output of the last three layers\n",
    "layer_outputs = [model.get_layer(layer_name).output for layer_name in layer_names]\n",
    "activation_model = Model(inputs=model.input, outputs=layer_outputs)\n",
    "\n",
    "def draw_features_vgg(img_path):\n",
    "    # Load and preprocess the image\n",
    "    img = image.load_img(img_path, target_size=(224, 224))\n",
    "    x = image.img_to_array(img)\n",
    "    x = np.expand_dims(x, axis=0)\n",
    "    x = imagenet_utils.preprocess_input(x)\n",
    "\n",
    "    # Get the activations for the input image\n",
    "    activations = activation_model.predict(x)\n",
    "\n",
    "    # Visualize the features on the input image\n",
    "    plt.imshow(img)\n",
    "    plt.imshow(activations[0][0, :, :, 0], cmap='jet', alpha=0.5)  # Overlay features of block5_conv3\n",
    "    plt.axis('off')\n",
    "    plt.show()\n",
    "\n",
    "# Visualize features for VGG\n",
    "draw_features_vgg(img_path)\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 106,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "%pylab is deprecated, use %matplotlib inline and import the required libraries.\n",
      "Populating the interactive namespace from numpy and matplotlib\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "C:\\Users\\ASUS\\anaconda3\\Lib\\site-packages\\IPython\\core\\magics\\pylab.py:162: UserWarning: pylab import has clobbered these variables: ['concatenate', 'disp', 'figure', 'cm']\n",
      "`%matplotlib` prevents importing * from pylab and numpy\n",
      "  warn(\"pylab import has clobbered these variables: %s\"  % clobbered +\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 275ms/step\n"
     ]
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 16 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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6DAwMSNkhQ9hmsxm1Wm2PUO9W4KmvpywyGAzwer1iGJOMxvVkaoTCnXJDNcp5be4fk8m0Zw8cBq3DwmfWS2B68CBDt11Uiuzm4eFhhEIhJJNJbGxsiNfc7hm3i2gwhF0ulxGLxeTn0WgU9+/fF4Ip05L1eh3FYlGY+QetJ3VIpVJBKpXC1tYWVldXEYlEMDIyApvNhu3tbZTL5UP3hMfjgU6nQzqd7nqPd605VOasml+ksqOwpvLlwWTumA9ay+jeD7RiD/piat6PHo1a86oK2na0f21+kYtDhV8ul/Hpp5/ixRdfxPj4OEqlEiYmJqSjjs1mQyAQEFY6BQKFQqcU/mcVJO7xsPBnw8PDAHYPjEqge9Jox+bWGntk/FKIt9uL3Hcmk0kUsepVc32ZimnHbO9V8Fw3Gg0Eg0H57pFIRLyL4eFh1Ot1OJ1ODA8P4+bNmwB2n1s7stdB6NS7JiGTaSuSCWOxmFRy8P4po6io97s+03WqbOvjYINDdeIIg8GA6elpzM7OSpXH9vY21tbWkMlkTtyIZcmstoTuKCiXy9jY2EA8Hoff74fb7ZZQOat+2sFsNmNiYkLKTukQ5vP5jvZRVwqa1g3DwNzgzOlxQfjhPp8PDodDmHNUfJ2QZejdUEEeVOai5j6paPmHhgP/0Kri++r1uihQNZ+uGhEkNd24cQOvv/66EGKGh4dRqVSwurqKYrGI8fFxuXdeg6G8XgU9Ea4xEQqFcOrUKXz22Wct5K1urmuz2YRn0A3UshfVCGOpFteDedPDGk1wvzKsq64n9xH3udqw4bgM0KcZNELdbjesViu2t7clzFipVDA2Ngar1YrBwUFYrVZ89dVX2NzcBLA/K/4gWCyWPXX3WlitVrjd7pbSKJfLJXwZbd6ZLHIaXqxQaef10TBTZYwW6s/bORW/DWxuQvvdDQYDrly5gm9/+9uoVqt49OgRbt68ifX19Y680KcB5Exsbm4im81ifHwcExMTsFqtWFtba0tibDQaWFtbaynLbUc03Q9dnRT1Q9V6aIY1a7Wa5GCNRiOcTqewMwEcqpy5qRli5hdSQ8TtNr2an2b4hEYEsCtMyOI2mUzweDxwu92w2Wzwer3C7mYTDRXMk9HyuX37NnK5HOx2O6rVKoaGhhCJRFAsFrGysiKEGC4WjZJeBA0oWoSEzWbDK6+8glwut6fsqptr2+12STV0Au3aqXuA7HF6fqqS0JLI2oFen3pNotFoIJvNwmKxSGMboFVI87z0ClTS59bWlhi/iUQCwWAQVqsVZ8+ehd1ux40bN7CxsdFiFHeba2bqaj+YTCaEQiEJuZrNZpEh3IM01vl6j8fTsj5qLns/MPKyn6w4CL1WbtkNZmZm8IMf/AAAcPfuXVy7dg2rq6t7iKTPAprN3T7arP03Go0IhUItPT+41rVaDfF4HLFYDKVSCfl8HrlcruNIW1cKWlW0JIawkxfzAQwZuVwuYSySXt5pmQlDjwcdZh4SCvB8Po9UKiVNTXhATSYTbDYbfD4fzGYzEokEdnZ2RKn7/X6EQqGWbmgqKLyLxSJqtRqy2Sy++OIL6HS7nWsY4mObydXVVdRqNQmd8h56DTqdTkoVtN27Xn31VYRCIdy+fftYh68d0/qw16v3pw1182BQUTAk32lomjwFEqJUVCoVIT8FAoE9Qv6obPWnFczjquku1qSzEYTf78fc3JzUuNOY7hSqcXXY83M6ncjlctDr9RgeHpbyTpZdqd3jms2mDClgpI3RMsqdg8C9rt0Dh72vV9pd7gedbrfjn1aGhsNh/OEf/iGsViu+/PJLXL16FWtra107LmzlfJAB9etELpfDxsYGEomEEMlYDXBSfIOuY00kd+n1eqk/o3XLQ8vWfUajUWqXOxFQzCXTA25X68oDzvpnMkcZqk6lUkgkEhLWYjkX6fHValVIBHNzc9je3kYwGBSy136eDj1pthm8d++eKH8yEi0WC4rFIra2tsRby+VyPZmzYskUu+IQwWAQf/RHf4Rr16517T2zTpHkvmw2u69QO+iQGgwGiZZQYKgdqGhAss6xm77IFOZqlQBRq9VQLBbhcrmkexnRS8oZ2H3Gfr9fFBvJnz6fD8ViETMzM5ibm0M0GpWylW5Kl2gAGwwGOVf7gdUkJpMJExMTSKfT4pnV63WYzWaJxF28eBHj4+Mwm83Y3t6Wz1K5MZ2Ahh7TJFqoSqpbw+RZhF6vl5SmCpPJhO9+97s4e/Ys3n//fVy9evVIRFG9Xo+RkRGEQqF9n7mKTp83o2lHXR82uqnX65iZmcGLL74Iv9+/pwLpqOhKQau5NdYhMj9M5cwwkd1uF8bcYYtBZc/4PD3ZdkQDGgA0CtixRn0glUpFBAZbgqZSKemRqtZWLy4uIplMwul0CtvvoM5R/L7ZbBYrKyvSQ5zF5yaTCZlMBjs7O3C73XC73T1HEmM5FVMahE6nw7e//W3U63Vcu3at6+tyXdRITTu0Cy9qYbVaMTAw0NYj4r6xWCxyqLo5RNpWrio4XMXj8fRk5IRgEyAyb4Hdc5zP5yXEnUwmW0KY3RgpPI9sgHTQe4eHh+FyueB0OrG2trbHY2d1wfPPP4+pqSkkEgksLS3tqdhQ77GT/UCnQ7sH2qVAGHHsRUWt0+kkApnNZlvk9eDgIN58803cvHkTn376KZLJ5JGMVZ1Oh1Qqhc3NzUM9b7PZDJ/Pd2D1DI14/lGdwm5BsnCxWMTLL7+M559/Hna7HcDj9Gq7yGwn6NqDVr+0NgdNxe1yuSRO3ylT22azwe/3S/iQilYbflTrHXO5nHT4YvMTdfFJLFE7WtHTJkkEAJaWlqQBitp6tB1Y41oul5FKpbCzsyM9XOlJm81mxGIxxGIxuN3uPVblsw61Z636vAcHB/G7v/u7+C//5b8c6RDSgznIO2Zq4rB9xXKfYrG4517U9pI7OzsYHx/H2NhYV/dKchFLcNSf0xjsZQXNKXPas2kymTAzMyPMXPI3uiFH6fV6iXQd5tUODw8jGAwinU5ja2sLiUSipTFJs7nbo9lms+HUqVO4evWqDC3ga1QDuhsvH4A0YVL37H75cjUH3ktgM6hcLteiPHU6Hb71rW/BYrHgk08+kRRIt9dm5dDOzg6SyeShZ58pkf32nNlslr7YalWGyWSS1Ey3YfRisYiFhQWsrKzsqRhRO+Wp36sTdK2gVRIFqfIqc9FiscDtdiObzXbMvqWXbLFYREmrRBuCX5w5YZLOGG5iGIv5R/6f+XBeT/WEdTodEokEVlZWhPymFboqKGxYS8fuMuxkptfrJcTJ+j5aU70Cn8+3J+yo1+vxrW99CxsbG3j06NGRrkuP5iCWL+sZDzvoagOc/VCtVrG2toZms4mzZ892fb9s86q9X7YnJAdB3c+9Arb15HfX6/UIBAIYHR2FXq/H4uKidFzqlhDGmmSm0vbbDx6PB6Ojo9jZ2UEmk2mRNyR9AhDZcufOHWGSq+D9UV6oLVs7gTqbgP8n1HvvpVavwOPZDFR02jTEyMgIvvnNb+KLL77A/fv3u0716XQ6afupVgodhlwut6dsS11LtnhW+SjN5uOBRyMjI5iZmem6f0U0GsUvf/lL3L9/X5xCRmrVjpnA3kEj+6ErBU1rVi0fUUsfms2m1ANz7GInoDDlTberk1RLpfiZajMAPnDVWsnn8wda7hQAzeZu72/mTA8Kc/NemHer1+vY2tpCpVJBMBiUPsOcnqOySHsBbD5C0hwRCATw1ltv4aOPPuq65R9Ba3a/NeMh7cQbY278oEOmrZc/SvkPy3K04B5ivrrXoijlclkIogDgdrulZWM8Hkc0GkU+n+/aY9QSQ/eTITqdDqOjoygUCshkMntKsKg01PtdWlo68LOZx+b1uzGqtFE6oNWZUb9fr4Aym3pA/W56vR6vvPIKms0mrl69umcqWCegHPX7/cc6P6wwINQWooTa/4JtaY/Cus9ms4hGo7L2NFwoJ9pxVw5C1znofD4vX0w9SMwj+3w+KbXqFPRoOdibU6TUQ8qDrrJGGVpRrXS1VIJTRLTWiwqVjcrxkswpHwaG31nEzhAJ26CycclRBP/TCjZ5J8EG2BWGr732Gur1Oj788MMjX1uNTGhB8uB+HrG21p2s/sMOGeu3M5mMEA+7CU1ToWjDVzRUm83HYzR7KbzJnB0jVcFgEMViET6fD9vb2yKwO20wooLRsIOIZayvjkajLQM2uN6q/FG5LQeda0bmgMd13p2ChqVaasNoT6+jXQ+BcDiMr3/967h58yYePXp0JKJsvV7H9vZ2y7Sqo0Bt2QocXA7XbO7Oe87lcsJ16fbclstlFItFceIYYWHazW63dzwsoyvNwZpX4PGXVNsqknV5lK4wPBzMDaoWmUoWo/JV80w8BAwxk2lLK2m/MJtad80uZxwE38mi0HI0GAxIp9OIRqPCQGZPYOBontnTCoPBgGg0KkpUp9tt5/jKK6/g888/P3bXnv26emn3Xbv7otfDPdFJGIlWM/eNz+fritXNa6j7SxsiVRtk9AqsVqsoM7K5Ob97e3sbxWLxSMqZ0BrdKsxmM6amprC6utqSkyS7l8+bih6AGM0HnWvuFzU83u09cx9qIwGHpW6eVTidTsn5EjqdDpcuXUIgEMC1a9fajvPsFFtbW5ifn+86CqmW4ZLToN6fdh+oP6ODyGZJR0lRtpNTLDkm472j79HNh5LtRqGmbf7gcDiQy+W67vxEMNStJvjpKfOz2WSEoWT+nrkQbftR/vsgQUElbTab94RQD3svD6E6HEAlUHHyVq+AJWuExWLBuXPn0Gg08Fd/9VdP5DNJPtqvTy8jIBSKasi6kwYkjUYDTqcTzWbzyKE0VRmQIMkGOGopRq+A55xnkrN1ue9VRXUUHHTuwuEwjEYjEokEgFblp/XkuCfYKewgxave91HXikoaaI0wHpS6eVbh9Xrh9/v3PHOXy4Xf//3fx+bmJh4+fHisMlNW4nSzHiSW8Y8WB60D5QfXjcTho8hwrR6hEcuobic4sknHkBFriDnZpN081uNAr9fD4/FISIBdglwul3Sa0h48dv3S9gXXQhWq9L7Umkj1dQd9J94TQ7ScR72xsbGnjONZRzabbdlcPp8PAwMD+Ju/+RspbzlJMOyschRUaA+Ouk6ddO9SGZzAY3byUe+Vn8cQGRV+r5XaMazv8XhgNpsl8jQ3NydpsCeRb7Xb7ZiensbW1lYLQZRsbH4m157r4XK5ZJbwfuBrO50T0A5qa+FeU8haGAwGpFKplqlhVqsVf/zHf4zTp0/jk08+ESPq13lPaoqyXZvow4w0On2MrJ40OC6zE3SloNX+1iTA1Go1eL1ehMNhqT8+STBUwRmh29vbiMfjku9VFawa9laF5UHCggdJbeGnhtc6CUupTVrS6bQwubPZLGKxWE8xeLXPMRQKoVAoyCjOk4bD4YDNZmtRcCzz4v2oNfNaHGa9qx6WTqc7sO/7YVBzkORrBIPBA+doP8tgDwCSbvL5PDY3N2Vs35NQ0N/4xjcwNjaGra0tAI8Ho1CYqmkFKm6dTodgMHhoL2++7yDP/zB5wM9UyYm9dP5VkC1NsJnI2NgYPvjgA1y/fv2JtznWPltGd0ul0p5UqXqfh7WNVasvum1NexgOKx1UcSQPmhcvFArY2dlBuVyGTqfrqsfoYeBBq1QqiMfjKBQKwrIsFotIpVIwm83wer2S9+V9sVxCDXHvB76GuW+1NIOWcCeHsl6vS911qVSSzmLxeLwnO4kBuz23TSYTUqnUExmlZzAYEA6HAbQ2kHA6nQgEAnC5XBKO3G8a1WGeK6Mv7KF+nLXSksWY6uG4uV4CI05GoxHpdLpFIQIny1bms7t8+TLeeuuttqxg7WxulUditVoRDoelH/h+YGdCRuDa3Ucn30sr/NkUo9egTWWaTCZks1n87Gc/w49+9KNDn/dxwFpm5ohVZwzYP6VAnoL2vtS9y9A45UI7mfDrOs9dKWi1tzFDSmyhqLZS7AZqHZoqhJlHUIcUkPRlMBiQzWZRKpXgdruloxMPAkkLnQhbdaEY2uLnqPdzmJKmgqDCYDcbjmHsNTD0bLFYpGPUSYPrqp2GRbY958kSakiTtbQHgU11zGYz4vG4TKs6DlQvulqtYmtrS6obeglms1miGNlsVuo9n0RYt9nc7a/wB3/wB3j//ffx4MGDPQKWFRWq4GSr19HRUeRyuQMJjJQdKoN8v3vp5H7JSwEgMwt6HSRmRqNRKT19EjCZTAgEAuIJa9dkP+VMJvVBpGH2zaAH3a7723GUM6tMnkgnMdZA08rkl6DncZTDSeXHQ8H4Pzt61Wo18ZSodGm5M+fJfuC0olmu1QnU9qUqQUS1xA7Lp2lzV8lkEslkEuVyGcFgsOuC92cBbJHncDiONE7yIJA9yWurB73Z3G1ETxLWqVOnhC2vrlMne5EcilqthnQ6DY/Hc2wFrWVvkxHKe+wVeDwe1Go1YVE7HI4nGs7kbPGPP/5439eo6+9yuRAMBhEIBNBoNPDw4cMDoymcfMVeCurIUvX6nUINrzPqp71er4GOCcPMTwqhUEg6OjJ6puql/c4+K3W00TaVcc8yy1KpJNE1raN3HH6F1ng7DF1pDiphbjy32y0bul1LxcOgdiEi45ULbDabZfau2kyCYUubzYZGoyE9kTOZDPL5fNdkHCplTqAiW7hbcGNwOAc9514sr9DpdPB6vbDb7SgUCm27M3UDToDhv5lTjkaj+5L7SqUSCoUCnn/+eSwvL2N9fb3r7zAwMIDBwUEsLi4ik8nsaW5xFDAnThiNRkSj0Z5T0OVyGblcTiJF1WpVUl3A0UPcrB03Go3SDIVjPN99990DCXzNZhM2m00qPaLRqET2DlpXo9EIu90uERfOJz6OMiWJFoCMwOQ99ip0ut1pVsfhcRwGjhTe2tpqWVOmJjlBUb0n1WttN7RJ5RCFQiF4PB6k02kYDAYZE3kSUPUd9cRh6EpB09tlSzSPxwOHw9FV0rvlw/9f+RRr1ThXc2dnB9vb2/J5+Xy+xeqhxWOz2Vry4d0oZy4aQ+dsG8oQOa2zbsANQ6vOaDQilUp1XJT+rIDr4nA4sL6+3sLi7BZcdx6eTkLTwOOGAisrK13XSOp0Ong8Hpw7dw6ZTAZzc3PweDxSunccHgVDpDRkI5GIKIpeQiaTgclkwsDAACqVirT1PC54nl0uF/R6PV5++WXkcjlsbm4eynFhOLtQKGB9fb2jjnYc7GMymWQfUzk7nc49HfM6BT06Gu16/e5EtePyHJ5mMKWQTqef2Hd0Op37ymYOLGLPb8p3eq3t9idTmsBuRcrZs2eh0+lQKBSwsbGxZ97AcWAymeB2u1uafR2Grl07dfxjpVKRvM1RhBoFvcfjQSgUQqlUwsrKClKplMyQpvLXfiGW3XDCSacCkJ/JkDhDtRw2n81mW6YUddNJRg19sGXcQV3MnlWw1vPcuXPY2dk51rX4zCi4OlHOXI9UKoXr1693VRal0+ng8/lw7tw5mEwmPHjwAPV6HW63W4auHBcmk0nKq7xe77GV/tMI9tw/ffq0sLaB4+fnAEhKS6/XI51OY35+HqlU6kCPg137tra2sLGx0ZFy5ihLhqArlYqkujwej4THtffXKSj4A4FA1x3qnjWYzWZMTk7KFMMnFSnIZDJIJpMtqUcaVOosBBpdQPuQNPUK18jhcODFF1+Ey+XCwsKC7LmT/B4mkwnhcLjl3g5D1wqaXg6wy+J1Op17ZjZ3Cr6vVqvB4XDg4sWLkk9mi8z9HlC9Xkc+n0c6nT70MNJLIwucXjLHGwaDQQwNDUmDCea5mWMnAaYTqCQ6oHdDWpFIBGfPnj2RkDDTC508Y9VgyuVyHY2vY7TEbrcjEongwoUL0Ov1+OSTT5BMJqXXb6lU2hPt6PS+VBgMBuk+xPB9r3lNNpsNXq8X6XS6hVF91P2uhiErlQpyuRzy+Txu3LiBVColUbv90Gw2kUgkDu1iqFZm0DjP5XLIZrOSnmg2mzh37pyMTmTothuiF9ecQ0TUDoe9CJfLhZGRkY6N7E6gptIIts/k7/k3I3BMJ9Bj1vZ15xqoUxKdTidef/11jI+P4969e5ifn5c+8hyCdBJgKSC9+k7Q1SfTG2Q5kRoiPgqoZOv1OtbW1nDhwgWcPn0aq6urUsuWTqcPnCl9GHmLh5G9sUmb1+l0kue22WyIRCIoFosyYIMHioM3OjlcqjXHjjTMk/caPB7PiU3p4kGyWCyHPqt2lvBBMJvN8Pv9sFqtwm1Ip9PSUENtSsDxkSrY0rLbTkYU5mqdfi+B5JmNjY0TiRCRW2IwGNoK+MPSV53MnCe3gb2Rmedm7pznl+WD6XRaaqjZ46AbUPYMDg5ifX295yJpKkjs7TbVeBDGx8cxOzuLpaUlLC4uynXVckbVYN8vkttOWfO9Q0NDuHz5MoLBIK5evYoHDx7I/mNL2bm5uRMxrGgAdjLPnuhKQReLxZYGIOp4tqOAVibLtO7cuYPx8XGsra2hUCjA5/PB6/WKUO24uPv/HUZ6LxxooQ5YZ79ldsLJ5/Mwm82w2WzI5XJIJBIi0P1+P0qlUsefz4WgZ9iLjQrIGzipCEGj0Wgpczqo5rQTj5k18gMDAwgEAlhcXBQimZqPajQaiEajMBqN8Pl8MJlMWF1dBbB7QEdGRrC8vNxxVQDweD4ugBZBcliDhGcJOt3ukJF8Pi+eNHC8iBHXhaFnlnJqp1Ttl09sB1UWAK0zBJgLJGeATSkcDgfu378PAHjllVeQzWaxsLBwJM+QZ6QXSy1VUOYdRsjr9pqMRg0MDMgQCnatazeSWPt+rWKmVxwOhzEzMwOv14tEIoG//uu/3tMFs1arYWlpqYVjo6237waUC90Qh7smifGDgMcK+jiUc1XZ53I5RKNR8XKj0aj0+rVarYcm19XpI2ovb+aWOEmEB58ebqPRwPb2tuSeGCbjA+2G0UkrnIx05rR6BRRmTqezZeLYccDwJi1khoLUMFSn1yHjd2hoCG63G4lEAg8ePMDGxsa+72Mo8tvf/jZu3bolPx8bG4PD4eha4Kh75SRys08jarWa8DUcDseJtfhtNBoYHR3F+Pg4vvzySzSbTakWACARu8PWhAKQBjIdCyrKWq0Gq9UKr9eLZDIp+W0aAIlEAmfOnMHk5CT+9m//dk+ZVKfflXKtV1NdhFo6dFLfdXl5GblcTuS33W6H1Wo9lP1Mma6td3Y6nTh37hxefPFF1Ot13L17Fzdu3EA0Gt0jZ/h5qmFusVgwOjqKZDKJRCLR1fdkmoTzHp5IiJvKj91YXC7XsePz9CxIElJLEoDdkodsNivKUuvFqk1E1DZ9DJlZLBY4nU55QJVKRfILanMThr6Ax6UenNTSTYiTD17twd1Lh9PhcKBQKMBms7Xd2EcBvXEKYa5pJ89NJf253W4MDg5K+d+dO3eQTCYPjHzwvYFAANVqFXfv3gUATExMYHh4GFevXu3a+1HDbofNJH9WQYINW3zSiD3uXjeZTDh9+rR0p1PPEXvyH1TWR1lAY51nm1UanGrF2dWJRALFYlHqoJ1OpzRemZmZwfXr1yWd165t5GFQG+fw/70kDwi32/1EGOqqIiTXiHtN7RbHn6t/A4/7W1y+fBnf/va3EYlE8PHHH+O9995DPB7f92z6/X6cOnUKi4uL2NnZgcViwczMDEZHRzE/P981U12v10vqpNMmWkCXCpoTYdhBiKHp4wggdQO7XC4JdQKPCQEMO7lcLulmxi/JfBKvxbIJevdmsxnValWIIOrDoRIm0Y3lOqzrJEGoG0+Or2NXHZvN1lMMXpagmc3mEyutYS6QB0vts82Zusw70fii4CbZz+v1IhKJQKfT4e7du1JqcdBnMt/o9/tRLpfx13/910ilUpiYmMDIyAiuX7/eVWibUElh29vbMmO8l7xonjtOtQNOxhBlmuPRo0dyzUwmA5/Ph5deegm3b99uCUdrwdImdoBiJYjdbpcyp8HBQdhsNmxsbMiZr9VqErUplUoYHBzEw4cPsbKyApvNJiH8bhWswWCAy+Vqqzx6BWRwU46e5HdUr7Vffnm/e3K73ZidncUbb7yBqakprKys4K/+6q/w6aefHiiTLRYLQqEQ0um0tJS+cuUKhoeHsbS01BExVQtWGTBE3qncPJIHTQXIIffHVdBsqcYaOlpIrEGkhxUOh6WLFMMewOOwFK1m0uyNRiMKhYLcJ5sRcHHYqtTv96PZbLYYG2azWWoXu8mr8AAzd0bB0CtwOp0oFApIpVJYW1s7scOohq3UVMrLL7+MhYUFbG5utqwBuQX0iqjEWSpH7CfImcLwer1wuVzY3NxEIpHAyy+/DL/fj48//vhIU61o2fMeUqmUnJmT7FX/mwb7IXDkbLchv/1gMBhw584d8ZaojM+ePYtMJoPt7W35eTtQdjBPCex63moqjqRTNWXGPDFDtRaLRSJ3THl1q5ybzSZ8Ph/sdrsYbL3mQet0OkxMTODNN99EoVD4tRmhWr3DEkmbzYZwOIzh4WFMTU0hGAxifX0d//W//lcsLCwglUrt2waU61Kr1bC6uopCoQC9Xo9Lly7hzJkzuH//Ph4+fHik0bF0IqgbOkVXCpoJbmBXUFut1paDcFTQ04xEIqJUWQPJ/GAqlZJSh3K5LEXp+Xy+hRXXaDSQTCaRSqUwMjICv9+ParUqtXlU9vS2OYnH4/GgWq1KXXa5XEYymWyp8TwMDP/zXjhX9ElPdPl1wuPxIBaL4f79+yc2XpKseoJGVq1Ww3e+8x38j//xP1pCqFS6ajSkVCqhWCzK5me/3kajgXg8vudAMUdFD4d5wqmpKXzxxRfHGjLPNApBQ+A4DV2eNjDqUSqVjl0LT5BYSa+WjR1yuZwITbV8sV1ItZ3wazabsldJSlXJrurreIY3NzdFFh3H+w0EAjLhi85ILxnsJpMJFy9exMTEBH7xi18cKeLUKfR6PV566SW89dZbuHHjBq5du4ZkMgmfz4fp6Wn4fL6WiOjCwgLeeecdrKysHPjMmaal90/jDdgtJ52ensbdu3dx586dI3MtbDYbBgcHsbq6KnuhE3SloEl8KpVK8Pl8sFqtxy7mZrh6dXVVCD4MUbEGeXZ2FtlsFmtra8LwDAQCMt81lUpJLoleca1Ww9raGs6dO4dAICAHOpvNSltClsOwF3Mmk4HNZkMgEMDOzo4obDWvfdB3ZejVarVKadZ+jdufVTidTjSbzRPtFkSuAMOb3GfFYhEPHjzA8vKy1JNms1kMDAy0CGuChhCv5XQ6MTo6ii+//LKtwuX7bTYbXn31VaytreGjjz4SFvdRoBp9BFtJ9hJYmsS+xSfhOalni7wANhC5e/cuKpWKnMeJiQlYLBbMzc21NYCZGmEKBICMgOUflbxJ8qOavuN33C8KcxhYorW4uCiyoVciKIROp8P9+/dRr9fx4MGDJ6qgT506hW9961v46quv8PHHHyObzWJwcBCjo6PIZDJYWVmRs1er1TrmDrHNp1a2Dw0N4eWXX0YikcDt27elVv4oCAQCGBsbk57wnTZE6npYRrVaFevipHpMc+DG1taWhJXGx8dhNpul84o6V5eNDBYWFpDNZuH3+yW+z1IpnU6HTCYjJTJLS0tIpVKw2WwIhUJCHPN4PIhEIrKgrOOjAne73XA4HLDb7RLabwceQHrmbHSiEoZ6ASoh76RCdcwRcrQkiX3qUIxmsyneDEvgtNdQ7zGXy2F0dBRvvPHGgV17bDabTK+p1+t7lLO2GcJhUFsLqtdg5UCvoFwuS4VFu+98FDDNZDAYMDs7C4PBIA5APp+XiNTg4CBeffVVye1rwX7+jUYDg4ODqFarcDqd0t1N/TyC68sctNlsllJM4DHpTK2bPwx+vx/hcBiJREJIqb0U3gZ298GdO3fwzjvvnFhN/H7IZDL4+7//e/zsZz9DNpuFw+HAv/t3/w7/+l//a4yPj8PpdMpciHbpJNY9U1/4/X7htaj3bTabMTw8jIsXL+KVV15Bo9E4FhOfzkUmk0EsFuuqKqgrDUsWdCKRkEb23YzOUsGbNBgMMBgMsNlsyGQyUrpjt9vRbDYl9+hwODA1NYWRkRFEIhHJ7S4tLeHevXuo1WpilZhMJgwODsow+YGBAdhsNiwuLmJtbQ1er1cECxmaNpsNY2NjCIfDIhDU8Dmt63YHk8KJr1OJTCSb9QqYj2s3hu2oYLkLQ93f/OY3MTY2Jjm8gYEBWROy+gmVxU8wv/zSSy/h1q1bSCQSMJvNewQ0p+6Uy2X89Kc/RSaTQTAYbHmNysrvRChz1KkKl8t1pN7uTztOnTrVdSncYWg0Grh8+bJ08lINJJaoVCoV/OIXv8D8/Lyku1SQP+J0OsUwGhoakkY0nJRntVpFCTPaxXP76quvtghvNYLWqbE2OjqK7e1tJBKJljG4vQYaz930mO4Wer1epgQGAgH4fD58//vfx9tvv41YLIbFxUVpOuV2uyUSwvf6/X780R/9Ef7Vv/pXsNvtyGazEmpW15IpzmKxiC+++AJfffXVHv5Lt2g2m1hZWcH/9//9f8Lb6bQypCvNwW5c7IvrcDiQy+WOJKgp8OjJsoQhn89jZ2cHXq8X09PTuHfvHqrVKtLptNTEVatVIXpYrVYkk0kUCgVheTscDrjdbrhcLthsNlQqFYTDYTQaDaHMM9yUz+cRi8WkDvrSpUtwu92SNyLZixbUQRuQB1pVGsVisafqoEnSefXVV3H79u1jT7KiF6bX6xGPx6HT6fDcc8/hvffeQ61Ww9WrVw/NcTocDiEUci+OjIxgbW0N7777rrDB2x0yMtFTqRS+973vodFo4L//9/8OoJU40skBJb+BIXseQu7LXgIVXSKRONHrnjt3DhMTE/jVr34lpE6WW3k8HsTjcaTTaanmUI1hckxcLpeU121sbKBer2NzcxPZbBZ6vR5XrlzB/Pw8AoEA1tfXRRbV63XZi/fv30c6nZZomFr50clacgb43bt3pazrpDgbTyPYwrKTHujdwGAwYHp6WpoOXbx4EcvLy9jc3IRer8ef/umf4le/+hUWFhbk/LOCh5GdcDiMl19+GZcvX8Z7772H9fV1NJtNabxls9nk32Typ9Np6ctNGRcIBKTM1Ol0tjS0OgjNZnNPZK5TXlJXCjqXy8Hv9yMQCKBUKsHhcMDr9WJ1dbUrK5oHgiQQ5npJEnE4HBJiGh0dFcIWe+OSsatOimFpC0PVlUoFbrcbBoMB29vbkgNwOp0IBoMolUrSCSmdTqPRaEhY2+/3w+/3w+l0SshLLX5vB1piBoMBpVIJLpdLSrx6KazFfOPo6OixlDNZ9Wwcs7GxIc//6tWr+OSTT9BsNhGNRg8kbPGZqx2iGKq8du0aMpkMnE4nxsbGpMZZRTablc8Nh8MSZgdaQ6CdrCHbwgJAOByWQ2k0GhGLxTp7MM8IjEYjbt682fKz4zCUbTYbhoaGMDExgffffx8XLlxAoVAQA4A8Ee3seW3P+3A4DI/H01KjT86EwWDA2NiYpMhMJhOSySTcbrcYeLVaTYiv9NppdHXz/ex2O9xutxgFbIzUS93kVPj9fnmux4XaDObs2bP44Q9/iKWlJQwNDeHMmTO4evUqbt68KdUbhUKhJTLBdbfb7UI4TSQS+J//83/i7t27LVEQm80m7XxVFjcASbNVKhVEIhF8+9vfRrVaxfr6Oux2Ox4+fHhkA7XTfdCVgq5Wq0gkEpJXqVarUs7UqYfA5gG0WorFIpxOJwYHB6W+LBgMSgtGllvlcrkWJh4fsFqmxZA2D1oqlUI8HhdSG8ke8XgcY2NjACDjCplfv3fvHoBdz4qHkkr2oBo/dimi8NDr9WJtnVSu/mmA0WhEsVjExsZG2/xfp7BYLDKgIpfLodFowO12Y2hoCP/wD/8gfZktFsuBJB3WZasdu+r1OlKpFFKpFADg9OnTGBwcbKugGW7yeDxwuVyYnp4+0vehYReNRmG1WhEIBLC6uipRJt5Lr6Bd6eFRFbTZbMb09DQqlQp+9rOfYXx8HN/5znfwJ3/yJxLCJpn0oJndFosFly5dwoMHD9qmGcbGxlAqlXD9+nWUy2Wpbaby1ut3R9sajUY5u2R8a7/fYd91enoa586dw69+9auWHKbH4+m5vaDT6YSnc5xyO5YjsrtbqVTC9773PQwPD+Nv/uZvcOvWLZTLZSQSiUMbEDF1WiqVsLa2hrm5OZEhBoMBoVAIOp0OgUAAuVxOSK9aktvp06eRz+eRSCTw2WefoVwuCxeGcuswkPAYjUZbvPwTV9Dql1ebgmhboh0EkiUYcmRXL5YfNBoN2Gw2pFKpPeFovp9EDVpaXCgaCewOxt/l83nkcjmMjY3Bbrfj5s2bYrGXSiXEYjGx/MrlMuLxeEuO4rANR+9fPcy8v16re6TlNz8/j9OnTx+5exBrzFm24Ha74fV6ATy2gC0WixhG7d7P6Im692hMqSNKO2GcDw8P4+WXX8a1a9e6/i4AREAVi0WcOXOmJYR10mHgpwHt9vRR9jnb666vrwtL9vXXX8f9+/cl7dRsNiWaRaJYu+ucPXsWBoNBIjuqYcwQs9ryVfXU6vW68Gncbrfck9obQVuHvx/0ej1++MMfSj233W4Xxd9L6S6Cqc/jEAV1Oh3Onz+PUCiE69evo1AoIBQKYWJiAn/3d3+HO3fuCMenkwZJTIG02y8cyJJOp+Vssr+Dem7D4TAuX76MlZWVIzco0ev1GBsbQyQSkWZZwOHDXeT9XX0aHhNwbDYb5ufn25JvDoJOpxNvlSVJwK5iZF6LoedUKiWWFOtfyfBl2z8K42KxiEwmI80G+BlkYa+vr+OXv/wlFhcXMT4+jq2tLdTrdUxMTAgDnF5vqVQSZd/JgqhEFjKGaVSc5ECJpwEMD62treHy5ctdjeBTQbJXs9mE1WrF0NAQGo0GlpeXW5rFaBUrjS/+jtYs+QbtalaXlpawsbEhe2dwcLCFN2EwGPDKK6/AZDLhT//0T7v+LgaDAcFgENvb21Jaw5B2pVLpqu7xWQE9ThVH2edsBEKPyOPx4NVXX8W9e/daOsgNDAy0NXa5HyYnJzE2NoarV6/KlLJIJAKHwwGr1Yp4PL6nH7s2hUEP3eFwSDMkGgidgGv86quv4rnnnsO7774Ls9ksOWz25e41sEy2VCodWR54vV4pSWOEYXJyEvl8Ho8ePRIy59LS0oEtOgmSCbVMfYvFIulL8kQYDWKUFdhNufze7/2eOItH7ZAWCATw3HPPSStZ3tsT6yTGUJPNZsPq6iqGh4e7YinzwbH2jHninZ0dOBwOBINB2cwqSaTZbMqQ+Hq9LgxPt9stY864cGoNXKPRgNfrhcFgQDabxcrKCpxOJ7xeLx4+fIhTp05hbGxMSAJH7fjE8Ls6Co0L30sKul6vw+l0IhaLIRwOH3kIPRWv0WhEJBIRz1z1hrUNPywWi6RGVBYk55KTwEZQoNdqNSlvGBkZEeFJa7bZbGJpaQn/+T//Z5l41Q1o4OVyOQQCARgMBgmfMlTPgQ+9wuRWDQ5WXHQacVKhFaIzMzNoNptYXFyUzzGZTFLhoYJDUWjEf/7557IHIpEIXC4XdnZ2YDQa97yXZ5T7jn/oQfHsdmNYMYT9b//tv8X/+T//BxsbGxJCBSB12b0GMuVnZmYQCARw69atrkiRTGN+9tlncv5NJhOmpqaQzWblfIXDYUQiETx8+PDQa7Y7Zw6HA6dOncLo6Cj8fj9u3bol1yqVSgiHwwgEArDb7fjud7+L3/u938Of//mfY3t7+8jG5+DgIAKBwJGnoXWloMmSBCAdfuLxeFchToaT+IeWTDabldGSbKVGVh2VObuIkbWt0+mQz+cxPT2NiYkJVKtVZLPZlnA4CR8cilAsFpFMJjE6OoqNjQ2sr6/LQ2QZ2WE1b2odGwlJnI5TqVTgcrlkHnQ74fAso9FoSNON+fn5Y7OTTSaTNCjRKnuVuMHOYOl0umWjGwwGGQd6UG008HiAyejoKLxeryjoRqOBDz/8UKI73YDs4kwmg0qlgvPnz2Nzc7PlHu12u+y9XoHqUbBMksq2G2GmzenOzs7iJz/5iYQemSZiRIKvGxoawte+9jXcvn1bcnuExWJBMBjEwsKCOATanB//z25y5C6wwRF7GnRL6Pr6178Op9OJv/mbv4HZbEahUBAWOrCb07x+/XpX13xaQePGaDTizJkz+J3f+R1cvXoVd+/e7UousP5dxczMDE6dOoW5uTnE43EZEZzP5498jpiPLpVKcDqdiEajsNlsMjTF6XTiBz/4Ad544w0899xz+OlPf4pf/epXR+4q6HQ6MTw8jEqlgq2trSOlArvOQdvtdvE0bTabhG86ZaWpIUjmhxnudrvdKJVK0o8baA0fZ7NZScyrZUwLCwvweDwYGBiQvDatX5K8VOZnKpWC1+uVki21sUE6nT6UAq9a1SaTSRSxyiSmUGAOvdth708rmGpwu934sz/7s2O3r1Tr4LWlCGoNciQSaWmSAzwmp7hcLrhcLglFqVA9OoZDuYfV3x/V0GBpSTQahd/vRyQSwXvvvdfyGu6NXmLvUjBz7CRlwFGfI0vhHA4HfvnLX7b0FVCNr2azieHhYfybf/Nv8POf/xyPHj1q6y2RV8Jnr7aJZfrJZrOhWq22DMZRHYhuvSa3241vfOMb+PM//3Nks1lYLBbkcjlR9toqgWcdDAeHw2H84R/+IWZmZvD3f//3x671NplMePHFF5HP5/HJJ59ga2sL1WoVi4uLwtxW0a4PQjvUajXE43HE43EAaEmvVSoVzM/P48c//jHu3r0Ln8+Hzz//fN/9dRiYex4eHsatW7daSkX1ej3OnTuH27dvH3qdrhU0N3GxWJR2ehSy3Qog5n2TyaR0dCJ7mmBHLk6kMplMsjG48YvFItbW1jAxMYFUKiUNRlTyAoAWK61cLiOXywkrTw3fdwPW3DmdTukYRK/dYrGI4OoVUEmybtnv98uGPwooLL1e776Wqsfjgd1ux9LS0p7fsQf31NQUMpnMHhIQKwxYKxuJRFrKd44D5if5/V966SUpD1PvgXu21+pg1fPO8rvjkCJ9Ph9sNps8T7VdLmG32/Ev/sW/QCqVwgcffNBWeJbLZcRiMbkftc5Zja5RQQPY063uKJiYmMDdu3fx6aefSlUJGbterxdTU1MypasXwOdqNpuxsbGBubk53Lhx40QUNHlDOzs7LelDLThDgU4bHb/9JkZp15aM/Z2dHWSzWdy5cwcPHz4UJ+uoKSmXy4Xh4WGkUincu3ev5XNdLhcikUhHCrprzUECF0PNqVRKxv51k6/R6XRwOp0ySUqn06FUKrX1yNjg3m63w+VyyZxmUtatVit2dnZQLBbh9XolpOhyuYRMxlw1axvpUdML0PZP7uT+1YJ4vtfhcIjBUqlUpO9vr4A1pezKNDg42NK1p1swRbCf58XQ9vr6esuQFN5LpVJBLBZDuVzG6OiohMm5F9lowmg0IhQKYWxsDMvLy1KfetQub1T+ZIsHAgGsrKxgZWWl5XV6vR6Dg4M9NTCFoFBs1y7xKPD5fHj06JEo+3bXe/7553Hq1Cn8xV/8xYHPlNPu2A6UxjzbCrPnQr1eh8VigcvlOtboXM4h/+yzz8SRIGF1ZGQEFy9exNbWVlsj81kFjbG1tTX86Ec/wo9//ONjDZkhnE4nBgYGEI1GD4zIBINBcRbL5bIoVCrdw842CZ0kggGPowKd9vFuB71ejzNnzmB0dBS3bt1qkf8mkwkTExMd77OuFDS9ZOZVGBJmrrgbT1ENabHvdiaTackvcANQmNrtdvGG2ASfJJxyuYytrS14vV6EQiF4PB6USiVhgpfLZRlDabfbRSlQ0XZjXFCw0zBxOBxoNHbnWHs8HjgcDikJsdvtolB6Acwxsl1ioVCA2+0+8vWYknjw4EHb39Oz4b4YGBjYs88KhQLW1tYwNjYmrTppsdpsNpjNZmkZevPmTXzwwQctn38U0ChjG1qPx4O5uTk0Gg0p1zEYDJicnJR6/F6ENud8VO+TZ+ratWuiUNt5O3/0R3+Ev/zLvzxU0akNjNhbXy3Zs1gsyOfzqNfr8Pl8xxLIbrdbKkO2traktKpQKCAYDOL8+fNYW1vDwsJCT6U5KDeZ5jgJro3RaMQPfvADnD59+sBJglTAzO9TVzAKynN5EAYGBvD1r39domw01I5bcTE2Noa3334byWQSKysrLSm2c+fO4aWXXuo4NdiV+0BhyW5eKjP1KOxnhkvNZjO8Xm9LeRPwWEGzgJ3hC3q+rJOlwqY3z9ykyWQSohFzTGxqUiwWW5r8d1NKoXrOvAeTyST5yHw+LwPgqcR7BfQYGTpMp9Pw+XyHNg7YDzSU9jvcFosFyWRS9pWW2Q3sKgUOVVA7nKmRjEwmg4cPH+5hUh9FKLOlJz04t9uNTCYj6QyOYWVFwnGmYz0LaMcX6VYRmUwmxGIxRKPRfd8biUSwvb3dYmDtB1ZPaIl/XCMSwgwGg/SRVvstdAq9Xo+zZ89Cr9djc3MThUJBuDAGgwGvvvoq1tfXxXjrJbBJELFfz4JuEAgEEAgE8OWXX2J9fb3t9Rg1ZWc2er1cZxJ0rVarRLmcTidGRkZkhsDAwACmpqZgtVpx7949GI1GeDweGcpyVNCRvHfvHn75y1+KY6HX6zE5OYkrV64glUphbW2to+t13YubYUVgV2GzVWIwGJQmH51uRM6SVa+rkkH4oE0mE/x+v3jrLIdQw8vM/WYyGYyMjAibm+FrhrArlUpLH+9O8wxUSFTEbMxOK53WJPPa9PCZy+gV8FlzXRjiPGqe/aDSAwpXNaqSTqdbStm4XwqFAhYXF2VCjcFgwPDwMJaXl2UvaT/rKALTZrPB4XC0dINimQ8AGehApcWxmNynvVRyxzPBKguWRarGS6eo1+uIxWIHnsVIJIIf/ehHUrZ0EDGVP3e5XBKlIXhvNCgYlu12bXQ6HWZmZjAwMICPP/4Y+XweXq8XVqsV6+vrOHv2LAqFAu7du9dzyhnAiQ9KAYB8Po8f//jHyGaz+7bHpYPEDpBMNzHCqzLwee6Ghobwwx/+EKOjo+JAPXjwAB988AGWlpZkLgPff9T1ajQauH//Ph4+fNhSSjo7O4tXXnkFxWIR169f7zii1nWZlTrxhQSsWCyGU6dOSTetTudmMpHfrtsLhTOFsdoZRntPDHM3m03cuHEDk5OT8Hq9wvjmCEkqahLbKGAO86DpNdtsNthsNmSzWWFlsxGB6t1TcfP59NoEG/IFrFYr6vU61tbWnoghwoOiKlbuB/Ug8hmvrKzAaDRiamoK1Wr1SJ1/9gMVkN/vRyKRQL1eRyQSQSwWEwOClj0POmtyWaGQyWR6amiG6nE6HA45s2RKdyPkDjsjPE9bW1vS+lVlZx/0PpWxr4KG21FCmjqdDtPT0/jud7+L9957D7FYTNrX7uzswO/3w+Vy4csvv2wxMHupF/dJD8YAIGOED3pG1ANqlISse0bN1MYzwC6r/969ezLgh6MfE4lEyyAUpleOs0ZqxYbBYMCFCxfw5ptvIp1O48svv+xqOlZXbg89VhIsjEYjfD6fWDvj4+MYHh7uqJuM2mZPe8D40DnbudFoIJlMttRZclSc1WoVZctazEePHomHk06nEY/Hhd1NRc9+3Yc9KObX2dykVqsJiaVWqyGTySAejyORSEg7P6vVCofDIeGUXmvvx9QByRnlchkTExMn/j1Vxj7RaDQkJaIy9Gkcrq+v44033sC5c+dOrGuTTrfbcN/n8yEWi0la5sKFC7J/OK6UTRsASBpGFRq9BLX/ucvlkrwald5JVi/QEI5EIi1M7IPIqeSGZDKZPfJGmzfvZG3UEP7s7Cz++T//59ja2sKDBw9gs9lw5coVaaxkMplw//59Sb3QmOylio4nhcNkMhsa0cCi80WuAR0xDtEYGBhAOBzGjRs38POf/xxffPEF7t+/j52dnT3pDw5N6RbsWEdQH509exZnzpzB+vo6vvjiC+zs7MBsNnfM2+nKg/b5fACAaDQqBeNDQ0PQ6/VYWFjAzMwMzp07J8X+x2nMoOa1SPiiYqXXyw5SNptNwhZsemG1WmUkmHo99fqHHUqWarGTTSKRQCqVkraSpVIJyWSypWWp6pHT2+s1Bc1QbblchsPhkFTChQsXcPPmzRNTROzXrcJms+H06dMSoiL4vLk+J9X/mrkpi8WCeDyOYrEIm82GS5cuSV7RaDRifHxcWPvq+1gjzL97CTSk2UCCiplrwTLDkwiDut1uOJ1OGWaj1+ulD4MauVFLvdgAg8JSbXxz1O9rMplw6dIl/LN/9s/w/vvv45133gEAvPzyy1Jna7PZsLOzIyRUo9EohKZe8Z73A8uuOKb3SUEbmaQxViqVWj632WwK52hzc/PQKN9R0hwejwdut1tC8haLBZOTk7h8+TKy2Sy++OILJJNJabZCYz0ajR56/a4UdLlcxsDAAIDdhcjn89jY2MDk5CRWVlZw9epVfPe738XZs2cl9HmcsCc9Y6/XKzOoGdrkMAu73S6TiBjSZklWJBIBsEtGY3eyTkBLmV2uqtWqDNBgDhpAS/kGf65O1FK9u14CnyOJMGazGcvLy3jzzTcRCAROZLSi2ohGxdjYGM6cOYN33323JVxMIiAAPHz4UAT1cUAlq9frpeTDZrPh/PnzWF9fbyF/xWKxlpA6KxxoUHJf9EqrT4IRrnbGOPODxw0ZshyGs6B5TZ55bd05h5bQo+dwHirroyppk8mE3/md38Hly5fx93//9/joo4+kK9Xq6qrsBypi1VBQ90Uvgyk+u90uxMmTBnPNTFWOjo7i7Nmz2NnZwcrKClKplMiGRqOBRCJxLJb+QXC73ZidnZWw+9TUFIaHhzE0NIR8Po+1tTXUajUEAgEx0jglrRN0paDV1mhWqxW5XA4bGxvQ6XQ4ffo07t+/jw8++ADf+c53ZHNubm52Tb9XO4BRIfv9fhSLRSFiVKtVbG9vyyYYHBwEsFtDt7Gxgdu3b8PlcmFmZgYulwvLy8tIJBIiJNVOQVoWKnNo7PHNzmYMVbJvN3MNJpMJTqdTSGgqaQw4PL/2LIMRCnq0zz//PD799NNj134bDIa2+drBwUHhPQC7REUeDo/Hg3K5jE8//RSnT5+G2+0+kietpiVIRGGlwmuvvYalpaUWFiZHrqoGgbZzWK+Ft4HHbG2WMGnHgtKjNplMLU1CuoXNZoPf78edO3dQr9fhcrmEqMlpeHy+VqsVFoulpYyFo2fpyaqprU7WhUb49773PUxPT+N//a//hbW1NZET1WoVS0tLe65JGaHKm+MYCE8b9vsu1WpVUpBPInLEnDOwSwKkQxiPxyWSo4L786TvwePx4OLFi5idncX8/DxeeeUVjIyMoFKpIJVKYXNzE0ajEcFgUCZZZbNZaaTVCbpS0MFgEFtbW0ilUnC73fLB6+vruHTpEsbGxvDo0SNYrVY8//zzmJ2dRb1ex8bGRseLpHb+aTabyOfzmJ+flxh/o9HA0NCQHDR2HmOjfk62mZubwyeffILnn38eQ0NDACD1zyzVYRiGhBOVkVyr1eSh0kvkz9u1h2QTDW1bQlrSvQQyldlClVhfX4fL5cL58+dx48aNI9dFcvO2U9AsmeKBY9MZRmosFgu2t7dx7949hMNh6c/eCdQcI78X/2Y+aXl5GfPz8/I6u90u+0stNVOFF0OtveY983sRahmm+hq20tT+rhMYjUacOnUKm5ubSKfTiEQiUpJFr52yIBKJYHx8HF999VXbvuzcTyqBU5vq0vbrtlqtcLvd0Ol0GB0dxU9+8hMsLS3B5XLJ55Okqnp2qteuloIex1B52rCf0lO7TLrdbqRSqRONHJDbwZTFjRs3sLOzI8+VvCE1qsaS4JMgabLJ1oULF3Dx4kXMzc3h3r170Ov1uH79Osxms5SHkjCqGgndhP+7UtCzs7OIx+OIRqPY2NhAJpOBx+PB6uoqHj58iMnJSZRKJdy8eRPxeBxf//rXMTg4iHQ6jWw228K6a1c7SeWs1iwbjcaWkZOlUgnxeBwTExPSHpKKgla1w+HA4OAgVlZW8NlnnyEQCMDn80mNmtvtlpIQkjooREg2Uh8qezdXKhWpaabnzO+jNuRXlT3zUL0Ekt+Gh4eRyWTES6UXPTk5iUuXLmF9fb3jej+CXs5+ISB6zswp8gAAQDabhd1uh8FgECXu9XqFOHIYtBEVFXq9HnNzc1KSQyERDAaRz+elm5n6eiqk4/SoftbQbq8zX3iUmcHBYFAY8RcvXoTRaMTNmzdb1rNWqyEUCuG73/0ubt26dahhSDnEe9Peu9FoRL1el2YY2WwWIyMjSCQS0imOPR/U78uZ9iz5YQQQeNy+stfavapQm4XQ6SkWi8ILOiklXa1Wpc9FrVZr6ZPA+6CBYLPZRI57PB6RGUeFXq/H6OgoLl26hOnpaSwsLOCLL75AIpFAo9GA2+0Wgz2dTu/7WZ0+i64U9N27dxEMBjE2Nga73Y6VlRWxFkmKOH36NEwmE5aXl3H79m1MT09L3lrLkGPoSPt/ksFoodJ7dTqdwhZl7omdxdjJi729GfIkcWNnZ0e6yzidTsmf0kuncGUdo7aUg81PAIgxwE3AA888B78TrbheC3Gzs9vs7CzsdrsoaOZZFxYW8LWvfQ3f//738Wd/9mcdfX+GlbVeGUGFt7m5CZPJhOnpaTx48ADValU6zKXTaRSLRQlx5nI5GexRLBZRKpVEcJJZ2+lB4UEjs9xmswHYPYSZTKblOvwuaqe6XvGa9gO7+annWa2T5jlQ2dQHgTPnHQ4HEokEIpEISqUSFhYW9hhbJpMJly9fxubm5p7+xmqJlRrNarfuJIFRQTPyQp7L+++/31JDTYXE5kjlcllKe1TuAeWF2sehF3Dp0iXk83lkMhmYzWaMjY2hUCjg7t27KBaLcDqdklIcHBxEo9GQJkLHAcmgzEG3+z11B888nSeTySRKu9t1sFgseP755/H666+jVqvh6tWruHnzJgqFgoT0h4eHJWp8EtPrulLQ2WwW29vbcDgciEQicDqdElYmo3llZQUzMzNIp9OYm5uD0+mEz+eTkiQ1N6Ra1LS6SJXX1rbRSw4Gg7BarUin00in0/KQScjxer1CKsvlctK+rVwui5CmF0QWaD6fl89hG1MuKpWsSjrSdgZTvWZuBColtkB9EjWDv0k0Gg3Mzc2JYUOmLBndDx8+xPDwMLxe76GkMT7bdopcp9PB5/PBbDYjHo+jUChgdXVVlPmpU6cQDAZx/fr1PR3JOKSA7Gt1drjJZBIjsxNQ2DocDpRKJSEktlO8aptJRoM4KrVX8o9asA5eZfCSzU2o3jPXXDWUeYbYc5/pKCrFZDIp4WT1un6/H5ubm1heXt6zh1QDgethNBrbCk/mlNWcusPhQLlcxr179+QMq2k4XptGHw0yKmnVk2TDpa2trRN//r8JBINBTE1NoVQqwev1YmJiAnNzc9JPvdlsikPVbDalVv4kzgDXn3/TOTAYDJiZmUEwGEQikZAZDZTrwOP1Ax47hTTY93MmQqEQTp8+jTNnzmBtbQ23bt3C8vIy9Ho9hoaG4HK5pPVxNBptmch4HHSloEdGRiSfwFaW9BIYctza2oLdbsf09DRu3bqFO3fuSOs7dTiBmv+lYKU1quYSeGiYeOcYt1AoJJYpFWQqlUImk0G5XIbH44FOp0MymYTb7RbSl8fjQbPZFI+a/bN5wFShws5hag0jBYk2XM8QHslhHHPHa/Qi1G5aDOPS6NrZ2cEHH3wgA0oO2qwHhT0pBO7fvy/MeBpYDocD3/rWt/CrX/2qxVDQsudpLZNB2Ww2EQ6H4fV62ypo1ctjR7harYZqtdp2pCWhDs+gt8gyPRqHvQpyMEiSPMxTVNebs7KZw2aKQv2bXmq7dpw6nW7fmne1mxNljTaKp3q8qpHBvcsUCbkoXGPKAKYv1BbAnGhH48zpdMLhcPSUgfbJJ5/AarUiFApJevPOnTuyFyifKf89Hg9GR0e74iRpodfvDp+ZnZ2FxWLB1tYW1tfXZZLgpUuX8MYbb2BlZQW5XA6BQAD1eh25XA6VSkXSc4x0WCwWeDweRCIRVCoVXL9+vUWuEWxQ9Ytf/EIicyMjI3C5XKjVakImTqVSh05EY7lVJ+mOrhS0Xq+XfqUMLzCk63Q6YTQakc/nsbS0hGq1itnZWWxtbUlzBzUcrOaBtA+CIctyuSyKzmaztbTtZEtHhr1LpRKy2SwKhYIwx2lIJBKJlkYRLpdLmo4w1616cLSCaeFriV70EqmIVSuMgoR/elU5twPLWHw+H5rNZtdDyvkMqejMZjMGBwexsLDQMk9bZdtns1kpbzEYDLDb7RKarFarWFlZEUXB/cQe8NqGOup6qeNTOxlBSCVCr4lzp2k4dlpW8axC23qVz6Pd96by5vOmYWez2aSVq9rtb3h4WBQef64q/3g8jmAwKAaQyq4m1PA68Hiv0RO2WCyo1+tC8KlUKnuGNWg5JqqhoOad2e7UbrfLGF0qiZNqnvM0gEZnLpfD6uqqtGbmGS6Xy8jn83C73YhEInjuuedgMpnwt3/7t7h7927Xn+d2u/Hcc8/hhRdeQLFYxMrKCpLJpHSuZH/tmzdv4saNG8hkMrBarRgYGMD58+cxNDSEZnN3+BKjv/V6XdJWi4uLe4xoOpXb29vIZrMy850GXywWQyqVQrFYbOEctIPNZsPQ0BCmpqZQr9fxi1/84tDv3JWCTqVS0lWLlijzw8zJkrmYy+XgcrkwNDSEcrmMjY2Nlk5D9EzVUBitrlqtJqQuHmSGCtVhDSQL8H0MR/MA0bMvl8tCOGOJBcfRAZD3MnRNxazmt3mYgVaSCfMa6nQjEoiIXiOJtYP6TEqlkghMVUGrnmm7Fqva/GSj0cDCwoKEFuntsAFMvV7H4uJiS70rQ9hqrTbBDm/xeFymnxEqe1+tYT0MKrFInUFOj13NWfaS96SFVjBRkdEb5Xfn82HVBY1oep3AY4+aBi9bI6otGelpU8iymoMROi2bnuur7jHVA7ZYLHK/VDLa8DzljzY6wD1Jr4wjUh0OB3K5nJCF1OfQC+DgIfJ41PPMNS2Xy9jZ2ZFGP+xJ0S1OnTqFK1euIBKJ4OHDh7h9+7Y4fgBkGEY2m8W9e/ek70U+n8fm5ibsdjt0Op2kOEkoZqqDZVqqkef1eiV0zfPdbO6WeJZKJTnfnbSpPXXqFGZmZuD3+7G8vIy5ubmOvndXCtpg2B06z4S42+1GpVIRJjRDxlarVTzXRqMBu92OcDjcYkUyv8NyJg6YYJ0xHzwtWwpkLWuSdZAMJQEQa5uHicqdlh0VOoUnu9DQ+1Hz3vxcWuC0+ulp8fecXKUOclBz670OVfAUCgVsb2/vYS7zNQaDQbpsaaeXqR4KiYLaqTlkaZbLZdy/f19+zmhGu3vi/0kuVEt0GI2JxWL71sfSuAP2Eo9MJhNcLpdY0EzXqGA6qFf2QidkJ1XJqaWJakhYLT0BIJ3pmF5gNYX2ujzvzWZTzjvPpGos8nNVrgv/zbPL86y2jCT4fpWMpFae8PN4P263W2TJzs5OS5VBrxnqauc4yr5msynGDiOmwG71xd/+7d8il8t1VNGgGrSRSASvvfYanE4nPv74Y9y8eXPPGQuHw7h06RISiUTLVEUaVUtLS1heXhaDjvev7jPqHLPZjEAgALfbLYq4VqshnU639AA/CGykMzIygtnZWeEefPLJJ1hdXX0yjUrYG5tTq5hXIQmMbj4PEAUZ2Yt2u12Y1oVCAUajUcpiqGhp5fIhktxFshWvXSwWxbpRDxUtdHritJy5YbiB+BDpiVMpaGs4+XNuOpVsopaGqdYj36Mu1m8T9mNiEyqBRv0ZW7byORqNRoRCIej1evGiGo2GWLYbGxst+aJ2JRcquDfpZbHBDHOd7QhGJDFxT6nCWQ3FM7+tVVocSep0OmXIRi/gMOXM3/P7MjysjZho2e9qjphRLCpHKgS73S7X1a6ZqhRU0iavpxqJKrO7XWiT/Ba2EKZBT2OAfzPyxvx0Pp9vuZ5KMAV6p2kNORnMuzO1oJL/Go0GstmsdIJsBzpm+zGrs9ks3n33XeEhtTunkUgEbrcbq6urewws6gKtvOZ1VP6K0+mUqqONjQ1R2p0yvnW63VGW09PTmJiYgNlsxsrKCq5du4ZoNNrxHGiiKwWthnobjQZyuZzQ6ZlvYe6B1jPD3mqDDx441q2yfIleDackqdaKOsJRDY1ReOr1egmbqeVRqkesemi8FvA4z8DPVD1lLii9aW5Ebko1XE72JvC4ZKNcLvdU3qlbqMQerRelCiruF/6Mz495Lh4Qpk3aKTu1zEc1thiiovDQ6XQSxuSBV++F69xsNmWsKT+LexN4rAxUo4KwWCxSJsTP6xXlrKLTftvtvA7mahki5vOmQasKdK6lx+OByWTaQ9ZTzz2her0qcVBl7PKzWS6q5tApxNXUGw08esqUM2rUj1E0Vf7wM0+qFe7TBK6bzWYTPg+H6Ryk2GiUu91uSS1Vq1U5e/wZny0Na226yGw2Y2NjAz/5yU8kjE5oHS4Ae/YNHUX21K5Wq9jc3Oy4wRErPEZGRjAzM4NwOIxGo4FHjx5haWkJqVTqyATRrhQ0C/fZFYnCsF6vC4uOyo5TncjqpcCksCPrO5FIyHWBXSVNS4ybnwqRJVP01Blep3euklJUpazWJKrKQhXmQOt0HnpHlUpFrs3vwZIZlSGqHkgedA6C79T66kWoYU5V+Wo9Kh5EFTzkXH+z2Qyfz4d6vS55LG3eWl0jbR19uVzeN7ymKnSGVbkPaXSqKRgtuE9tNpu0myyVShIW66UOUgRz/uy2d9D3289r1HrQWq9aVbLcB4x2sA8B8Li7nVapa++JylJbBqZtkKNWavA6NM7U6hMtgZD7gO9nKs/pdAp3p9cUNJ8hHTZOcGODJ7V0jaRcTh4EdteE1Tdq1YuWR6Ia8ACEJOz1eoVFTYY0o1mqTOfnq/rE7XaL3iiXy1haWmprcGtBI83tdmN8fBzj4+MAgJ2dHXzxxRdYXl5uex2DYbd3eCQSwaeffnros+1KQdtsNgnZ8YGxZljN9ahhIzUfS6+JRAr1gPHAMYfHL0MBabVaW3K/tK70er3kCBwOh3jsag6Knjj/z/vld6Cnr1q8jUZDSBBUDgCErq8+cEYHOAs4l8tBp9ttbMINcOvWrW4e9VMPrWLsFp3kcZhrdjqd0nwgFou15JDbgREXXv+gKUb0qLQgm5dd5miMacN0bAdJ5c39mM1me7rumaABqqYODiLNqMav9tmojX8AtExK4+/5XPk5KilJZYUD2KOc1TCzdn45lTC5AjTk1Xpnfl69XpeqAjWdp6bJSDJi18JoNIqtra1j96h/2lGv1yWMy4gi//BZUpbSUVKdHUZm25EqVZnOKYZutxvNZlOG2dBQtNlsMsiFMp+/Z3qSBjRbRXeilAOBAEKhEILBIIaHh6HT6RCNRnHt2jWZL90ulM8paG+++SauXLmCxcXFJ6OgSbRR6325gVkvqFqpDP+qRC2VvEVCGfPItDjVcLI6mYT5YnrmKtlMDS3xoHHxeS2V1UmLnYebTVUY/mLIlHklNYTNv9k0JZvNwufzSb6RC8oD3GvohCR0EA46DAx7qq1X95tGs991tAxc9dr8mRr2dDqdMrIUgCjldt+RQoaRFYa5SQL7bYmYaBUxDdt2UL1jnn+ebZUopio5yhRes1wuS7WHyWRqqcRg5OqgGnX17BPqPnY4HJJ+UWUOoZ2epuWfsJFNs7lb8sMRh6yh7zVw7+/3zPeLGqnG/X6GvjYqQeXucDhkFjy7B2azWXHqGK1iFIOkYBKZ1WjeQXuFfxwOBzweD8LhMEKhENxutzQjuXXrlrS81qbsdDqdGAlvvfUWvv/972NychKxWAw/+9nP8NFHH3X0jLueZmU2m0WxUmHxy6rWK0OEKnNSSwIrl8vSMtFisQgRgwpdDT+p1jIVMw+HSkigEFCvo5K9GO5UGb98PUOg3DRqqQbBOdBsasC2l2wvqYbrGfLpxRrYbsO1qiA8LBxK0pX28HMtaXmrtaiqxa097CqngPuURDbekzqAg9dQ/8+QmLqHisWisFIPs745trTXwtwqtN9Nu+ZqmZRWeKsseTWkqSpI5oNZPaI1BlSWPWUBFTLLIMmHUfkrNAL2a8Wpks6Avc1wWFIYDAZRq9WwsbGBtbW1FqNSVea9YsBduHABhUJBUg4MUx8G7TlTQYWqpjkZEqeTxXkMajklwT3A6qDDwEin0+mUhjKhUAihUEjkFA3w9fV1fPXVV4jFYlJ7rQU7mV24cAEvvvgiBgYGEAwGsbi4iD/5kz/BV199haWlpY7HMHeloI1Go7TU5Kxkq9UKr9crnjEtGRb7q52VVOuF+QH+YScuVZmqSpQKWGX7qUKa3jMtZb6Wng4/n8qTwp8hbbVkgkYEBTmJMFTG9OTVnBRbE7I4n1EBCoLfdqibmfuAClMVWKyPV19HHNZGUuUVqNdW89wUzgfdHwDZO/yb1yVD9yDPoR16LYrSLgSphbqu+z0rlZDH/6vrRfDc8vyTEMrzqIY/2/2MTXQA7DH2Ca3xRzmi8mfYjarZbGJoaAi5XA5OpxOFQkFm//LsUx7xXnrNOIvFYnA4HBgfHxduAMto2Za1W6gGDJ8buSj83XGiEXTaBgYGEIlE4Pf74fF4ZH+xwmhnZwdra2tCIq1UKvsO/NDpdHC73fja176G7373u5iZmYHBYMDc3BzeeecdzM/PY319Hclksuu0V1cKOpfLSXkUSVqZTAbxeBwGg0GIEMDjw0VvG4AoLI57JJGq2Wy2eN/AY0KASrhgo3MKX4YhSOphHpi108xFqhYwBbyah1a9cQByL2TfDQwMSD9v5jdUJcPnQcZxO2//tx3tNqW2JIbrvF8pgrb2UetF08BjekL7+ft5LhTGJLbwWtxXXNdezyd3A9Ug0kYb9nt9O3DN24WUVUNK9YxUtCuN1DbH0fJjtJ+vkkW1zOtmsyncEqY0AoEAtra2kMvlRP6pBoYaOewVb7kdtre3xYGx2+2Scw+Hw0ImZl9qkuoOiyIdh0yp5rvV5iJmsxl+vx/BYBCBQABer1ciYJzbHI1GZVYEddNBa2ez2TA4OIjJyUm89tprePPNN1GtVjE/P48f//jHuHbtGtbX19uGv7tBVwqatc5UOnwIwO7BSKVSSCaTEg5kOJw5JxLD6HkTammFNvyphhloxar9salo1VpU3qMawlYVppqnVnPilUoFhUKhhY3NEjCr1Srzr3kNRgw6afPWx2NQYB5WAqGF9vlqvZJOLWvms9QDrJIbGTrrpk3pbyNUxdxJXnE/HMcjOuy97RQ2jXE1qqEai83m7phSEmBHR0dx//59McJXV1fRbO52lFKVeyd7uJfAiFS1WkUul0MikZCmPZwKGIlEMDU1BQCi/NRBM6rhqypvtYkNAIliMbLJElg6gNQ3LG1kya8ajSPTe3V1FYlEAul0GoVCoYWkdhCCwSBeeuklDAwMYGBgAC+99BJ8Ph/u3LmDv/iLv8D9+/cxPz9/JE95P3SloAluepKraDVSafP3hUJBvEc+TFLwubGpXHldKl3+X93sZHiTvKMlfKjWsmoBMW/IQ0jviKHrRCIhJA9agurs51QqhVgsJvkqEg7U++ijc7R7Xk/qGaoEE7Lx6XWxvSTzSaqA7qM7aEPF6vnWlk79usDPVhUxIy5q1I737vP5UK1Wkc1mEYlEsLS0hHK5jPX1dQCPR47yOipBbT/+w28TqBOYI6byZH00K3H8fr9EIyibKYuB1igEQQ4BU6FMN3Bf0XmkfKauoMPGv2l4H2ZE0Zn0+Xx444038MILL2BychLDw8O4desW7t27h7/8y7/E6uoq1tbWpP76pI2zrhS0drMD7Qkf6uGk4lYPCze39iCrm7xdfas2z6jmnlWWNgvPAbSEtBnyVsdeBgIBBINBOJ1OKZFhrpNdqtjuTWtld/rM+njyUBUx9xf3hU6nE0+rVCpJ+Pu4TPQ+9of23D4pqPJDZejTAAMel8Yx163T7XYjY07R6XRKZIxyQZ07Te6J6hD8tnjJR4GqE8rlspSkqY4cG0UxyqqWYfG1arpBjaLyM6iwqXT576NUUjgcDmFpDw4O4uWXX8b58+fhcrlgNpuxsLCAf/iHf8Di4iLm5uakH/eT3gdHavXZyU3tp5i0xePq67UHWc0DEbS4yJZuNBqyyLSQyBhV31epVGC1WuH3+8VKZu6YYXq+rlAoCClADbkcNZdMAkUfJwOVQKjlEfCQMoTGsot2SuLXqZz7htr+2O/ZtDPUVcNe/ZvnU/ViKNj1ej3cbreQN8kKpkdMpayO/+N4SaAzsttvI7o1vFS+gTqbWf1b+++DGN/HMfwMBgNCoRCee+45XLx4EdPT0y2z4uv1Ou7cuYOvvvoKKysr2NnZQTqd/rUoZRVdKeiXX37511bnqbKq1VINm80Gv9+PwcFB6HS7856ZB06lUrDZbFLT2mg04HK5ZHxlsViU4nXmnZvN5h5mrjY/qiqCo8BgMOAv/uIvjvdA+gDwOCWi0+nalto8rSHGp/W+ngYc9Gz2E8paprdau0zSUiqVEiWuTlYrl8vS8IbXUL03em5kdD/pKMCzipNQVE8yNaBWGjkcDgSDQUxMTODSpUs4ffo0gF2jrFgsYmNjA3fu3MHDhw9lSpbaC+E3tf5dKehvfvObsNvtv5ab1SpoCmaPx4NQKISRkRGpPaaCzuVyMBqNMuuTYSvmK/jQ2VCFD18Nm+yXw24X3u/0ezidzr6CPiE0m00h5D1LQrNPIjx5tBvAATwe4qAKf20vZNUj55nvpPyuj6cTapev4eFhuN1uOJ1OuN1uUcylUgkLCwu4e/curl69img0irW1NSQSia6HWPy60JGC5ib9T//pP0le59cJ1YNmKFNtraiWSamDEUhU0+YpqHy1BDOiXTmG+tpu4XK55LrPKp6me38Ww4yq8H+anmW3eJrufT/PthtD6DflHT9Nz7FbPG33brFYMDo6ilOnTmF8fBxTU1OwWCzY2NjAgwcP8Omnn0r73Xg83tIx8DeNw55lRwqa/WMXFhaOf0e/xchms/B4PL/p2zgSer2H8K8T/X1wMniWIxL9PXByKJfLmJubw9zc3G/6VrrGYftA1+zAHGo0GtjY2IDL5eqTXY6AZrOJbDaLoaGhY3niv0n098Dx0d8HffT3QB9A5/ugIwXdRx999NFHH338evFsmnB99NFHH3300ePoK+g++uijjz76eArRV9B99NFHH3308RSir6D76KOPPvro4ylEX0H30UcfffTRx1OIvoLuo48++uijj6cQfQXdRx999NFHH08h+gq6jz766KOPPp5C9BV0H3300UcffTyF6CvoPvroo48++ngK0VfQffTRRx999PEUoq+g++ijjz766OMpREfjJvvTS46H/gSbPoD+Puijvwf62EWn+6AjBb2xsYHR0dETu7nfVqyurmJkZOQ3fRtHQn8PnBz6+6CP/h7oAzh8H3SkoF0uFwAgFAqhWq0in8+jWq3uXsBoxODgIMxmMxKJBFKpFLqdYKnT6VreQ6tMex2DwSCvtVqtsFgsqNVqyOfzqNfrHX0O369emxbMUQbAm0wmBAIBBINBBAIB6PV6xGIx7OzsIJlMolKpyGv5HJ9FHHTvZrMZtVpNnp/T6UQulwOw+2wbjQbcbjcymQwcDgfq9TrK5XLbfWIwGOByuZDJZGC32zE6Ooq5uTk0Gg3YbDbkcjk4nU40Gg3UajVUKhX5DJ1OB4PBAACo1Wrw+/1IJBIAALvdLp/L+7JYLBgaGsLq6mrLOhmNRni9XpRKJQSDQWQyGSSTSTSbTbhcLjSbTRQKBTQaDej1etlP7faxTqeTgeyZTAb1er0n9sHIyAi2trZQq9Vafq/T6RCJRBAOh6HX65FOp7G5uYlisdjyOq5zLpfbc412GBoaQi6XQ6lUQjgchs1mw/r6OgqFQsvrjEYjLly4gOnpaXz++edYWVlp+d3bb7+N2dlZJJNJfP7557h//z5qtRpcLhesViuSyWTL/ej1egwODspnVyoVGAwGmM1mlMtl1Ot16HQ6OBwOGAwGlMtl2QelUmnPs+H+6IU90A4mkwk2mw2ZTKaja1mtVlSr1bbyW6fTwe/3Ix6PAwAGBwcxNDSEtbU1ZDKZlj3lcrnQaDRQr9f3PPf9QLlBBAIB1Go1pNPpPa+1WCwYGBiAx+PBwsIC8vk8zGYz/H4/ms0marUabDabyEJgd78Vi0Ukk8kWeedyueB2u7G+vn7oPuhIQVNh1ut1FAoFVKtV2ZSRSASBQEA2aqPRkAdVLBah1+thMBjkZ6oAczgc8Pl8sNvtKJfLqFar8Hq9CIfDKJVK8iD0ej0GBgYwMzMDo9GITCaDUqmEer0Oq9WKVCqFxcVF5PN5ALuH32q1wmAwoF6vI5/Pi9D1+/0ol8tIp9PQ6/VwOp2YnJxEtVrF3NwcEolERwKDqFar2NraQiwWg8PhgNfrRSAQwKlTp5DP57Gzs4NUKoVCofBMh4P2u3eDwYBardbyeyrLZrMpB6BUKsFgMCCfz0On08FkMsleqNfr8rp6vY6xsTHk83ksLi5iZWUFTqcTxWIRwWAQlUpF9gT3nN1uRz6fh8/nQ7PZRDKZBADk83lYLBZUKhU4HA7E43HY7XbUajXUajVUq1XZw6ogr9VqiEQi2NjYQCwWQyQSgc1mQzQaRTabhU6ng8ViQblchtFoRLPZRLVabdnbJpNJ9nwqlUIgEIDT6UQ6ne6JfVAsFtsKVafTCb1ej2KxCKfTCZ1Ot+c8mUwmmM1mVCqVFmFG2cHX2O12ZLNZue7U1BScTifC4TAKhQJyuRyKxSKazaYYSvV6HblcDsPDw8jn80gmk3KNQCCAK1euYGxsDPfv34fZbIZOp4PX68V3v/tdBINBfPTRR7h586bcq9/vx+TkJFKpFOLxOAqFAur1OoxGI+r1usi0Uqkk8s9oNO5R8o1Go60T8izioHuvVqvivPG1XOt2BjmVqXb9gV0HjcoZADY3N7G5udn2c/P5PKamphAMBvH555+LHNHr9SJ/adRbrVYAu/uh2WwiFouhUqm0fJYW5XIZKysrCIfDOH36NGKxGFZXV7G1tQVgV5cBu86K2+0WOQUAExMTqFariMViyGQyyGazsicP2wcdKWgil8uhUqnAZDJhYGAAAwMDsFqtInA9Hg/S6bR4G0ajEQ6HA1arFaVSSaxli8UCn8+HiYkJjIyMwGKxwGq1ijfKA/Hw4UMkk0lYrVacO3cO09PTyGaz2NjYwO3bt5FIJDAyMoJEIoFisYjl5WXU63Wx4gwGA/R6PUqlEvR6PXQ6HVwuF4aGhkSZjo2NYXJyEs1mEzdu3MD9+/exsbGBR48edeVR0/LKZrOIRqMIh8OymKlUCtevX+/mUT9T4MHjOtOy5ebT6/UtHioVN6Mg2Wy25ferq6sYHh6G2WxGPp8XLymbzcJqtaJSqYhypjfLv71er1yHhoNOp8Pw8DCSySTMZjOMxt1tn8lkMDc3B7/fD6vVKtY8jQNawOl0Gs1mE+FwGMViEalUSgQyPeJKpSIeFT+bQqfZbIpB2CvgM9HCbDaj0WggmUzKuVSVMJUojaxAIIBQKASn04lCoYDV1VXUajUMDQ1hZGQEy8vLWFtbQ7FYxMjICAYHB5HP5/Hw4UPE43G5B5PJhFqthnq9juXlZXz44YfY2dkRIQnsKnl6LOVyGRcvXhTD6cyZM6jVarDb7WLYA4DX65X9arFYYDabZb8ZjUZRPOp3pOLmfdGrYvSml8GzxTPPyJLX64Ver4fRaEQsFmtr3Pn9fnmmmUxGnqnP50O9Xj/QK280Gpibm8PCwoLI7Wq1Ks7h6OgoyuUy1tfX0Wg0RGEGg0GcPXsWOzs7LcpfGw0jotEoqtUqRkdHEQwGsbq6img0inw+j3w+j2KxiEAgALPZDJPJhEKhgM3NTTidTgwODsLr9SIWi7XsywOfZ0ev+n+oVCqwWCyYnJzEyMgIqtUqcrmceBKqBaTX68WqoGI3Go0Ih8OIRCIYGBiA3+9HKBSC2+2W8AAfqNfrxeXLl1EqlWAymRAMBmG1WmE2mxEIBOByuVAulzE5OYmVlRX4fD6EQiFsbW2hUChI6NNkMmF0dBQejwcDAwMYGhqCTqfD0NAQQqEQHA4HPB4PfD4fxsbG8PbbbyORSOD999/Hxx9/jNXV1T1hNMJgMLR4icDuRikUClhZWUEsFkMgEIDb7e7mMT9T0EZOgF0FTA9ZexCNRiMMBgMqlQoKhYKEqYHHhyKVSu0RZvSYDQYDbDYbSqWSCEm/3y9Kc3t7W67l9XrRaDSQTqeRSqVgsVjkkFOQcK+YTCYYDAY4nU7xAorFooSxeaDD4TB8Ph82NjbEm8pms3C73TAajXLwKAR473wuvQIaP2azGdVqFY1GQwzjUqmEVCrV4kUaDAZZ92azCZvNhpmZGUxOTsLv9wPY9YKCwSByuZysTzAYRLlchl6vx9raGrLZLGKxGB48eCDyKBKJwGQyYW1tDfV6HdVqFQ8fPkS1WoXZbIbH48Hg4CDeeustTExMIJvNolarYXh4GOfOnYPFYsHW1hbm5uZQKBRgt9tlbRcWFrC4uAiz2YyBgQGEQiFxNhhO5R5nNEeNFNKBOUr67GmHTqeD0WiE0WhEtVqVPaFGQarVKkqlkoT+bTabvF9NFdRqNeRyOZjNZgBAOBxGpVJBpVKBx+OB1WqF0WhEOp2G2WzG+Pg4PB4P4vE4tre3kcvlJOpSLpdRLBZbFG4+n5dUFOVNuVzGxsYG0uk0xsbGJNo2NDSE8fFxpFIp3Lp1C7lcTnQAI3TpdBo+nw8XL14UgzGbzaJQKKBYLEoYG9g1WkulEqrVKux2O0KhkDgUhz7jZgdSI5PJwOPxyCYdHh6WnGI0Gm0ResztmUwm8SYZSgwEAhgZGcHIyAgcDgey2SyKxaJ8MQr5ZrMpi8eHYrfbEQwGMTIyglAoBIPBIOFwGgflchlLS0tYXFxENpuFwWAQocGDE41GMTc3h3g8DrPZDJvNBrfbjXA4jNnZWVy8eBFDQ0PIZrO4ffs2PvvsM3zwwQfY2NjYc8hsNpt8j/2sY27iarWKdDr9zCpr7gFiP54AlSw9VzXcDTw+lFSwKtR8rvbn/NNoNEQpVKtVWK1WCX3H43FJe2hz3Ko3rwpUbTjSaDTC4/HIHo7FYsjlcrDZbLDZbCgUCnC5XLLumUwG1WoVer0eVqtVwt3qZzQaDYnm9Mo+4HMym83Y2dlBvV6HxWKBw+FAOp2W7681YnU6HQYGBjA7O4vTp0/Dbrcjl8shkUggk8kgFoshkUhIhILrRv4JlWKpVBJewuDgIJxOJ5aWlhCLxeReTSYTxsfH8bWvfQ0zMzNwOp3yHRYXF1Eul2G326HT6bC6uorV1VXhjdTrdfF6aWgxvM4oTC6XQyqVQqVSEQVlMplgNBoltG8ymQDshnLVfdYLe4D7gNEj5ud5xmw2G6rVakt0DADcbjd0Op0YxkydqufVbrfDarXKOqgpM6vVinA4DI/HA5fLJbLa7/fj0qVLyGazuHPnDhKJxIFGMZV5vV7HyMgIIpGI8AzcbjdcLhdCoRCy2SxWV1cxPz+/h0vhcrkwMzOD8fFxrK+v4/r167JfPB5PS9652Wwil8vJd2d07qB90JWCZr7Y4XDAbrejUqmIgtbr9XC73QiFQrBarchkMlheXhbrd2RkBENDQ/B6vRISXF9fRyKRaCGdAWgR0uoBZRjd4/GI4PN4PDh9+jROnTqF4eFhmEwmpNNp+fKpVAqxWAzJZBK5XA4bGxtYXFxELpcTQ4CCxWazIRKJ4Pz583jjjTcwNTWFYrGIjz76CD//+c/x5Zdf7smv2Gw2WK1WiRIchF44lECrR6iu035byefzteRkDnptJ9Aqf0ZKDAYDCoUCLBYLms3moSFFErhocRPkTdAQJcdAr9cjGAyi0Wggk8lgbGwMOp0Oi4uLqFQqQlKjQq7Vai2GCbAbceiFfTAxMQGj0YhoNNpCquHa0lBnrp+/O3v2LF588UU5w9lsFmtra9ja2kIqlUImk0GlUmlR6FrQAKRXbrfbRWFmMhn5fSgUgs/nQyQSwdDQEAwGgzgFqVRKuCnValV4LcyLc1/pdDqJpgCQMO3s7CwCgQDS6TR2dnZQKpWQzWaFn6N9DjQoiF7YAzabreXc8bzxu5vNZgn382fBYBAXLlxANBrF4uKi5KDbRRj2cwKAx5E4p9MJq9WKbDaLZrOJgYEBeL1eGI1GpFIpSbFsbW3JZ7hcLlgsFjGWGYljhIQEX5LUIpEIpqenodfr8fOf/xzxeLzlfvV6PSKRCC5duoRms4kPP/xQSLL8Dg6HAy6XC4VCQRyIVCp18gq6WCxKmJEPttFowOl0wuFwoFwuIx6PSxIc2LVkT58+jeHhYVQqFaTTaWQyGVFq2lto55Xt93+GU51OJ0KhkNwX83489LRg91OiNpsNFotFDubAwABeeeUV/M7v/A4GBgbw8OFD/N//+3/x/vvv7wlN8Hkw57AfIaIXDiWAFg9Bm39uB6fTiWAwiKWlpSd2f6o3rNfrxUsHHu8nLWuT9x0IBLCzs9NifPGaDodDDL/FxUXUajWcP38eS0tLyOfzGB0dhV6vRzKZbGEAM6edy+WExU4ORi/sg6mpKSSTyZaqDUYRSNDMZDItQntqagr/+B//Y4TDYaytrWFlZUWIP+l0ukUxE4cRq/gzEoDU1/NMMzVCo06v10tYlR4vc4bMj9PgYuSGoVGur9/vx9e+9jX4fD4sLCxgfX1dCGnqd3C73fD7/S15R8qmZ30PALv7fGBgQL4TUwPqM9DpdFINUS6XMT09jVKphM3Nza5C/50a9kylkmRIxchqH5PJBL/fj2w2K1E3YmBgAD6fD9vb23uMvVOnTuH8+fNYXFzEJ5980qLjeH+vvPIKBgcHcf369X3lnc1mg9PpFOP2oH3QVQ66WCyK0CsUCjCbzeJ5OhwOeeiqEmSOyOPxiMedSCRQLpf3XRweJApbeh9ai0olnCSTSWxvb4vFpobLOwFz5PSANjc38c4772BxcRHf//73ceHCBfzgBz+ATqfDr371qxYlTcY6CWilUgnr6+sd0/2fNbRjuR/0nHO5HOx2e1sFeRg6PZQMLQPYt4yL4VZVodA78vl8iEajLe9hSGpxcRFjY2O4dOkSvvjiC8zPzyMQCCCRSGBpaQlOpxNjY2PweDyYn58XVq/ZbIbT6UQmk4HRaITT6UQqlerq+z+t2N7e3hOWtNlsCIVCqNfriMViLRGM6elp/PEf/zFOnz6NhYUFbG9vY35+HtFoVAyXdoY6w5pqCV2712grRIBdeaUNSWrBvCD/kGim/qFSZ8qtVqsJ8fPs2bPy83K5LIYA//j9fmlGsbOzg1qt1lNyoVKptHivDBnHYrGW76nmpufn54/0WSaTSYyrg2QCdQKdxWQyKWH3RqMhZC5GAhmB4307HA44nU6J7DYaDclzZ7NZvPbaa4hEIvjRj34kuo7Xunr1KmZnZ3Hp0iUEAgHcvn1bzgGJkMViUZjkh6ErBa0NQzPv4HA4hNyjEn4GBgZw9uxZsRZWV1clDKQqWVXx8t8UnMwTa3/PhaDFpr2/bsFcBx+0TqdDsVjErVu3EIvF8Oabb+LrX/86fv/3fx8GgwHvvPNOy+fV63Xs7OxAr9djeHgYtVpNSCu9BjJV1fB2u2dvs9lEQDJE3K2CZgiyEzAkqQpVi8XSEp5Uw4/0utPpNEKhkBBWtKhUKlhYWECxWMTzzz+PmzdvYm1tTXgY9CJPnTqFqakpbG5uolAoCOu82Wwin893fCifBWhZqCTrGY1GxONxeeYGgwGXL1/Gv//3/x4jIyP44osvcO3aNTx69Ahra2t7Qr9aqPvMZDLJ+hJU4EclYakpCKvVKoZCtVoVJ4IGAMPb/P/6+jqi0SgmJyfhcDiEsc0IQrFYRDQale9I0lMvgaTYWq2GYrEoeWntGtVqNQQCASFzHhXkERx0Da6fz+dDoVBoy3dR3282m2E2m6HX66U0lpUdlD08w/fu3UM+n8eLL76IH/7wh/jxj38sUeWxsTFsb2/jwYMH2N7exttvv43R0VH84he/kLptl8vVVUVHV3Uf7awWstG4EYHdze73+3HhwgWEw2Fks1nJMWnDv/vlGXgw2tXG8fdqWctJoF1omgfx7/7u7/Duu+/CbrfjG9/4Bp5//nmxnNXXbmxsYH5+XkrJeqm0htB6O+2IXarSpvXc7VpRgXZaM0oyIYk5LP/j+3nfNptNyrEsFguA3bAd/90OjUYD6+vrWFtbw6VLl+B2u5HNZmV90+k07ty5A51OhzNnzsDtdqPZbEqd7nGUyLMAj8cDh8OBVCrVEvo7e/Ys/sN/+A/4xje+gUePHuFnP/sZrl+/jtXVVWHJa6F6zqoCdbvdQuri646yr7RQeTUs/bNarXvOLu+HZFhgV2ZsbW1haGgIL7zwglSbkJzaaDSwtbWFaDTac8qZz4AGSLVaRTwex/r6esvZt9lsLbn6bqASBem00dDeD8yJp1IpTE9PY3x8HA6HQ0p+tWA+2mAwIBQKyWc6nc6WqA3THEtLS/jggw9QKpXwu7/7u1L5sbW1hUgkAovFgmQyib/+679GuVzG66+/LoQ38jU63QtdaQ/tYVKT9Cpr1ev14uzZs/D5fFhdXRVS1kEHiV4NvWvmspgXVkGL7Dge837fTy0VUj32dDqN9957D++99x4cDgfefPNNXLx4cY+SbjabSCQSyGazGB4exsTEREtpQa9Ca3RxjfZ7TafXJOGq09fX63Up22s0GsIGBlq9MTYxMBgMMBqNKJfLQng5CMyZnjlzBlarteVMlEolrK2tQafTYXJysmXftmOz9gpY3QGgRTm7XC78y3/5L3HlyhVcvXoVP/nJT3Djxg0x5g/aDww1E3a7HX6/v62CPi7YJcxkMkkpJ8t6tKBcUJU0Wb6Tk5MYHR2VJipGoxGhUAh2u/1YpMinFUajUeQzDSX1zJvNZoyMjEjnv6OsFXtpMD3F8PRBz5Ofw6YgAwMDGB8fx8DAQNvOXfSySRqkkc+9oNU/tVoN29vb+Oyzz2AwGPDWW29JE6bV1VXZt8ViER9//DG8Xi++8Y1vtHw2SWSH4UjuHWucBwcHMTExAb/f31LG4nA44Pf7sbGxgZWVlUOVMwARpiSOsaRBtWJU9u5hi3QU0ELa77rxeBy/+tWv8Nlnn2FoaAhvvvkmXn/9dZw7dw7BYLCF3cyuU3xGvQSVWd8O7CAFPC6d6hQkGhEk83QChh+z2ayw67XePg/Szs4OAOD8+fP4J//knwCA1PIehEajgeXlZSwsLOD06dN7jK9SqYT5+XlpTKC+r5dyj4TRaMTU1BQGBgZaSGEA8MILL+Af/aN/hLW1NfzlX/4lPv74Y8Risbb5ZqB9PtlkMok3qjb72C/vDDzOKTJsqTWiVZDsWK/XxdDwer3Sl+GgCBhzoo1GAwsLC0gmk5iYmJDOWXRgIpHIM0sIOwjsNeHz+eDz+fbIA7XU6qiy2mq1iqPTaT8BNcq6vLyML7/8EtFoVKoxtKBuIoeA8ocRlXZ7oF6vY3NzE5988gnMZjNee+01mEymlrI8YNexe+eddzA4OIi3334bgUCgo+9AdKWgWRvKD2CRuhqG5OFIJBLS5OMwy0kNQap/k0HJ1/B17dieJ4X9Dj2RTCbx6aef4sGDBwiFQnj99dfxyiuvYHZ2Fl6vt+W7rK2tddRv9VkD2a3cA1oLk7V+QPdeMwlBRwHzzpVKRTwYNfxuNBrl8G1ubqJareLRo0e4fPkyrly5In2+O8Hm5ibi8TjGxsb2eFqpVApzc3MIBoNwOBxSN9trXpROt9uhja1yVQKczWbDH/zBH8DpdOLDDz/EJ598Iiz3wzxnnm2DwSANjarVKpLJJPL5vISa97sOQ9TNZhMWi6Wlfl8FhbHX68XMzAxOnTqF0dFRTExMSBkRSV/7gfu/UqlI72+VsGg2m2G326X0p9eg5unNZnNLmshms2FpaelYxEg1jXlUDketVpOudoedweXlZeleSO99PyONKc0vv/wSkUgEs7OzbV+bSCTw05/+FMViEd/61re6GjTSlYJ2u93w+Xwwm83CcI1Go0gmk+J96PV66VvM7i2H3sT/85rYx5cDMBh6Uq9xUKnUSUAbptGC3vGHH36IhYUFeL1eTE5OYnp6GuFwWIrwgV1DYmVl5YmWF/0mwNI2lein/b2aKugUFHbdCDLVcCNhBYC04FQ93HZe7Pb2Nn784x/j+9//vgiATgyEZrOJzc1N1Go1jI+Pt9wPAGkdGAgE4PV6DzzozyrMZjMGBwdhMpkQjUZbKhteeOEFvP7661hbW8O7774rFRaHQd0vVqsVY2NjcDqdEl2jN3bQtdTXtlOwRqNRPGRgN/2QzWYlJD06OipdBg/yvrXktY2NDXzyySeIx+Mip5ibrVarB3IcnkUwmpnJZJBOp+VsWSwWqdo4ahpSzfFvbGy0cJz2uxe/34/BwcG255e12Orr26HZbEokqFQqwW63H5iirNfrWFtbw+3btzE8PLyvgb+1tYVPP/0UNpsNf/iHf9gSXTsIXUkMhppooVYqFalhBHY3ujq5pxsvlyHzwcFBye1pmcIMbR+FCdyN0N/v+sxJUzh/9tlnMg3H4/HA6/XC7XZL20dei+HUXoM2z8zGEUeFyoA9SDBq70FbFw/sHhy73Y7Z2VmJ+uxHKLp27Rrm5+cxOTmJer3esRfNKInT6RTSmdvtlnxZNBpFLBaDzWaDy+XqOQXNXH82m8X6+rr83Ol04q233oLX68XHH3+MGzduHJg6UqE+Ixo1atROSx5rB9W7NhgMewS7ShwEIG1cG40GpqamMDIyIixem812qMHGiBIAaXYCQHo9qNUuvRTqDgaDUpbKZ87vGggEjtyQyGw2Y3h4WFrA7sfE1oIpEJUkqsLn80n76YOuValUZDgK21gfdHZrtRoWFxextLSECxcuyGeQpMrPi8Vi+N//+3/jzp07GBsbO+Qp7KIricHSEZ1OJzWDqjKzWCwyUKCTxvBqroBTRnw+X0sOk18UgLTTe9LYL8zKn7HUY3t7G3Nzc8IADgQCMJlMsFgsGBwcxNjYmCxWL6EdAQyAEK6OCrJBOx0fqt6PujaqFxsKhQ5NMVSrVbzzzjvSz7cbUl+5XMbOzg4ikQiMRqPUPzOsXSgUEI/HpX1oL4Hs15WVlZayq6GhIVy5cgXb29v4/PPPEYvFOhbU3EM0yFOp1B6DudO9we6DWuHaLjzOqFA4HMbg4KDkHzk84yBojUTeo9p/mczuXtoDfr8fwWCw5cyTtc2ZCEcBCWWMzgDtK2wIGsQcCws8TmfRk+frOj3b7LF/UCpFRblcxubmJkqlEkZHR2U/WK1WicgAu8SxDz/8cN+pXFp0XWbFOD4LrlVwpipf0+mhJDuPfXB5qFTvudncO1+1U3TTsISvPww6nU5GkC0vLwOA1NKmUilUq1VMTEzg/PnzPaek94tIkGR3VLB07qD5sO3AvcaDyEOdy+VaptvsB16XDEyfz9fVfZN44vV6pW2oy+US4iB7TXcaFXgWQBJeKpXC5uZmS57/jTfeQDgcxrVr13Dz5s2Ozy2NK9Ybl0olxONxacfYKWtbp9NJhziOvuzkPewpTcdDHVt7GNSGSoTaZZFTnLTdp55lPHr0CNFodM9oTe6No4a3a7UaotEo4vH4odEsfp7T6ZQWv2oahExsYJcb0il7Gng8OpMNrA5DPp/H1taWDIQiYbVcLuPy5cs4ffq0NFpRx9se+P06vlvsWkzM3VAJq4xer9crIR3g8FweFS8fJnvpcsG1Yaij1jt2Yyy0ez3/387qZolFIpGAz+fD8PCwdA16+PAhjEYjhoaGjnTfTyuYzyGJjyFDCqInBW0plxZU0Nwn7AB0mIDW6/VirbOX92FsbhXVahXRaFRCfsCuccCUBwAxPnsFLJ9JJpMtz9fv9+Py5csoFov44osvsL29fSRCJ9nVLJXhNQ6TAXq9Hl6vt6XxTCfPnd0AOQbT6/VK++JO90K7ummGZ9UKlF6BtnRKJQgf1xDh8Bu141c7kEXPkcL0puv1OiqVSsu5q1QqXTl5jJJ2qtQbjQbi8TgSiYS0AAYgfcdnZ2elHLFTdKWgA4EA/H6/tE0zmUzw+XzweDxCGtL2oj0Mals8elBqOIPeekejuY7I/tVCW5yuQkuMorXHvrJsa0rlMD8/31N5JwASzdA2kKFw+3XdA9AqFMlZYIqCqYhO0iJkoNZqNZln3g3YS5oHkBOOBgYGYDAY9gyyf9YxNDQkAkmNdF26dAmDg4NYXFzE7du3j1VaRoIVmd+HKWd2M2OqiSNN9zvDKkjqajabouC9Xq+Mi+T7DjP2tfs/k8kgHo9Lf+he6ibXzqs8TklVu2sd1GmO7V951o1GoxhTakkW339YLrkdqOg71WmVSgXb29vSSZP3wFGpHLDTKbq6Wybh0+m0tFLz+/1SCE5CxkktEK3obohh7b58p6ExgjkwlR2sfb/6ew7lTqVS8Pl8OH36dAtRqNN8w7MIi8XSwrj8dXiJPp9PcnnqOrQTxOq83v3AnDqNTLYu7Aa1Wg2xWEzKaZrNJra3t2Gz2WQCVi8p6EajgdXV1ZbugadPn8b09DQ2Nzfx4YcfYn19/URkAcl9+51hq9WKUCiESCQiZD113vhhoHzgay0Wi+xr9uPmazpNlxDs71yr1eB2u7uKzDztUMlYPp8PV65cwYULF35t39Hr9eLUqVOYnJzE2NiYTEpk62kt2K61EyWtdq1rN/xjvw6HzIXHYjF4PJ4W8uC9e/cwNDSEycnJjr9jVwp6dXV1D92dm1an00mN4kmA1lG3ZKEnVWt60LXZwi2RSECv18tYTWD3+USj0SdyT08DmKPptIlAt9AeKJ1Oh0AgID3euT9UMpC6Vp3ejzp+9Kh7mFEerj3LEMfHx+F0OnuqDnp5ebmlvnV0dBQvv/wyXC4X7t69i2vXru3p130UqERSLUwmEwYGBmTULI2jWq2GXC7XVTMjNfICPFa0NPDowXOP7Cfk2ykA5rbJCu8VMJ3FZ8e69V8X5yaZTGJtbU3SSQCk74bal0OVC7Va7cD1I5rNpnCqtJEC7V7RolqtIp/Pw+l0SmMSYLek89GjRzh//nzHPJeuEobxeFz+zRF7iURCyky69Z72OzzMb6pW7UE4yhCGg8DcuEpaOQjMNSUSCQwODsLj8SAQCMjz6iXPSYtarSZM1yeRX2vHB1haWsLExATOnDmDhw8ftpT00ajrpsSDbOFarXZo16mDrsnwuJqH39zchNfrRTgcPlED9jcNNQ2g0+kwPj4us9jn5+ef+KAYvV6PsbExmdnN/svr6+vIZrPIZrNtP5+lgFo+g9VqRTAYlPIqtn1VK1XoNPD97aJqvDdt+oc50l4iCqptdCuVCm7fvi1DRk4a2rNHErE6upg6SDvUiUpaO0znoM/IZrPSx0PVB7zmQeeYteG5XG6P7mCXwZGREWGcH4QjJQy1ZU/MEav9uA/DQYKOilFtm7afkjSbzQiHw3C5XCeSg+ZcWIKM0sMatLPTEWvCe0UQH4Z27NWTRLtnXqvVMDc3h1wuhytXrkgv+HZDVTpFNpuVCUT7eX6dXDOfz8PtdksP32azidXVVTidzp4Kb6rEMI/HA5fLhXw+j0QiIcS8oxAztXleClQVVKjZbBbb29sol8vSUlOv1yOTyexrHLSTIyS4joyMCLmMMogKmmFNKoaDzvd+JZqjo6OIRCIdP5OnHSqZl4S+o/Sp6ATqXuJ60dhpNpsyUjIcDu95X6PRkPbTai93LdTWrmp9t/p9Os1jF4tFFAqFPcTZYrGIL7/8suPmVV0paIZotN6SxWLpupRJ21xCfS/z3BQC+/VDBR57cCdFvjCbzS0KhyF8VWC0+y4qma1UKnVU2vEsgwKs0zxvt6C3cVA4amlpCcPDwy2dvNT74DU6qSao1+swGo1oNBrHyqOXy+UWT4vlJtpORs861MgWc3/kBXTSe19FO/IVn1W71qDM/+XzecRiMaTTadhsNiFj7hexUsdFqp9jNpsxNDSEsbExuN1uFItFCZHncrkW0iHDpN3mom02G2ZnZxEMBjt+Ls8CqMDYne0kcFjUkr0S1HNar9eRSCQwMTGxJ3ys7i3tEBYVnP3M97Srn++UBMeSU5fL1RI16TbN0ZWCDgaDCAaDLTfIqR9Hyf/S8srlcsjlcsjn80in0/Lw1R6s+x2IRqOBxcXFrpohaO9Bhfq53eQxdbrd+dH0oHsp19QOrD9k/ehJWc00jqgo3W73vr2US6US7ty5IyPiVJDReVBvdTJAm82mKFbmso4KMk+ZC52amoJOp5NpSb0Io9EIp9MJm80mU4G6PYtk26s1rAftKxrO5XJZQqpbW1ttPRMaTNrwMr3i4eFhPP/885iamkKxWMTi4iK2t7cRj8eP9F2AvZ660WiE2+3uKRa3euZ8Ph+mp6dPZI8bjUbpzKjK0YmJCVy4cEGiq9p1icViWF5ehsfj2TPopFKptDh92u9Bx5NoNBrwer3w+/17vlOn+yGdTu8Jc7OEr9NISlcK2uv17mmXqHb96Rb0MnjN/ayTwwZuHJUcxmkz6sJomcidlFYQ7B7EkWW95DFpUa/XMTExAYfDcSzlrH1G6lqQHXpQJ7AHDx6IUNbr9ZIPpwW7n7XMvafmlSqVCsLh8LHyhFQuDLWp6ZonmQr4TcJgMGBoaAhOpxOpVKrr0irt+TrIywEep4+4dvl8Hrdu3cKHH37YUrNKBczObtq9ptfrEQwG8corr+C5556Dw+HA1tYW1tfXsbm5KZ2kTqJ0sFKpwGw2d90E52mGumacjX4Shnq1WkUmk9nTUZADLA6Sq2tra1hdXUWzuTv3neFlEvXa3R8Hmmh7ODSbTYyOju7pltYp6vU6HA5HyzTDQqGAZDLZcZ14160+teO61FxbtzAYDLDb7S2jGtvhpEt3aE3T6td+ttroQisMDgJrgdlsvZcVNLBbiuByuY7FTlYbnjCi8vWvf12s1lQqtYdMoT7XXC6HVColHYO0jNt2YAtIrUGYTCaxs7NzrOgHyywY7l1bW5OGGb3KSzh37hxeeukluFyulkZDTxIq9yGVSuHhw4ctsoltNbWtPtWa2YGBAbzyyit47bXXEA6HkUgkcO/ePdy8eRPz8/MolUoIBoMyHKibfa7lrDSbTXg8np5S0Cqy2SxWVlaOlerinAcA4rDZbDacPn1a0l3qpLz9QuF8byclv9wP6rAPXj+dTiOVSsHhcLSd3HgYWN2jNcy5/zpBV2ZBLBZrUZYGgwEOh+PIi9JoNOByuTA8PIx4PI6NjQ2USqUj93DdD3wgalG71WqFxWJBJpPZk7Oioq1Wq9DpHnfIUpl8+32fXC4nowh7VSDTIGNb0+OA5RnDw8Mwm81YXFxErVbD+fPncePGDSSTyT0bnJY6vZtKpSK5yoMqA3gdk8kkoS72fuZ7U6mUGG2NRkOGwnSzlqVSSQ57NpttaTfYa3C5XHjhhRcwPDyMq1evIpVKHSnV1c77YpRDa6Cr+eBqtSoNRlgC1c5pUMPcNpsNkUgEV65cwZUrV+BwOPDw4UNsb29jc3MTd+/eRSaTkYlWKysrUk54WNqEnwVA6qgByHnpZRxXFgDAwMCAEM5yuRzS6bSkDQuFAtxuN7xeL+LxuPAH9uONdKqX1IgPZVE0GkWxWMTy8rIYDeFwWDqlsSzzILAGXuvUduNwdqWgtRYJN2K3ZS1EvV6XTj+vvfYadDodNjc3cfPmTWSzWaHsH8eD5oG02+2Sa2TXqEQi0dYYUD0rhj7Vmr/DlDSHivQqbDYbCoUCRkdH8cUXXxz7esw3Xrp0CclkEjdu3MDAwIDkcbX7qtFoiPA7jNSl0+0OdmHDiXq9LjlLetHALhPZ7/djcXGxZU+4XC4hC3UDepFGoxHVavWJs91/U3C73QgGgyJM23Xu6gQkA6ret8Vigc1maynvpKIlOUmtTVanVKmkTuYYg8EgIpEIgsEgJicnpWHEJ598gs8//xypVAp2ux3RaBQOhwNOpxPLy8tizFGOHMQSV6E+B05q62Xw+R+1m1ilUkEmk8GFCxfg8/nw8ccft6x9Op2WsaDAY54Kna+jOIrtZIvJZMLbb7+Ne/fu4f79+xIN1ev1CIVC4p13Uj7bbjxyqVRCJpPp6P66UtBaRawNMXTq+qu1ZcViEevr69JhJRAIoNlsYmtrSzyRaDQqVlQnoGVlt9tlNObw8DBMJhMWFxeRTCYRi8X2XVDtolGwd5KLohHQy7XPagrA4XCcSMSDERS9Xo9SqYRUKgWXy4V0Or3HszqszAVoZYGrZYEq+H8aipOTk3jttdfw0UcfyR7w+XwYHR3FtWvXOv4ujUZDwuQ2m+3QnOqzDJPJJD3Mi8ViW4PqMKghS1W+tEsLqIYzFbP6XvWa9JhDoRDOnj2L8+fPw+VyIR6PI5vN4tNPP8XCwgKuXbsmzgfJj0ajEYuLi1heXoZOp8Pg4CBGRkakn/NhVRraZ+Dz+aReu1fg8/lazme9Xj9WypMh4aWlJekSlk6nMTw8DIvFguXl5T0OG5X0SaUTm80mFhYW4HA48MorryCfz0tOe3t7W/bdfs6DFvvJqU5rxbtS0FTIFDYGgwEWi6VrUoj2YSaTSXzwwQe4ceMGAoEAtre3pXEAvdFisXioJ63X62XEmN1uFwbw4OAgXC4XFhYWEI/Hu/KGmB/lwhy0Eag4aCAcpw/x0wpVwMRisRNLR1SrVdy7d088qEKhIHOU2/V3Pyi/zH3J1rS1Wm3fMCpRKpUwNzeHt956S/o422w2RKNReL3eroROo9GQsBjJQZ2U5jyroNfRSSvMduBz1ZZq0iEwm80tZ5/rCbRXzJQD9JQvXryImZkZuN1uPHjwAB9//LGEsbX5cqvVildffRV6vR7Xr19HuVzGuXPn8PWvfx3lchnz8/OwWCxdcwp8Pp9wJHoFLpdLytAAyNCK46DZbGJzcxOVSgVjY2MIh8OwWCyYnp6G2+3et7/7cXkwdrtdmpw0m03cvHkTN2/ebNlb1WoV6+vrLZyZTj5XK3fUdNth6EpBs7sOFZxOpzs2rZ45po2NDQlFlUolyQOSVd2O1EMwp+xwOCQMFQwGcfbsWYRCIWQyGdy/fx/Xr1/vWDm73W4ZGN4N8YVWOIXyr4Mw8+sEiX21Wg1er/dEBY6q7Fk7rA4rANp382L4mPugWq2KN6fet3qv7BZF0kmj0UA6ncb9+/fl8PA6i4uLEqruFLznYrGIarUKh8PRc3uBoBHU7RxvFfspd3ro2sqK/RQzz/709DSee+45nDp1CjabDalUCteuXcMvf/lL3Lhxo60HYzKZ8NJLL+H555/H6uoqqtUqhoeH8dZbb2FoaAiPHj0Sz1k12jsB0yzdRAJ/W1Gv17Gzs4NqtQqTyYStrS3k83mZpKglcwGtKQ31/52CpZylUgmVSkXkAsdGbm1tyWu7MUSpI9Wz3829daWgrVYr3G43jEajkEEOGqR9GHjznP3K5gPAbunEwsICrFYrpqenYbfbkUgkJDStNrGn0Nbr9VKPNzQ0JLOpNzY2cOfOnY7j/j6fD+Pj4wgEAlI20ulhbDabkp/oRRY3axSTyWRHTUA6AQ0a1TKm0uQ0G66xlgPB5iLMS7E0hr9XGxSoqFarsFqt8Pl8KBaLInjJ3F1dXZX3JJPJrhSP6kmQyEQmcK+AIT5WQqRSKaRSqSNHCdqdL5PJBL/fv4dk43Q6ZTIUCYJGoxEulwuzs7M4d+4cZmZmEAqFEI1GcePGDXz11Vf46quvWmZXE3q9HoFAAM8//zzOnz8v+XTWRgcCAamx3traaluD2+67qK+xWq0oFAo91ZffaDTC5/NhZ2fniVw/mUzC5XLBaDS2cByIdmvAn6ltPSkn9suPM3wdDocxMTGBra0t5HI5mM1mXLp0CTs7OxLe7hb1er2tt/xEPGiDwQCfzweHwyHWcrct/VRQQQeDQQwNDSGVSmFxcVE2d61WQzAYxDe/+U1EIhGsr6/jk08+QaFQkL6/uVwORqNRmLa5XA537tzB9evX4XQ6ce7cua7zPh6PB263W2Z7dtMFil1uyE7utVy0xWKB3+/H0tISbt26dSIetMlkQigUwurqKoDWnCQ7OzWbTZhMppY2nEwpNBqNFlY2c2F2u11SI+14Bel0Gm63G6FQCNlsFslkEtvb28I14H0cxfNNJBIt/1eNiF7A4OAgotEoJicnYTKZkEqlkMlkTtQIYfMfes+hUEgqPgDg8uXLyGazLaSuiYkJjIyMoFqt4ssvv8TVq1dx48YNKRFtd39Wq1U4MM1mE/fv34fD4cC3vvUtBAIBzM/P4/bt25ibm5No2mGdE1UFrdPppGLkJJjOTwsKhQJmZmZOTEGr6Qw17UGi1eTkJIxGI+7du9fRXHAq6FAohDNnzsBqteLzzz9v2wObncg8Hg9GR0cRj8dRr9cxNzeHra2tI+/r/aKoncrNrlncVqsVHo8HS0tL0sXnqDdP73dgYABTU1NYWFhANBqV0hSbzQav14vf+73fw+TkJN5//31sbW3JQeR0kOXlZaysrMjAClrxbO338ssv4+zZs8IS3E/g2u12VKtVOJ1OpNNpRKNR+X6d5hqoINgb3GAwnMhUn6cFOp1O0gSql3lccHbq6uoqTCYTzGYzcrmcMKCBXYF8584dYeKn02lp0an2BQZ2D3YwGITdbkcsFmvrObFm2Wg04tVXX8W1a9daFPRhnIODoD2AvRZRCYfDwvXY2dlBNptFIpE4sixoFzI2Go2wWq2wWq24dOkS/uk//aew2+34j//xP2J5eRnPPfccRkdHsbW1he3tbQDAxsYGkskklpeX8dVXXyEWi6HRaGBsbEzyjCpUXg3JRo1GAx6PBy+88AJ0Oh3effddPHjwQCIEncgD9fccY7q5udl1NcDTDJfLhVAoBLvdjkKhsIej1C1okIfDYalDp85pNptYXl7G9PQ0Ll26hPX1dUSjUdjtdpjN5haD2Ol0tjznZDKJfD6P733ve5icnMSf/dmftZVb5XIZDx8+xMjICJxOJ+LxOJaXl4/NHWnHMO+Uu9OVgs7lclhaWoLFYpGNfhyLmYxntlVzOByS0+YgjqWlJfy3//bfcOnSJczPzyMej+Ps2bP42te+hoWFBRgMBglBah9ko9HAw4cP8eKLL+LVV19FKBQSS7gd4SwUCmFjYwPRaFTC7t18R1ptRqNRWrmlUqkn1kD+NwEydpnvO4mcWqVSQSwWg9/vx8bGhgxAKRaLUqdMTwnYNaSGh4fx8OFDlEqllsPGf9dqNWxubuLtt99GIBCA2WzGzs7OnoPRbO422i+VSjh16hRSqRQ8Ho94BUdhJBsMhj05TkaEegkGg0HqhpmvPwra1Q3z56OjoxgbG8Pk5CQGBgYQjUbFuzEYDJiensa1a9dw79497OzsSC+F1dVVOeN6vR5utxujo6P44IMP5CwajUZYLBYZgGAwGHDlyhVMTk4in8+Ltzs/Py+lVZ2mudTzrtfrsbW1hZs3b3Y0wehZQSqVQiKRkD1/XAOUrVsHBwdhs9nw5ZdfQq/XSxOc999/H2tra3jxxRcxNjaG999/H4lEQgx6rrfWCKpWq7hx4wZ8Ph++9a1v4YUXXsCXX37Z1pBoNBrY2dmB1+uFXq+X9BSbKHULnU6HyclJbG5uHslR6zrmpibL1V7G3UB9fbVaxebmJu7fv4/5+fmW39VqNWxtbeHP//zPMTk5iYmJCbhcLlQqFalZnJqakrIHCgoVtVoN4XAYly9fRjAYhM1mQ7lcxtra2h4hGo1GUa1WkUqlpCZTJR1YrdZ9w5S0Hklo8/l8UjLUS55TpVKRdbdYLCfy3ehdkH1LBb2+vo6xsTFYrVZ88cUXWFxcFMFnMpngdDphtVpbGoMAj1mTlUpFPKuhoSGEw2HcuHGjxTgzGo0IBoO4fv06XnzxxZYmJkCr8uikvAvY9Z61h/FJDBT5TSKTyWBzcxOpVAo+n+9EejBrPQ1yD4rFIh49eoQPPvgAy8vLMnnM7/fLkI5qtYqtrS1pEKRex+l04jvf+Q4mJydRLpfx6aefAnjcGpYsXr/fj0gkArPZjGg0inv37sFkMiEWi7XwUKjMO5V71WoVd+/exfr6ektd77OOWCyGe/fuQa/XY3BwEKVSCdls9liGaKFQkOgsZfD9+/elY6HT6cTt27cRDAZF1ptMJszMzCCdTmNtbW3fkPJ7772Hhw8f4vvf/z5yuRzu3r2753XhcBg7OzswGo24fPkyrl27hnq9DovFIm2EmfI8KIKs6sWBgQF4PB589dVXXT+bYyXFtHWLR3l/vV7H8vKyKEyXy4VAIIBTp07h3r17yGQycnhCoRAA4MaNG3jw4AEmJiZw6tQpnDlzBqlUCuVyGXNzc9Lfm0Sg+/fvw+l0CjN7bGxMXq+CYRqLxdKWkap2I9vvWeTzeRiNRgn3HYc48zQimUwilUphbGwMNpvtxL5b+f9n771i5EzT6+BTOefQ3dW5m81MDieHndmdzdKOrJVtZVi25ShD8IUFGPCFbgzd+k6wbiTBgPTLWEMJu9ZYYdPs7oQllzPModk5Vs45/xet8/CtYnV3VZOrJUt9gMGQ7Oqqr77vfd8nnec81Sqi0SgajQZsNpuIOpRKJUljWSwWabmi4bXb7RgfH0c2mxUyEZXBWIfktLUXX3wRNptNDDTn/fr9fty5cwf1eh0zMzO4fft2R2sEnze5DgdBjQK5N9idMEylju3tbZTLZTFyLpdLWssGgZou7t5vU1NTeOedd/Cd73wHXq8XFy5cgNlsxscff4xisYhoNIqrV68iHo+Lo9btoBsMBnzpS1/CZz7zGeh0OkxPT4uBrtVqSKVSYpCXlpYQiUSQz+cxMTEBm82GlZUVRCIRcdbJm3E4HCiVSo+sh17p72aziXg8LtHesKDdbiMej8Pj8QhHSK/XP9Y86EajgZWVFXl/jUaDTCaDWCyGdrst0bHJZBJlNjoG4+PjWFhYwEcffdTRacSuk2q1ip2dHXz44Yf46Z/+aYyMjOC9995Du92WCJyp8p2dHXzhC1/A7u4uIpGI2AZ2E7ELZL8as0pqjUaj8Pl88Hq9iMfjPz4Wd6+LYAtEv6kftT2CdR8qtIyOjkKn0yEYDOILX/gCvv3tb+M73/kOJiYm4PV6USgUEIvFEA6HUa1Wce3aNZw7dw5zc3NoNpuiaGQ2m5HL5RCLxZDL5fCNb3wDV69exRe+8AXUarUDpRdJhGMtikSvRqPRoVTU615wWEa73cbdu3cHujfPCuj8nDhxAjMzM1hcXHwsj1l18FRSDZ2p1dVVbG1tib4uwdfSYPt8PvmZmorkBqrX67h69WrHe5hMJpRKJaytrUGn02FjYwP/4T/8B/zO7/xORwnHbrcjn8/DarUCOFiqj0bG7XZLipSHBNuRhgHMMrhcLpw9exYWiwU//OEPB3LYeYD1alvRaDT4zGc+g3feeUcOSZ/PB6vViuvXr2N7extra2u4f/8+IpFIzz53m82G2dlZhEIhPHjwAMvLy/je977X8Tkkuq6vryMej0Or1WJ+fh7PP/88JicncePGDbRaLRE8YQnLZrNJv676fYD9xSmGVU0unU5jd3e37xLAYaAQCN+L9717CIbNZhPO0fb2toiajIyMiPPo8/ng9/vFZgSDQdhsNly+fBnAw/PHZrNJVMxr+OEPf4iTJ0/CaDTKZ/N5c/3vZw+6Z9NnMhnpMBlkjzy2gTYajUeSdmPfZLvdxsLCAr7yla+g2Wzi2rVrMBqNcDgcOHv2LB48eIByuYzl5WVpX2HdOplM4kc/+hEWFxdFFpDCKWqth311mUwGp0+fxtTUlESC3XUzqsNMTk6K6EWpVJIBGCSJ9FItUtMdnC06TGlNYC9VTGW3s2fPPtLjdxTwYCWJJ5FI4Pbt23A6nTLVBtifWFEqlR45+JgeZdlBo9HIxB1uED77YrEIk8mEra0tnDx5Eq+++iq+973viSCFKp7Cdo1e612v18shdeLECdy5c0f4B9lsdmiMswqbzYaJiQmYTCbY7fa+f091ynoZNI1Gg+npaSlj3L17Fx9++CHMZrNo3bMkRVa1+j46nQ6Tk5OYmJjA1tYWvvWtb2FzcxPFYlHWrPoMm80mCoUCXC4XZmdnsbCwIGInbCcaGxtDuVyW0Zj9Pk+WR6gbPSxwu93I5/Nyvh4lg6KCrXL5fB42m01InNFoFCdPnpRzotFoIJVKdUhPM/otFoswm83yWo1Gg83NTWmxJV8pEAggHA5LwMGypoqVlRXo9XqEQiFotVpsbW11zItW/38QUqkURkZGpHzGcmk/oi4DGWg+AHoZ1DUedMwYo2gu/PHxcezu7krtYXt7G//n//wfiUiLxaL0w3bXrwuFAiKRCCYnJ2GxWCR67t481WoVW1tbeOeddzAyMiLXfPPmzUf6byknx3RNo9HomdpWMwIqu5l4HEbj0wrKWLJ+c9TWITUFRENKg9lsNrG9vQ232y1Zi8NaWiqViqSp1AEFXKvBYBAazd7gE65b8ilUz/mP/uiP4HQ6pWcSQMd1HfY8eZ0OhwMjIyMyCvNx2hGfZmSzWWxsbGB8fBx2u72vs6BX5KzVauH1elGtVkXH3mw2Y2dnB7du3cLu7i4++eQT2Gw2ZDIZcdb4Pt373WazCTmLrG4AmJiYwJe//GVcvXoVt27d6vh8i8UCp9OJU6dO4cyZM8hkMhgZGYHP55M1Sce7Xq8/kk5n1k19zl6vF3Nzc9jY2ECxWDwyke5pxNjYGLRaLVKpFBqNBjwejwQqRzn3Go0GTCaTKJTZbDaJhDUaDU6ePInFxUXU6/We5FSeA4FAACMjI1heXkY4HO54TaVSgdVqxS/8wi/gy1/+Mv7mb/4Gv/d7v4d4PC5yzsyG1ut13L59W5xEl8sljl2pVOr7O6bTaWkN5lnWr+LawFrcKjGM6SHm+A+DaphJ8qEXRham0WiE1+uF1WqVvmYufFVSjrJsqkY2PadcLtfzUL958ya+8Y1v4J//83+OixcvolQqoVqt4v79+5KKJpP8oGlU3dGzRqNBqVTquAesVw9bH3SpVJI2O5/Ph5MnT+Ljjz9+rPdkqaRYLMJms8Hn8yGZTCKZTAoxo3t9dT9fk8kEk8n0iKgF0Ww2MTo6CrfbjUqlAofDgUQiIc+Hxv3v/u7v4HK5ZM0NAvUao9GoZHHUUtCwgK1tmUwGi4uL8Hq9cLlcoqB3GLojZ6/Xi/n5edy7dw8AhPh1/fp13LlzB6VSCZubm2LE1bp193OyWCwyhYpnFGE2m6U9yG63S2RFwzo9PY0XX3wR8/Pz2NzcFO3tw4aA0NHsPrTffPNNuFwucRSGCeFwuMNBP3nyJBKJhGhH9AtOCGu1WohEIjCZTGg2m8jlcjAajVIuYumrW/q3Wz3MYrHgpZdeQqlUEm0FFYVCAX/xF3+BQCCAf/fv/h38fj/+63/9rxIEOhwOGYjB1z9uexwJZcDDCXr91OoHnkRO6T15g79XgeoXNNAOhwNutxu1Wg0rKyuIRqMycSqdTiOZTErfoLrhy+Uy8vl8ByuWh2m9XkcqlRJiFiMzolar4d1338Uf/dEfQavV4pVXXsFP/dRP4dKlS3C73fB6vZiZmRF1qn6+CyOG7vSrGlkPExqNhrSQLS8v45d+6ZeO9D7qfWHKENh7vna7XdiSlUql5zxVbkY+317qbRaLRf6eTCaxuLiIbDaL1157TaZnUeGLzqfJZBqYyNEL4XC4o02P/drDAqazy+Uy0uk0DAYDJicn4XA4BnofjUYjCoVbW1sSPZ87dw56vR7Xr1+Xf2s0GvKc6aR31z0dDgfm5+dRrVZRKBQeiVj1ej3S6bREtpTz5ft/+ctfxqc+9SnUajUsLi7i3r17fSmH8f/q606fPo1XX30VjUbjEenZYUC5XO44++/duzdwL7xWq4XL5ZI6MwDRomCkGo/Hsbu7i+3t7Z5TAukcBYNBBINB7O7u4jvf+Y4w5knSZNdJrVbDzZs38d/+23/Db//2b+PChQv49//+3wsxtVAoPBbRjTAYDLDZbAAeGmVgf3WxXhhYSSwYDKLZbGJ3d1cORPXAPMggqeQwpo5LpRKy2Sza7TZmZmZgt9uxubkJADLwgO/N+nM3ms2mTKjJ5XJinJ1Op9Q0CoWCpCg//PBDvPHGG3j99ddx+vRpUSMrFouymfoBvw97cdWHQJLDsKW5aXScTif+1//6X/it3/qtI71P9ybm4dVqtbC5uQmDwSB9iN21IdU4BwIBOYzVtBedJ1VDu9Fo4MGDB3j11VfhcrkQDodx8uRJ3L17V55RqVSC0WgceIN2R/Tdc6zZqjEsh/To6KhkjZxOJ0ZHR0UvuR/QUeeYyFgsJpwUm82Gl19+Ge12G4lEAmazGTqdDg6HQwh/ve6jXq/HyZMn0Wg09h33ylrl3NwcrFYrZmdn8cMf/lCEbMrlsmQ/vvnNb+L+/ft97181W2axWPDWW2/B6/XuO9b2WYfL5cLExAQSiYTc134m/hFq5wt7mekMkfW8trYmWvalUulAAt65c+dw6dIlacnjPdfpdAgEAnA6ndjd3RWmdj6fx5/+6Z+i2Wziq1/9KqrVKv73//7fT0xMxuVySdaMNono18YMZKC5KThUe2dnB9Vqte98ejezlqQJGjLOTKVXxjQAU0wHfU6pVBIqPG8EB21YLBbpTeUm/OY3vwmbzYaZmRmcPn0auVwOKysrUmc67HvwM9Tvz4Z2v9+PbDYrkp/DhEajgUKhIKnt995770izWFWHzm63d9wrsiV5P9VsiPo59LCZ+WC0w5+Vy+VHHMZarYbr168jGAxiaWkJLpero2561KlT6vfZr21omLIpLEVUKhWMj4/DaDRKlHgYZ4D3Qd2nqiM+MzODF198EdeuXZPascFgQKVSQaFQ2LdU4Ha7YTKZEI1G993DFKAxGo0IhUJwuVzCc6nVavjud7+LTCYDvV6Pjz766NCIcL9nPTk5iZdeegk7OzuiijVsaDabsFqtuHjxosyF51neL1OZ9dhKpdKh4Le5uSmtnKVSSTgF+zlejUYDV65cwerqKl544QW89NJLuH37trRuRqPRnloEpVIJ//f//l8Ui0VMTk7Kuut3bsN+IAdldXVVvpN6P34sLO5ms4loNCpkLNZetVqtyNkdhu6+R6vVikwmI6xuddYqxQDUesBh4Ng7HtA8sLsP3cXFRfzBH/wBJiYm4Pf7EYlEsLu7K0a83/tBr46yhCSaMGIfNmJQu91GMplEKBRCu93GvXv34HQ6H6u+ZjQaOyIMVWhE/Vx1c/E1rEe9/fbbcLlceP/99zvmVavyq8T29rasMzp16ns+rlOlSo/y7wCG6pA2mUw4d+4c0uk0crkcbty4gZWVFeGEHOawqXVDtR5tMpnw/PPPw2g04saNG9je3hYWPp9Xr/ci45oli/0MRKFQgFarFea+TqeTKXh6vR6RSATf/OY3Ua1WOzgKvcBr766nm0wm/Mqv/AqMRiNu3bqF9fX1oTsHgL2yUTqdxvnz57GysoJCoYBQKCS69oehl9Hyer3I5XKo1+tYXV0VpbdsNtuzlU5FsVhEsVhEPB6XNrlMJoN6vS7Ps1cfejabxbvvvotAIIBAIAC/3y9TrY6Ker2OeDz+SKQ8PT0Ng8GA9fX1vrJpAxfFisWikC94c6vV6oE9wr2gpruBvcORaW9Voo9OQL8RGtOaaoqSkTrbwXQ6HbRaLdbX17GysiJqRP0eztz8KkktGAyi0WjAarVKnWwYNyWwF4UwRdloNGS61VFAg6/VakVDt/u+dR+2bFshisUibt++jXfeeQd37959ZGJQt4Eul8sdLRPMuhzVMGu1WthsNulzZOuGKinp8XgeYZQ+y6BGgF6vx+LiIhKJBMrlshA1B8moqAc1CXXRaFRkO9Xshvrc2eZJBjawl1qenJzskOrka9XJZ6xJarVaGYqjEjsZ1fdz7d3f9cyZMzh//jyWl5dx8+bNDp34sbEx7O7u9n1vnnasr6/LWc7AyGKxiE7+IGC7k2pHqMTYKzPDiLt731LbIBQKyc/YMrufka/VaqL0xlHHR4VGo+lQN1Q/r16vY25uDplMZl9Cq4ojXUU+n+/wZNW0YL9GSaPZU+wyGAxwu92i0tQt7MGakwqj0bgvMU2r1YosHPBw0TidTvGw7Xa7HMiM/NX2nP3QfV1MywQCAQSDQXi9XnFghkkUXwWZqiwd5HI5uN3uIwswsL7ILAzw6BpS/05eQfdr7t27h3w+j0uXLnX8O9Pk7F/WarUwmUwdc32760ODgkpnRLdzxpacYVKRqlarCIfD2NrawurqqhCEGIkOAvVekai3s7Mj07FoBLuZu6Ojo3A6ncIbSSQSSKfTCAaDOH36NDwej7zeYDDA5XJhZGQEU1NTCAaD0Ol0yOVyIkLhdDphNpv70i/oFTkTbrcbd+7cwV/+5V9Kmx2wp4z2hS98YaB787Qjm83i9u3bYpBrtZoEPIOAWhKqw9Pda9y952dnZzE1NdVz70ajUdjtdvh8Ptnfs7OzOHfuHBYWFjrIgSqooXHUbNfc3BxCoVDHv1HgCNgjj3744YePTLvbD0d3ExTQwA0Kai6fPHkSk5OT4ikR9GZZ16BX02g09mWPm81maaGg0WD6KxQKYWpqCn6/X1Jb1Nfu54BWPUV69na7HWNjY7Db7Wg0GkKYGNboWc18MOthNps7FuEgsFqtIhzRTxReLpfhcDjg9Xo7nlmpVMJHH32EixcvdjgLJJ/Qg2YmhUZEdeSOCr1e/0iKXkWz2XwkMnjW0Wg0kEwmhShG7QCTyST1wqOATu7i4mLHJLlug+l0OjEyMiLZKvZPUzDj9ddfx6c//WlZly6XC6dOncJLL72E119/HaOjo8I74VQkt9st/JjD6s40zr1ed+fOHfz+7/8+rly5Itc9OjqKX//1X8f8/PyR7svTDDVAoxiQxWIZyGnXaPYGo0xPT/e1djjnwGazYX5+XhjYRLPZxObmJk6cOCHkzNXVVayuriKVSsFqtfZ0JHlOHAU6nQ6nTp3C2NhYx78XCgXR8m63Hw6I6gdPxEADD5WzgP6iaHqpjGip68z6ET0q/pmpM/4uC/7dN5nCKXNzczh9+jTOnz+P8+fP4+TJkzh16hQmJyelZ5ZjzPrZkOqf1ZYJOhEcadgd7T+JKS9PE1jK4Bg4EvjUaGUQHObMkOVL8F47HA5MTEx0vJYa2j6fr6PuywhWbeXq7mV/HHSLkHA9qQdNd73tWUej0UA2m5XDplQqoVgsCulv0MOZqW2LxYKNjQ0sLS0dWP91u90yxAJ4OAkpl8uJWMVrr72GhYUF2O12vPrqq3jzzTfl78ViETs7O1hfX0e5XJay2CDOdfchazabpU1vZ2dH/t3v9+MXf/EXMTk5KR0qwwCe0QAkWOIaoDb7IHvLbDZjenq6L2e/1WphZ2cHDx48QKPRwLlz5+B2uzteE4vF8MYbb+BXf/VXYbFYUK/XkU6nEY/HO4ZqqK3D7XZbOkgGgclkwuzsrDhkvYLHo+z/J9aYyVT0ID3RlUoF8XhcVLjUKFwVNTGZTHC73Y/UFjlVRAU33qc//WmcPn0aLpcLqVQK0WgU4XAY8XgclUpFmuNVx2I/qISWboH8TCYj7T1qzdFms0ndhPKAwwD1O3k8HrTbbVFyO8rho5K0eqHdbsPv9yMej0vmpNlsYmtrC1NTU5icnMTOzo6I2ty7dw+vvvoqvv/97yObzT6i+ETpT2ZkBo2c1bnFXq9XaphMpasEJb43ORDD5KhRFUun06FWq6FQKKBUKkm5J5vNIpvN9s3poHgRJXi7Wf3dKJVKIqOq1iaz2SzW1tbg9/sxPj6Ot99+GxcvXpR549FoFJlMBplMBvF4HNFotEPM5DDtAj7f7vo0S2vddUW9Xo/PfvazuHjxItbX1/HgwYND78ezArWbRTVoHo8HU1NT0hbbz9lHkZLDzgOSALmnOWwpHo/j9OnT2NrakhngnIL2n//zf8bZs2fxP/7H/0A8Hu9Yk4z2jUajiFMdJb3tdruxsLCAtbW1jtG1hUIB+Xz+yH3VT1Q5gSmuw8AHW6vVpJmc0TN/xgfOh7tfCr3X5k0mk7hy5QqAvRQqe98oEdhutyWt3UuXV31flUDUz/Qa9opbrVYxDhaL5RHn4lmF2mSfTqfRarWQTqfxqU99Cmtra33XVojDDnC9Xo9MJiOTrPjsmMIaGRmB2+2Wz/3Wt76FL33pS7hw4QI++uijRw4Hfl4v565f8HlTlYokN7PZ/Eg0zcO8X/GbZwXMQpAR3Wq1hJh1/vx55PN5lMvlvg47tWzCZ6zWHXvdN06bI1mNafB6vY7d3V3R5+c86Xg8jrt378psZ4pR0Olj6aPbyep1rd3nhV6vh9vtlpq5+u8c3rC5uYnV1dUnIoDxNIGOivqcw+Ewzp8/j1gsJu2m/YDP5TCDPj8/j8XFRTkL6vW6lEXYApzJZNBsNvGtb31LpDopIaq2W3Hdktx2VEnedDqNjz/+GOl0WvTpObTjzp07+7aHHYaBDTQNWy+j1t3ffBh61ZYIbhCKgAAPD1c15b3fnN2dnR18+9vfhs1mkyhZvV624PD9uq+L/07jXCwW+5LtdDgcCAaDIh3JuuewGGjg4XOoVCrweDxIp9MwGo34hV/4Bfz+7//+EzNEjFbL5TJcLhcAiPdMAZpoNCqpRSqP3b59G6+++iru3LlzYF17kI3Yax40GaZ8H+p8q/VJkuqGLcXNkhSjWIIaynNzc8hms4hEIn2vh15tN+r/VVSrVbhcLimtsJeZr8/lcggGg7h48SJarRaWlpZw9+5d6ZHuJpyRR8M/d18HnZFardbxu3q9HufPn0cymUQikYBWq0UoFMLCwgJsNhvsdjvK5TJWVlaGbvSszWaTPQc8vI/r6+tYW1vD7Ows4vF431Pc+umi4YyEkZERRCKRjoCJxpd6GqVSCfl8Hn/2Z3+G6elpIQJ3fwYHpZCsepRsZ61Wkx77XC6H69evw2q1IhQKIRQKYXd3d6BuJGJgA82xiyx6l8vljl6vQqEAh8PRMS6sG4epjfE/NT3Jw5DScMFgEG63G8ViUXRuu788J1Dtp250kHMAPBy20N17yfSoWofmNJ9gMCj1T7vdDrvdPlRes+rUtFotGULx7rvv4g//8A8RDofxV3/1V0/kIOpuj+J0K2q/0+Pl83E6ncLmTSaTTyylrKa1NRqNiPir2QL23KvqWOq+GDYDHQwGkU6nH2mLy2azKJfLCIVCIi70OIZpvz1qNBrx/PPPY2pqCrFYDNeuXetQpGo0GqKzwH3M1qn9rqXXM1KdhG7JT6vVik996lNwu91YWVmBwWDAT//0T+Nf/It/gUajgeXlZaytrSGTycjsgGE6C3w+HxqNhoh6TExMYHt7G4VCQcb7njlzRnqCn5SK3srKCgKBgDDzqWmgThljNwEZ/u12G7Ozs2i32wiHw49cC7lIg0Cr1WJkZOSRqYgst3E8Mtu2TCaTBJ39ngVHIomxT9DhcGB8fLyDxNNutyX99DgHJAkITqcToVBIjGy73YbVasXCwoKwv0dHR2WeZzdqtdpArDl+BmVIewkjOJ1O+Hw+YRMHg0GcP38en/70p3Hq1Cl4PB44HA6YzWZ5n2GB3+8H8LB9KZlMwu12o1wu43//7/+NX/3VX8Xc3NwT+SyNRiOLm9ER2/OKxaLM7qYuNPvmy+UybDbbkYlr3WA0rNPpZGJTu93uGK/If+NwBR4KKi9h2NqseqWBC4UCFhcXUSgURO+abY2DYj+nRqPZG0X55ptv4tOf/rSMIqzX6yiXy8KF2djYwJUrV8R4er3eI+mhM3WuXovFYsFXv/pVfOUrX0EqlUI+n8e5c+fwcz/3c7Db7bh//z5+9KMfSdmHranDNDynWCzC7/fjxIkT8Pv9aDQasieSySTee+89uN1unDx5UvgaTwKVSgXJZBImkwmjo6PweDzw+/0dwVE376fZbCIUCuHEiRNwu91yfh0VJpMJExMTcLlcUmZhYOn1euH3++X9y+UyisWi8CYGwZHvWKvVQiwWg06nw/j4+CO6wxz52M9DUTciNz1vMFujxsbGpGeZG5FtTlz0vW4434vC+WqaQ6178zClx7WfpKDVaoXP5xOBd4fDIWlsk8kEp9MJr9cr80xJUBsWGI1GOJ1O6f3lxBmz2Yz/9//+H771rW/hd37ndzAxMfHYEWyj0YDNZpP2l3w+D41Gg0AgAJ1OJ3VOzmsFgIWFBdTrddy5cwdvv/02Tp06deS2iW74/X4YDAbkcjnJmuj1emi1WszMzGBkZOSR9i31uwxTenNtbU1IYdPT0zIko91uY2NjQ1LboVAIMzMzR2q92s9At9t7Ws0TExPSz6xGuu12Gw6HA/fv38e7776L73//+6jX6xgbG+v7cKaT3otEarPZ8G//7b/FV7/6VXEIQ6EQzp07h2q1itu3b+OHP/whrl27hs3NTSGoJhKJvuuxzwKSySRWV1fhdDpx8uRJuFwumM1mcUSj0Sjef/99TE5O4rnnnpPZ2keBRqPBzMyMdG7Q4OXzeWFdW61WTE9Py2eorZhbW1vY2NjA1NQUXn75ZczNzSEYDErPNp37fs8sClstLy+jVqshEAjA5/PJz0dHR3Hq1CnY7XbJqhGDZNIeiyRWrVaRzWYxPj4utHe1yZzpblVjFehUhuq+IWTRVatVSRtzAAZ/JxaL4ZNPPpH5nBzcftAByDYMgvUG9aFwmEb3DeTrDAYDHA5HRzqTiyQWiyEej0u0wOEZ5XK55+zSZxXhcBherxcOhwOhUAixWAy7u7uwWq0oFov4gz/4A5jNZvzWb/0W/uAP/kDmRh8FJOaReMjWpbm5OdRqNSwvL6NUKmF3dxftdhvZbBZvvvkmisUiHjx4AK1WizfeeANms1mkCIFOZR8VvSJCjj0E0MEAbTabSKVSkuqPRqPirPHZM6rjtQ9TipsObCgUgtPplGfFnu/bt2/jwoUL0Gg0El2p4iP7Qf3ZQfW6eDyO1dVVVCoVbGxsdLCnqdm9vLyMcrmMcDgsZxRrjKpTr55BqrPeCy6XC7/+67+O1157Devr67h69SqSyST8fj+0Wi02NjaQTCaxs7ODeDwOm80Go9Eo/cHDMiyFKBQK+Pjjj7GwsIDnnnsO7XYbV65cwf379wHscYF+8IMf4K233sLJkyfx4MEDJJPJgWuxGo0Gbrcb09PTssbK5TLi8TguXLiAer2O5eVlWK1WkW72eDwIBAJYWVlBtVrFlStXEI1GMTc3h9nZWUxMTMhsabbssZRBh7pXkEanTNXrVmVEU6kUUqkU/H4/rFYrXC4XDAYDdnd3B9YLGchAz83Nifwe8FCabWRkBGNjY9I2xU3GXLzqVQGP9hXz/1TnopGsVCrY2dmRyFld3GzHYF1w0GiNxvgwsM7AFBcfIFPwnB9dKpUemY/KcYfD0mIF7N23eDyOQqGAixcv4p/+03+Kr33tazCZTAgGg4jFYvj93/99/PIv/zJ++7d/G7/5m7/5WDrdrOWwFader2NzcxNvvfUWIpGI/NxgMKBer+Pjjz/G22+/jXq9jgcPHsj6vHjxIq5fvw7gYUeASjrcz4Da7Xbk83n5HXUeujrvu5tE2Gq1pP5Jg837NyxgFmF0dBRjY2Oo1+uIRCIA9hw5rVaL8+fPi/ob8HAiXS9nneiHLJROp3H79m3EYjE5gAmVWd5qtbCxsYFSqQSr1YpYLDZwmpHQaDQ4f/48zp49i9XVVVy+fBkrKyvQ6XQyOjcajSKVSsmYXHVq35NK8T5tKBaLuHPnDiqVCl599VW8/vrryGazIm27sbGBZrOJT33qUwD2VP/YAdIvWq0W7ty5g5WVlY41Uy6XkUwmEQwGUSwWRdkQAFZXV3HhwgWcPXsWt2/fRqPRkNHGZrMZLpcLY2Nj8Pv9MJvNwlFIJBJIJBJot9vioBuNRpw4cQLhcBjJZPIRR4uESRWJRELOLafTKYTlH1sE/fzzz8uXpTdAIzozMyOya92RRrFYhNFo7GgA7/aU95PapMAEf797gAKw1+7i9XqFMNSLtX0UMJ3KqT2MhB0OB6xWq6iQlUqlDtEECplQSGWYUptkp1cqFVy9ehVerxdjY2NYW1vDwsICNBoNYrEY/viP/xjnzp3Dv/7X/xq/+7u/e2jkcFBbC587DeDdu3fh9XoxPj6O5eXljt7IcDiMb37zmwgGg4hGo4hEIojFYvB4PFKOqVQqyOfzMl5U7aXlWEP28LJUQ7C/vVf7UPfapEY9iSvDdEBTrKZYLOLkyZOYm5uDXq/Hd7/7XRkgEw6HMT09jRdffFH2OFnUapuLin4GzHDf7e7uYmtrC/fu3ZN/Z1tTLBYTZ5lEJgqh8Hnzs+j4HeY8uVwunDhxAhsbG9ja2kI6nRYmOSVCKYKRSqU63t/hcKBarQ4VSczr9SKdTsveu3//PiKRCC5evIhXXnkFV69eFcGWnZ0dLC4u4rXXXoPJZBJ5UHYDMTvGZ7/fs6BMrzprfWVlBevr6/D5fNDpdBIQtFot3Lx5E8FgsGOgD536RCKBtbU1mQMAQAYz8fMZHFYqFWxvb4uj3cup7AbPlHq9jmQyCbvdLoFEv7ZpIAPdbrdlKPu9e/ewsrKCUqkkA9vHx8cxMzMjU2HUm0ydbbV1qR/w5tlsNpkJmkwmZaFrtVqMj49jYWEBOp0O29vbSCaTQtShMtCg5Ayj0SgzSVUZOUoCGo1GmWZFYfR6vS4KZSSrDNOGBPaYm5FIRA64b33rW3A4HKLwNTs7C2Cv/vQ//+f/xK/+6q9iZGQE0Wj0wMhovwWr1+sRCARkshB5At///vfh9XoxOjqKQqGAXC4HvV4vfdPMrthsNlSrVem3X19fl7r29PQ0tre3EYvFRA60VqvBYDDAarWiUCiILCivnWmwXt9FZfezz58bup+o8FkCxwCm02ncv39fui7UUYONRgNLS0u4dOkSzpw5IwQydlwcJe1PqV5gL4qOxWJoNps4ffo0Xn75ZZw5cwbXrl3D3bt3pfeUc5+BvWc0MTEBq9Uq4iJWqxWrq6tYW1vbd8ygy+XC+fPnpbTSaDREz5nPOhKJYGtrS5jsdMjosA8TQQyACHOwvQjYE276wQ9+gJMnT+L06dMy6rHdbuP+/fvQ6/UYGxvDiRMnEI1GhUdSq9X6ItUGg0FotVo8ePBAHOJ2uy2MfbfbLec958STA3RQtkYdrKJCo9FgZGQEhUJBXrNfMAE87DzRaDTweDwdDj7Ltv1mb4EBDfTa2hpqtRo8Hg9mZ2dRq9VkpFY+n0cikUAoFML8/Dz0en3HxCCi303JlLXK5iYpKxwOY2VlRUbGsf5jsVgwPz8vvbn5fF7kRGu1GorFohy6Kqkrn893RERWqxUzMzPwer0SiVutVklpa7VapFIpJBIJUYtRp64wegYg1/44ad6nCTqdTg5n4GEPoUoanJ2dRbVaxebmJv7iL/4CgUBA0koHKQvRwOl0OnFs6vU6UqmUiEjQYaMWNKeHkd3NdGM6nUa1WhXhmHA4LFEtW39mZ2fhcDiEw8BoOp1Ow2q1wmq1PjIkvlcNSW0H656Kxn8/aFM/i+D+rNVqWFpaQiwWQzKZRK1Wg9PpFBJfKpXC1atXMTk5CbfbDa/Xi+Xl5YGdFYPBgDfeeANvvPGGaGivrq5K3/Uv/uIv4qWXXsLGxgZyuVzHGnO73XjhhRdQLpexsbEhQzMcDgfOnj0Lh8OBy5cvo16vd3AmuN4sFosYdVUsR42Okskkdnd3RV3NarWiWq12CF9QUnJYujpu376N6elpGfMIPOxmWFpaQrVaxWc+8xncvHkTDx48QKVSwbVr13Dv3j2Rd2bApk4PY4aDZy2dpmaziaWlJSEFkpxLm8LUdLlcRjAYxPz8PFKpFDY2Njqi1kH2IiNqVSnwoN9V1e8qlYpwUvhegzppAxnokZERIeNUKhVYLBYEAgERDKlUKsjlcpiensbZs2dht9uxvr4+MHORKSHS14PBIOx2u0REY2NjKJVK2N7elgezubkJi8WCkydPIhQKwWw2yzCMVqslClhGoxHVahXr6+swGo0IBAKo1+tCeqEB8ng8sFqtEik2m01Uq1WRo2OURsMBoOPmm0wmuFwujI6OIhAI4Nvf/vZA9+Bpxc7ODpxOpzg9JFLQSO3s7AirVa/XY3l5GU6nU4wjVcDU3mIA0idoNpvhdDqxs7PziEoRjTfV2aihbLFYxElS09MAJLJmmpwKb0y32mw2AA8dR0bA6pjDbmPSTXLk82cdqtcG5njDYXHUVO5ILBaT72Wz2eR+j46OSkr51q1b0Ov1UpsdBFqtFq+88gp+/ud/XjojVPELjUYDp9OJZrOJjz/+GHfu3IHRaOzog41Go3A6nSI2AkD6VNWzi59nNpvFoWBkl8lk4HQ65Xez2SwymQySyaT0g9Ooq9dnNBrhcrkwPz8Pg8GAH/zgB4//AJ4CFItF3Lt3r0M9UjVQ6+vraLVaePXVV2E2m3Hjxg0pefayCeo+YwbG5/MJ+ZBKYDxnR0ZGYLPZsLOzI6201EJg/ZstWMzgAXslylwu16F3odFoYLVahUysfg8OuulFIGWJUz3HjEajzCh4XAxkoJ1Op0Qp1Dm2WCwiDlAsFpFOp7G1tYXx8XG88cYbmJqawo0bNwaagap6T/SuePCHw2ERUycZhOxc9seZzWaJsphe4mZhVMSDolKpwO12w+/3i1Hm4mi397S3eQDRCKitWmqbFvAwNT4+Pi5tOfulT55VsJ6nQo1YUqkU2u02QqEQcrmcHN7Mhmg0GqkbM1JmOxxbq5xOpwiBMMVMAYJ6vQ6PxyPkC5PJhJWVFUkt2e32DuU2dZIUddiBh6lHOgaqYe+HbcnDWDU4B6XwhynFbTKZJLtAx4tpYzpAABAKhaDT6bCzs4NwONwxRGI/cN+rgwfOnDmDYrGI69ev4+bNmyLbSxSLRYTDYSwtLSGfz0s9MhaLodVqYX19XdKLHDNZqVSwu7uLVquFra0tRCIRmbDn8/nEYeO5wrUJ7K0PDghRHXO1nKbRaKQdbGxsDHq9Htvb20/sGfykMTk52UEa7u5cAIDNzU2kUimcP38e09PTHeM3DwM5HCdOnMDKysoj3TC1Wk3IyRxURIdqa2tLxIqozU1QJ4GcKO57Zko4u31nZ0fKJPu1+/EsU0uZT0ogCRjQQK+urmJsbExGidntdklvtlotaTPZ2dnBrVu3kEwm4fV6cerUKYRCIRQKBaRSKZklbLPZ5ABn3Y4HLCNf1q0NBgMSiQQKhQJcLhf8fr94S0ytGo1G8WrY9sHUNhXPdDqdGFkA4gWzV7NWqyGdTiOXy8nv8pr3S23Q4w6FQhgfH5c6SD6fx/b29lC1WbGm2p2qsVgsHUS/dDotknypVEr0bnmoMiWtGmjWMWOxGMxms6wHVZWr2WzCYDCIAY9GowgGg5J2z2azMve7m63N3+ff6bi5XC74fD5pn+P1HARyEA6rJbGliypHwwI1awBAni9H+3F8aDgcljLC+vr6I+Q6i8Ui6UBg737RCPJwdDgcwi1hbzGfD1Xbtre3EYlEkMlkYLVaRcFPo9Egl8vJujMajULwzOVyHalZv9+PqakpOBwOZDIZmXRFghtbRykjqZay1PtiNBoxNjYGn88Hv98vZEOSFocFPO/u378vZYVWq4WxsTGZ6sU68Mcff4zPfOYzGBkZkdnth+2xdrstREOv1yvnPPdRJpOBz+fDG2+8ge9973uIx+NYXFzEiRMnMDk5iXA4LARllQiqckkoGd1sNpFMJpHL5TA7O4t6vQ6z2SwzAEgiVK+ZvCoqa7J8d1jkPEiKXdPu45W5XA4ul0vEOajcRQPGxUvyVyKREPKG3W5HKBSSQ5Ov93g88Hq9MqaRqUh6zlqtVjYHa8yMooPBIC5dugS9Xo+7d+9ie3u7ow2GzeHcQPTo1a+q1+uFGMQ0NSdcsR5CT36/g5VSc0xlezweEfxPp9PIZrNSB2dKjCmyZw1cAwAkTUzDA0Bk7LojT5vNBovFIgc4W2w4YCCZTHZ4onxfLmKtVgu32y2bhJ8/OjqKcDgsQxvoxep0OnHQVCdC3RS8VrUuZTabO5i83VFc93v0AzoYqopYsVgcinXg8XiEiEdQ+Y3lIJYfSL7rPrhsNhtGR0elRRHYy9KNjY0hl8sJGdHn82FychJGoxH37t0Th5fqUUxdl0ol7OzsoFKpSOrxIJImBXZMJhN8Ph/GxsZgNpslEu9Ow2o0GlGOYmBCGAwG2O12eL1ejIyMwOPxiEwwpYiZSmeZ8FlfA3w2JO9SWhnYc7x4TtAY+/1+zM3NQavVIhaLIZfLSbaNTPr9QH4KSxn5fB6tVgtmsxkvvfQS8vk8bty4AWDvbPd6vTKr3m63I5PJiCGuVqt9lV0pfsKxmQzaCHXQUr+T8chDoDE/bB0MFEHzIoE94oXVapXanspUo143F3I4HIZOp5OagdFolHm+fr9fDmp+yUwmg1gsJkIQ1NNmTZkblipiBoMB4XBYjCE3sJpqoDE2Go0yXowHLhV+uvvYekVHNMputxtut1tmD1cqFVl0zAqoM4iHCaqWrFarlTWgHtZ8lurUIYfDIU3+ZF52tx1w8fLvrVYL2Wy2Q4mHKUdubPabEuQuMCsDQDxcNdWsXi+jLb4fI3y1pnyYceZ3Zuqb320/AZxnGT6fr6MeCHSmdwGI+psKPg9Gysy6qSx/1aHhGUKHn+9nNBpx8uRJYdjeuXMHyWSyQ69A/Uy1PkzHwefzwe12Cy+CZaxIJNLzAGcEzWdJx5AjNr1er6yzaDQqJFK28w3T8wf2HCxOCVTHAmcyGSFjqt85kUgglUpJWZRnBtvjKBjS6z5xbWSzWQSDQXg8HsmoXrlypeN8aDQawizP5/PSzkX0+xy49qjxTg4M7YK6pw8TPlLFsAYpdw1koDOZjNSeeKNZv+PC12j2Jk2Njo521OecTif0er0MM4jH46jVaiLjSM9E7ZPmf+VyGUajUeoL6u+MjIzA7/cjlUphc3NT6g0Gg0HS5FwErJXr9Xpks1kxqAelKUleItEjGAyKp80Nu7OzI+IEaqRHmM3mI80YfVpBRSbeW3Wcorr4uED53dXhEgaDQbxmLmK2NHWj2WyK1jrXCbMiXHdc+GraWa0Ndae2uzdpd8TM9+t3uo2ajue96X7mfr//kXnBzyp6pXeBztIHddSZ2aAx5OGtKnrp9XrJyG1sbHQ8o3K5jO3tbXnWTqcTc3NzmJycRK1Ww+7uLjKZjETqNJ52ux1Wq1XWGbNmJpOpI4DgdTMVvp+QCZ0uk8kEr9eLQCAgEbjBYEChUJCSVjabfSRjwJTpsBAFJycnhQQYi8XkPKUACPBwJC0dZu4r9oSr3JPZ2VnYbDbRlOAzUp3/ZrMpqn2q46w64sy+Aui5D/uBGhHTDnWXtHqRR/l6kmDVc5I/G4SLMrDUp9psT4+UzDWLxQKz2SxEoO5pRCTxsEWG/ac8xHmj+RpOJGErlZreWFpakgje4XBIC1Y2m5W6ABcPNwtTKkxx9Hpw9IrNZjPMZjM8Hg/GxsZgt9vl+zQaDWxtbSGTyUh9tXvsHrDXszc6Ogqn04n3339/0Fv9VIO94WRYsiyhtj6oHiSdNxr0arXaIUwAdC54tV+eohg8tLnu2KvM1Kp6INbrdSnDqKl3vrabba1uRl5nPz3s1OKmIe9OrRNM+Q0LdnZ2Dj1o1PnKwMPBNex7pYaA+nzo9HbDarXC6/XKf2azGclkUhxzdpXQENChpgAF05M8W1SZXq6x7mlVwMN0KaM+t9sthprrKBqNSuZM5bcQ5KecOnUKNpsNf/Znf3bk+/40YW1tDR6PR3TInU6nRMGFQkFKjVqtFj6fT4yl0+kUns7a2hp2d3exsbEh6m8km9GZ6pYGZU1fLU+dOnUKm5ubqFarIiajTrSjilf3md9LpVLtzCAOSr+rbV90NJl9e1xi6EAG+pVXXpGaMb1fHs4cmt3rywEPGbxc3CSSsJ9QjVjsdjvcbrd4nEajEcAeoSsej4uurc1mg8lkkhnMLpcLtVpNomJGdezRJH2e12I0GsUr93g8GBkZEYIaFxevjZJyiURC6svdHpVOp4PZbMbk5KSk4MkSHDaQYQk8JExxoe/XL8hnTwJfLweJBB6mlbjGVAPL1DkJOKVSSYaTqNEPD2rV0Kqp9F6qdOqf92uvohOnttQcpA7E6LyX4RlGqPubUJ+hGk3sVwvkHmV92OPxSGcHy2axWEzKWnwv9eyp1WpS/6R4iPr+3REYmehut1u+A4MDjjhlm1AqlUKlUpF+ezXdSeIah6g899xz8Pl8aDabono2DCB7OhqNSuQ6Pj6OyclJJJNJOatJGAT27nUkEoHdbsfc3Byee+45WCwWbG9vdwjYABDhm16ZGnWvFQoF3Lt3DwaDQfg/4+Pj0nUD7EXWHE2aTCZ7lrnU9+6H/Ak8PCN4VpGXs1+7Za/fPQgDkcT+y3/5LwAgDeE7OztIJBLI5XIDHz40ZoFAAC6XSwrxLOxzpCAnS+VyuY42mO4vSylQzn3t+JJKVGy1WqV/m5ueqUn267KHjRE3PcJedWqm0kh4GR8fh9FoFDH1ZDIpg+uHgRhCZ0m9xzwUSbLrdsBUow1A1L0AdBDDGIWbTKaOjIq6RCkAQQEag8GAYrEo2Zbu+cTddSA6gaqO9mFgfYuZITp5vVqxVCUt/p0HvU6nE6b5s74OKKc5SF11kPtOshjbYarVqmgPNJtNUesrFAqyxga5DovFArvdLnoLwB5bnLKd1WpVSE9MU/JMqNVqj5DEgL21GQgEMDMzIyNX6ZhEIhGsr68jFosNzRqg09GrjZRZTVWBj3oT6vM3Go0IhUIAHrZT1mo1JJNJOWtVbkf3eqNhZGaMXJKJiQk0Gg1EIhFZGzabDS6XC+l0um89dlWel/wIdSBON++iG3Q0STru5rM8UZLY5uYmxsbGMDU1hYWFhY568u7uLlKplHi1h23cZrOJSqUiyi+BQECm4pBYkc1mD9Wv5SYhQ5I3Ra/Xw263w263S6rL4/HA5/NJ+oRtPWy1YoqkUqlITZm1zm6PymQyCRN9YmJCDoxkMinXrw7+GBZwYTL7oLYycaGq8phMIamHWalU6mh50Ol0cLlc4gDxUGRJRG2tUOvCqj432dx8rZr9INTI+DDvlY5Cs9kUwXx+Vi/vmhtZPUzYu83PfJL9kT9pOJ1O6QE+qAVRxWGRiVoe4VANGgCuCzp7KuP+MOPMzA37651Op5TjqPxGXQTySKjrz/9Y2uo+jDWaPUnHhYUFzM7OYnJyUspq4XAYGxsbYpSPoiT1NMPtdsuQHI1Gg93dXSHx5fN5GQ/bPZKXzio7etbX10X7wuVyYWZmBgsLC7h37x7i8bjwFsgl4t8NBgM8Hg9SqZR0/HCNhcNhKZ8S+wmkqNhPL1/NivDc4vl0ENRMIs+AH1ub1cTEBIxGIzweD0ZHR4WFTeWUer2OdDqNeDwukScfAtND/LMq8kHSkUo04hdR/wM6696U1ONsYovFAofDIdGUxWIRIhs3B8c/chPyIKBXzHag7iiM5DKn04lQKIRAIACbzSbtU4zy1VqpCqbFn3WvmVCfC1PcqvC9+jqgM5XUrSIG7NVoAfT0bPttYejntb02h7q+qIrEg7Q7+u8FdSjDfq81GAzSgz8M62BmZqaDcctIopsoyIyCSpTpF73WDvAwk8HXqO9PbgIjYZPJJLVpMvMppsEZ8dTt57nEc6K7bEEHENhzUE6cOIHx8XEZqJNIJLC9vY2trS2ZmtU9BpefMQxrgPeWZDyj0Qij0ShdOORxdDtQ+z1XwmAwwO/3o1wu94zOe2XFjgL1OkhopJ1SbRIVEwd5325ymAr1jHqiETSJHZlMBltbW7h9+zbcbrcwm30+nyxWFuS5cVlzzOfzIqvJGi5vAA0vbxi9JRbfdTqd1KX4M7Kz1d9ldM7DkFR7TjCiyADJKftF6BxJ5nA4RLuXpId8Pi/CCGwlGqZI+TCoBpZa2PQ+u+8FU0GMeHpFkwelnA7bHOomPey1PMRZ1qBR5ebkWuyuSatGmN+H/6ntXP9Y1gAjCEYRalYK6FwD6r0FHjq8NKzAw+hadcD578yIAQ/7jXkecO9zv7NXli196oAVDnTh2UTuAM8iGs9uaLVaeDweTExMIBgMolwuy4jNSqWC9fV1fPzxx8JiVqUihxkMbKhhYTQapRV2enpaBtcw08Io+LCMC6fS7YdefJGDwLXEs1udYMcBO+SvMOvHUkw/pROeB91r+Ulg4GlW/D8j0nw+j93dXdy9excWiwVOp1M8KtZ0OJJQNYiql0KoKQpVSEQFNxpTUDSO3HT0iPkfGdvcNKq4BkEvnDrcoVAIY2Njos3K19M54SbsNdayV3Q27FAzId3fV/Umu3+HP1f/flTsR7zgc+V1cFOqfc/9tGEwY6Me4oMeFMMG9TxQ29h4r0kKpTPELIlKFlTTfuQgqL/LtaXyAOics8zC92H9kgphdJ5ooFVDrGZ7ekXoer1eBIioLkZS6vr6Ora3t3Hv3j1kMhlprTxKluBZB+8fVbU495rtaPxPr9fDZrPJ0CGey2T0H5T6p5PG58J/I/hMVYdNPQ/4/OkAUouDZUi24jFI6KcMwbXc3ev9pDFwm1X3gubBTBY3h1Tz8CMTm2ln3rzujciNRq+lO3dPQ8nNpbZrqAcDf3bYTdZoNDJQg43vHo8HLpdLmKKFQgHpdFpS9WpU0O9D4eL6x4Lu+8JnepRFrBr2/Qy5em+5ibmm1AO/u58SgIjcdKfJ1BGRjLLZc93rGv4xotc+6D40gc6pdOq+VzMZ6s/UGh0NnsoABx5KgKqvpYPAc0N1GLq7LVSwHYvvwy6M6elp2Gw2qVlmMhncvHkT2Wz2H1WUPChUg0iDpzpszHgyu8FzmKUl1QDTwWo2mx2BWnfJU9UuYNDHoK3VagkPSZ3BQCnYVqt1YF86nY16vS6Ofq1WE85LLwfvSWIgA616nv2AkW46nd7XSKk3up80pRrR8s/dJKT9QJIIU+ScC0xh/Uwmg6WlJSGKMDXzuA/gH5OB7oWD7t9BP1OfaS/DzEOezHJGSzyo+1mrquCM2revGnU+v8c5kIdtDagp7sPQK6uy3896QT0Eu52pXu990HNnCpzclcnJSczMzKDdbos0aKvVkgl5LGORrHrQmjwMakp/GECD1c994HcnQfSg16lQDTX/rvIOuqV4NRqNBFmJREKIf8z40nnbr/WVs+A1Go30tKslOgaej1P3pgPRz94ZWEnsJ42DboxaB2Wtmq1BbKmw2WxoNh9qY0ejUUmBqwSBf6hrPsZg6PZayTcA+rvP3QeKOu+Z6dbuzXP8/B4Fa7lPI9TImqQxv9+PZrMp8wTYrqfRaLC6uopsNivDEngWqFH8MR6FqhXxDwW1lNZut0Vohj+jzCqAjn3d3QOv8iYoLUvxJZZgqcnQbrc7+BXq+xwFLO+oE/f2w5Fq0D9pkI3JdCZrD+xzVutUTI+VSiXpreN/x3g20d33eti6VNPj3anyfyhDrNZRhwH9qKz9JOB2uzEyMgKNRiMqc2yrYocJRxOybHWMo0F1ZH4S0Gr3Bul0z14+LMBinZp1cgqLMG3dfUY86e/XaDT6VhXsy0A/LYaZIEmNs5c5UJ2ye3yN2rv4NAyteNru4yB4Wq6dUdGgv0P8pFKMHCDTfT3PGp7ma6cKod1ul1amXC4nkcqg7TI/TjzN9/Ew8NqfhvkCDodDInlG81Qv2w/kM7Cr6CcBOoaHrYO+DPRP6kschGazKfq3zwry+XxHL/GzhKdpDfRS8HrawRoncLwOflxotVrY3t7G9vb2T/pSDsXxGngyoCDKswaSDw9bB30JlbRaLezu7kpv4TEGA726UCg0cPT3tOB4DTw+jtfBMY7XwDGA/tdBXwb6GMc4xjGOcYxj/MPi2XThjnGMYxzjGMcYchwb6GMc4xjHOMYxnkIcG+hjHOMYxzjGMZ5CHBvoYxzjGMc4xjGeQhwb6GMc4xjHOMYxnkIcG+hjHOMYxzjGMZ5CHBvoYxzjGMc4xjGeQhwb6GMc4xjHOMYxnkIcG+hjHOMYxzjGMZ5CHBvoYxzjGMc4xjGeQhwb6GMc4xjHOMYxnkIcG+hjHOMYxzjGMZ5C9DVu8nh6yePheILNMYDjdXCM4zVwjD30uw76MtC7u7uYnJx8Yhf3jxVbW1uYmJj4SV/GkXC8Bp4cjtfBMY7XwDGAw9dBXwba4XAAAAwGAwBAq9XCYDBAq9Uin89DnVip1WphNptRKpWg1WrRarUQCASQSCTkdyqVCgwGA1wuF3K5HGq1GrRaLUwmE+x2O9LpNBqNBvT6vctrNBp7F6vXw2KxwOl0IpvNolAodFynRqPB3NwcDAYDJiYm8NFHH8lg7F4wm81oNBry/iqCwSDa7TaSySRarRY0Gg1GRkbQaDSQSCSg0Wig1WoRCARQLpeRzWYfeQ+j0QiNRgOn04l4PC738VlE97UbDAb4/X6EQiHs7OwgEons+7tarRY6nQ56vR71er3jflutVvn3SqUCs9mMUCiEmZkZrKysYHt7u+P1Go0GBoMBVqsVJpMJhUJB1kqr1UK9XofZbIbf7wcA1Ot1VKtVVCoV1Ot1NJtNtNttNJtN2O12aDQaVKtVNJtNNJtNaLVaOJ1OeV/1cwGg3+ms9Irtdju0Wi2KxSLq9XrPe/ksgdeu0WjkXnDfzczM4Pr168jlcmi32zAajbLHzWYz2u026vU69Ho9bDYb8vk8ms0mjEYjLBYLTCYTdDodstksqtUqLBYLHA6HnBHNZhM6nQ61Wg21Wk2edbvdRq1Wg8FgQLvdRqvVkuu1WCwwGo0AIK8pFApot9vQarWo1+uw2Wyo1+totVowGAxoNpuwWCzy/crlsly71WoFsLeuNBoNarWaXEO1WoVOp0Oz2ex570wmk6zRYVgDzz//PJLJJNrtNnQ6HRqNBpLJJBwOBxwOB+r1OrRaLRwOBwqFArRarTyrdrst+0un0wHYu8/1el1+xt9vNpuw2WyYnJxEOp1GLpeDVquV96tWq6jVatBoNLDZbPB4PHC5XLDb7fB6vchkMlheXkY6nYbFYpE9qZ7/3P/NZhOtVgsmkwkejwdmsxk6nU7WYS6XQ6vVgtVqRaPRkH2tPvNyuYxqtYp2uw2bzQan0wmXywWbzSbrL5vNYnV19dB10JeBVg8ng8GAVquFUqnUsUkJGtpSqSSGOpVKQa/XywaxWq2o1+vIZDLyAIvFImq1Gs6ePYtyuYwrV67A6XRiYmICd+/ehcViwdzcHMrlMpxOJxqNBgqFAjweDzKZjFybXq9HJpOB2WzGxMQEFhcXAewZAqvVilKpJAeyTqfDCy+8gJWVFcTj8Y6NzWv2eDwol8vyPWw2mzgefCj8PbfbLQ8Q2DsQ+MDU+/gsQr12m82GhYUFTE5OYm1tDfF4/MDfpbGqVCpot9vi3PBgKxaLsNlsOHXqFPR6PXZ3d/HBBx/IIWg2m2GxWJDP59FoNOSAVtdltVqV9VgqlbCzsyObrdd3CYVCCIVCWF5eFsNptVqxsLAAu92OO3fuIJPJyO+o65zXz3/v9Rn8t0ajIQaI1zMM64D3Q6/XY25uDuPj47h58yZyuVzHa2kM9Xo98vm8OOnJZBIA5Dzg+ZDP5xEIBDA+Po6trS1Uq1UUi0W43W7UajVxeiuVihjIVqsFnU4Ho9Eozr/RaIRer5dzKJ/Pw+l0ynuYTCbU63V4PB44HA7s7u6i3W6jUqnAZDKh2WwiFAqhWCyi3W6jXC53BAx8ljqdDtVqFcCeQ07nrxfoBKj38VkEr73Vaonz22q1oNVq5X7S+NJpKZVKch62Wi3o9XoxqDxfuQ9brZY4S2azGbVaDX6/H+Pj43C5XNjd3ZVgLZ1Oyz3X6/XieOl0OmQyGWQyGbRaLdjtdjidTni9Xvl8vV6PeDwuDoPJZILL5UKhUECtVpNrcjqdcLvdAPbWayaTQalUgk6n60hP8+9c741GA+VyGYVCAfF4HC6XC36/HzqdDjabreNe7oe+DDRhMpnEu+HiVB9au92WG0QjDUCiFmBvcdvtdvFAvF4v6vU68vk8ACASieCtt97C3bt3kUqloNFo0Gq14HA4MDc3h+9///tIJBISsZ45cwY3btxAsViUB1QqlXD37t2Om2qz2WAymfDaa69hc3MTt27dQrFYxNTUFBwOBxYXF7G1tSWbS6fToVKpAABcLpd47Pl8vuNAzmaz4unpdDq54fTEW63WI5H+swyr1Yrz58/D6XTi+vXr2N7e3jeq5OLlhtNoNDCZTDAajWg2myiXy2i1WnC5XHj55ZdRq9WwubmJbDaLSqUCn88Hn8+HWq2GSqXSkaXQ6XSYmJhAtVpFJBKRiLpUKqHZbMpmV0HjoNVq4fV6kUgkxIBoNBoEg0FMTEzg6tWrYpzV70CoxsloNKLRaHQ4H1yzAFAqlWQfDBN4uL7wwgswmUy4ceMGqtWq3C9GJu12WxxwnU6HcrmMRqMBi8UCq9UKg8GAfD6PYrEIi8WCixcvQqfTYWlpCQaDAblcDh6PBxqNBmNjY0gmk8jlctBoNLBYLBJFO51OMfrch3SyC4UCJicnJSvC2mmr1cLk5KRkfxjNa7Va+Hw+NJtNiRD5WTwT+HzV84LZQY1GI8acTqb6O8MCBmq1Wg1OpxNWqxUajQa5XA7ValUyrty7dJ5Uu1EoFFCtViVLwQCw1WrBaDTC4/GI/SgUCnKmm0wmyXLodDrJvlitVtmfdrsduVwOiURCPtPv90Ov12NkZAT5fB4ajUb2ut/vl59nMhlks1l4vV4YjUb4fD4Ae3vf6/XK9+F5wvfXaDQwGo2yBtWsQTweRzabhdlslvc7DAMZaHqY3YsTeJj+pudhsVhQrVbFU+XvtNttZLNZWK1WuN1umM3mDq97Y2MDNptNbjI3XaFQwNbWFlKpVIdBmJqaQiwWw/LyMiqVCvL5PKrVKnw+n2wMplw2Nzexvr4u0Ve73caVK1cQCAQQDAaRTqfFCNArrlQqHd6yy+VCNpsVD5HRsd1uF8MD7B3edrtdor5hwdTUFAwGA65cudIzrQ9AvFNGOvROLRYLNBqNpIX4HCuVCn70ox+hWCx23KtisSgZD/Vw0+l00Ol0sFgsqFQq0Ov1kv7S6XT7HoQmk0mM6f379zs+q91uIxKJIJ/PI5VKAQCcTid0Op1kd1Q0m80Op1RN9x50DcMCt9uNV155BcViEYuLiwiFQtjc3BQDDEBSuTRSpVJJohm32416vS7lLLfbDb/fj2QyKanOQqGAZrOJSqUiKUOj0Qiz2YxWqwWbzYZSqYTJyUlsb29Dq9Xi1KlT2NjYkDOFBrnRaMi55HK5kMlk4HA4sL293XE+cf/G43EJRJiabjQaMBgM4pDT6eQzbzQaHYc18HA9MMIbprOgXC6jUqnA4/EgEAigWq0il8t1OKt6vR7VavWRe1OpVOQcZtmKBppOvM/ng9/vR71ex/LyMkwmE9xuN2ZmZqDT6RCPx5HP5yUNDgATExOIRCJot9vw+XwwmUzIZDKylgqFAqxWKyqVCra3t6UcZjQa4ff74XA4xAkrFotyDcDemi+Xy7BYLNBqtSgUCqhUKqhUKuKMGgwGWCwWcTKazab8G20jS0D9YCADDUCiWY/Hg62tLfkgep61Wg3lcrljkfZCoVBAuVxGNBoVz5Ue6t27dzsiIIPBAK/Xi3g83vHFdDqdbDBeWzKZlGtgGqFer6NcLqPZbOLOnTsAAJ/Ph1arhXg8jlKpJLWBXuD7Mx1vNBrF8+PB3X3D6/U6TCbTI3X0Zx2ZTAYrKys9I1RuNKauGTlarVZYLBYUi0U5aFVUq1VxiFRwo3SDtaLFxUV5r3g8Lu+/H9Tn2+t5cLMRTF/SwKiRMd+DHAce2L1S3oPWr58FXLx4ESsrKxJlRCIRObyY/qNhAyARst/vR7lcRiqVQr1el70N7DnjJpMJuVxOuC106OjsMbNlMpmQTCbhdrsRiUSE48DShtlsloiNKXWfzyfPzOFwoFarSQpbfXbqfqdhVtPXVqtVzjidTtdRz6ZzZjAYUKvVYDKZJJrk+3Q7e88q8vk83G43gsEgyuUy0um0GFhmDhnhsqyg1WqRyWTEoGq1WlitVjidTqn7qs+atiEQCKDZbCIWi0nUvr6+jkQiAa/Xi5GREQB759P6+jocDodkae12OywWixhR1qHtdjtsNhvcbrc4cblcDplMBuVyWdbN/fv3EY/HMTk5CZvNBr1eL1lZnheJRELKbIz+HQ6HZJS0Wq2UZ5jS7wcDGWh6jIFAQNIZ6qGjHtr8c/eBydoBPRoSc0jyYYTDFAE3aT6flzoQD1eHw4FEIoFwOCyv5eJn/YELiTeE15vJZMTD4sGt0+lgNpvlQO6+9kajgWg0CovFArPZLPWQVquFYrHYUV/S6XSSohumaKqbDMaUFAkRRqNRIk46NHq9viPr8KSgrj1GvYOA6af9DGc6nZY/k+CRzWbl9WoUxfug0WjkYCgUCnI4sV43LFhdXUUqlYLL5UI4HEatVoPP55PIlAciM0wjIyNCFsrlckIAU9cKAMRisQ4Dxnut7m0AkkpWjQLLG3q9XgxnrVZDLpeD1+uVZ8KoOh6PCwmIHAcaDjUTotaZ9Xo9yuWyPG86GSQqcj2R46JmE3ioD4uBJq8H2HOQq9Uq/H6/lK/4PZl+5t/pTGk0GjgcDvh8PsmaajQa1Ot1CaqKxSLMZjNMJhM0Go0Q0WgMGa1yDWQyGZhMJhSLRezs7MBkMsFgMGBsbAxOp1OieD6XdDoNs9ksHAieUw6HA3a7HZVKRWxMNBrF7OwsQqGQrBnaQda8ma5nOY/2zWg0Ip/Pd2QN+sFABprpRKfTKTUDAELaUqMP9TBivYpGTI2ieEh2exRq+pypMGBvg/BgrFQqSKfT0ku2ubmJRqPRk7zWTdxoNBrIZDIYHR2FxWIRohk3N1PZ9ALVFCY9uPHxcUxNTUntmocR38dmsyGVSokXPWygV0xvk44UyYAkZpAQ+DRB5Qyo6fb9wA2tptPUsg03nsfjwaVLlxCPx3Hz5k3YbDbY7fZDiXTPGuiUFItF5PN54ZKwEyOfz6Ner8Pn82F8fBzJZFLq8aFQCEajEZFIBCaTSVJ/JOv0C762Xq/L4a/WpmkEmB3jYclDlAxa1sbVQ5OsbQAd0R7JUDTIaoTMAIMGwG63o1arydqx2WxDx0dpNBodAVCz2ZRygl6vh8/ng06nkwjTZDJhdHRUMg4ejwc+n08ct1qtJlkrnrs0aGomivVd1pyz2SxsNpuwvaPRKBqNhmRRaej5Z2bLKpUKisViR0mEKWtGwR6PR2zNrVu3kEwmMT4+DrfbLfubwWM2mxXimtlslrXCLJHKUu/HJgyc4ibU9iWj0SjEjZ4fotdjYmJCUqOMNPZjwHZDNZCq98mah9puAwAejwfZbLbDKPdKUVarVWSzWUxMTKDZbCKVSiGbzcqmdjqdCAaDqNVqCIfDqNfrKJVKmJmZwfb2NsLhMILBIMbGxoSCT5jNZoyOjmJnZwcGg2FoDDQNMTMhpVJJDqVcLgedTgefzweHwwGXy4XR0VHcv3//x5reVTdqqVSSlCPXmJqGZFTEdBfQX+qZdTQalO4WLB7e5XIZN2/e7Ii+Vcb/sCCRSEgGi+TRWq0Gr9eLXC6HUqmE2dlZmM1m7Ozs4Pz589DpdIhEIojFYpIeZWnicaA+P5J22EZXLBah1WpRKpXk7wwYGAFbrVY4HI599yjfn5Eaoyem8jUajdQa+VqVuEbSLNuDhglkcass6mazKYxpRqC8t2R6My3OLo5kMikZjEEyjjzXq9UqCoWCZKtYtqTtYNqaHTxqoGg0GoXYxRIdz/NCoSC8hYmJCWSzWTx48ACFQgGvvvoq9Ho9AoEACoUCNjY24Ha7hZioOgJer1dKnqrTeBiOZKCZKuJi5GGkpg5UcPOy33WQB3BQXyHTh9lsVljgwF6tkVR6lUHMOqgKpqADgQByuZwc3Ix82etrNBqxurqKVquFaDQqC3F3dxcWiwVer1eYhvw/H8AwsXh9Pp+wdS0WixDFGJ34fD4Eg0H4fD4YjUbcuHHjwB7pg8DF3KveTWi1WthsNpjNZkk/6/V6WK1WYd7TWHeTupia7xfNZhO1Wk02sto+x5pjN2u723EbFtAp5/2vVqvCNdjZ2cH09DTMZjMSiQRef/11SReqmYhIJLIvz+CoUKPnQqEAp9MJABKZMbJhpMd6aSqVOvCsIejwsYWU7aY6nU4yCMw0hsNhiTL7DUaeJdAwc1+xU4alLWpGMLtkt9sxMjKCUCiE0dFRhMNhbG9vI5fLCUG0135UAytym9TsFSNqOuh00qvVKtLptDzTcrmMcrksKW2+N50sBpgktLKdjnwjm80Gl8sFrVaLRCKBxcVFnDt3Dk6nEyMjI4jH40gkEtDr9XC5XOKU2O126WpgBM3PPwxHMtDdh1Cr1YLX65UoQ72xZrMZ1WoV29vbcuAetFAZnfFhsY2l+5BWW1xUli+JagDg9XpRLpcfaY1SQYM7MzMDh8MhkTcZ6+FwWN7rxIkTWFtbk4PZ4/GgWq2iVCohEonA7XZjamoKiUQCxWIRGxsbA3uETztYWzKbzcKoZ/RosVjgdrslxbm0tNThOA0CnU6HsbExGAwGbG1t7UtKY/TDg5IRDgl8PBhZSuEhQu+9Oxo+DNxoZrO5Iwv0pA3N0w7eu0AgIFmJqakprKysCEclk8ngc5/7HO7evSv7kl0W0Wh0oH3BzMV+DpVGo4Hb7Za6NAVKKHzCVLQqWsLyCw9tGtmDziieSzT2qtNH40zjrdfrhdBWr9fh9XpRKpXk/HjWwVo8gx+SoqgVEY1G5Sy22Wx47rnncPr0aQB7QV0ikZDoej9nWbUH7ABg22X36xg5kyRoMBhQqVSknMHMGTN+fHY02CT98SxTe7x5TtRqNbhcLgQCAUSjUfl8p9OJmZkZ1Go1JJNJ6PV6+P1+6ZlmSxY5DAcFHSoGyrewvaGbyOF0OhEIBB55vcPhkJBf9WAPA70wYK/OQeUXuei/j95YD+YBS9IBW76YujgITDWwjsbfJZrNJiKRCHZ3d+F0OvHcc8/BZDIB2DPuJ0+eFBEKEmRefvllmEymAx2DZxUsJVCZi+ljANJmlk6ncfPmzSMbZwDSzM9N1Qtmsxkej0dIGJOTkxgdHe3Jc7Db7ZidncXrr7+OCxcuIBAIyOFyFNRqtQ6WJsFonaBT+iwLU/QCU8jNZhO5XA7T09MSLblcLsTjcVy8eBHXr19HIpFANBpFPB5HKpVCOBweaF/w8D8ILKnk83m4XC4xzsxoqd0WVCljhoX7uVwuS2/2Yd9djRxpHBiR0wCwLk0Gu0qGGwao5wAzBcDemZ1OpzvKCSdOnMCXv/xljI+PIxwO486dO9jd3ZUo/CDHi+znVqslAUC3PQAgnTq890ajETabTZ4pM2DsIOLrzWYzvF6viKGQUU47pPaxl0olJJNJaDQaIQnfunULpVIJPp8P586dQyAQEA6D3+8XASs1pd1vyXOg1cJoQU0Ts1ZbLBY7PEN6VaoUaD91OBpZpgDUXkP1M61W6yNeF1PLXCi1Wk1IAkDvth0acRpoi8XyyGvIHNzc3ITZbMb8/Dw0Gg2y2Sy2trYwPT0tC2BpaQk6nQ7nzp0TUsIwgRtGbUuhF0rGJHtIjwJmRtrtNra3t7Gzs9Nz85KsaLVa4XK5cPLkSWmb6yYMhUIhfOlLX8LP/uzPwufzSfQ2OTkp0rCDgk5AdzthNyucqX9G3MMCRhYkSK2trWF3dxcjIyMol8vweDySviSDN5lMdtTm+wXT4/tBp9OJnO7U1BRGRkYkm8eUtM1mk3KJ2WyWyJ9GmvtezcAdBBJ9yGJmloY1TgAdUXY+nxeFqmEBS4EkiTFbQCMG7PUOj4yM4J133sHo6CgePHiApaUlJBIJ6Ys/6P2ZFWMkzR5plThGwhmjUvJjeDYEAgFxpums8ZrZhkc5zpMnT+LMmTPSidCdiubvZzIZcUaj0SjW1takVDo+Pi6ZnEKhgJGRETHS7BHv93wcuM2KFwnsKWyNjY1J07daJ2DKm17KQeBNpiel1+slNZ7NZqWWTJIPafu93pf/5nQ6RRWG/dq9Xt9oNDA2NoZ0Oi26qaxldhv/ZDKJBw8eYGpqCsFgENFoVKJmprGq1Sp+9KMf4eWXX8bp06exsbExVGIlzBao34ckGLfbjUajsa+AST/vPTU1hXq9jo2NjX1JFNxQfr9f1IQ2NjY6VM1YXnE6nXj11VdhtVrx53/+59jZ2XmkHe6oz6aXF9ztTNCJGbZMCvegmsGioAO7I7a3t2GxWMSAD8o9YTtmOp0Wx63XPbdarchmsxgbG4PNZsPW1pb04pfLZTmj2u025ufnxYCQG6DX66XdhudPvylI6i1QUIcZJVWAQ23NotDJMIDOOZ12n8+HdruN3d1dYbE7nU68+eab+PznP4+vf/3r+OSTT5BIJA6NmoGHym4Oh0PUARkIqvucWRHCZDLB4XB0BEhcrySiabVakd5kypzn2muvvQatVos7d+5IOloNBhkds1XX4/Fgc3MTFosFp0+fFrUzdgqZTCZMTk5Co9Fga2tL0t394LHyLQsLC5idnX1kAILL5ZJWrH6iZpPJJB6uSsIAIExLLgT22qbT6QO90VqtBo/Hc+ihoHpdrBvslxZvNptIJBKIRCIIBAJCNtne3u7IHuTzedy/fx9WqxUvvvjiMzu1phd6tQcwhexyuZBMJo/EWNbr9QiFQjhz5gz0ev2B78GBGjabDdvb27h165Y4YeyxJD+BfdnvvvsuNjc35WCg4eynxWoQdKe4gYdp1R8nk/0fGhaLRdrrVHGKra0tTE5OCk/B4XBgY2NjIOOs1+sxMzMDq9UqDtR+bSlMTzKLt7W1JWISbLPh2fTyyy+jXC5jd3e3Q5GwVCrBZrOJVCR7W/sBWchqupu/bzKZRFeBwhnD0s0BQNTcqAnhdruRzWaFD+JyuWAwGPDTP/3TqFQquHr1qpwPB+0FprN53k9MTMhZzqiU3BdmLVTyoeqcdSsZkm0fCoXg9/slq8JM7927d9FqtXDx4kWMjIzAbrf3FN1SjTSw5ySGw2HhLNGhaLVaSCQSKJfLmJiYECemXwxkoNVwn55NpVLp6HHV6XRwu919p3PofXm9XjHKvJkEv5Aqnn4YKUej0WBmZkYe1n7gQyfRyOv1ypSj/V4fiUSQyWQkTUa2n3q9u7u7uHnzpnhZw4LuZ0pdW04sexzGci6Xw61bt7C2trbva/R6PcbGxmC1WrG8vIxIJNJxTfR0Sfool8t4//33kUgkjnxd/UJNx/HvrEEPG2q1Gux2O4CHZahisSgqW4lEQqKTQXt/jUajrCWWH3plOejUqQIkzKxls1lRCuPwnJWVFWxubspkLLa/qb/PtOsgtWJm58jRAR5KH7P/li2hw1SD5noH9gwU5S8BiPDI888/j4WFBXzwwQdYX18/1CHmXuGzJM+EfAe1E4COPG0BM2LkRTDDSeIffzY7O4vR0VEUCgXs7OwgHo8jEomIytx7770nuvwul2vfUiWJxEznt1ot3L9/H5FIRARpWPLgtYyMjIiKZT8YaLWokSXHQm5sbHR4hWzcpoReP2APHR2AbDb7yKQQ1op5U7p7H3vB7Xb3tSHy+bzId+r1+kN/r9FoIBaLQaPZm4rEOpQKjWZvks/169cfu8/zaYNqcOx2u7CiVQm/QdFoNBCPx/eVEQX2njNJIltbW4/UM1ljomhMvV6XGtk/BBgpqyl0pjiHDZTlJWHKYDB0EEKNRiOsViuWlpYGzhyUSiURvDnIEac4CjW2WUpi2YnrtFarIRKJYGNjQ/pSuw9IakWT+ESS2SDgWER2nXDEoqrlPkxrgf3fnDuQzWYlm+B0OmE0GvFzP/dziMfj+OCDDwayCeSzNJtNGbQCPAzWyMKm+BXHlZI4zHpvpVKRkgZLb1arFfl8XoZ6sCy3u7sLrVaLmzdvIhaLwel0iiTofvaA9iiVSqFarSIWi+HOnTvCzWJtvlgsIhwOo1AowG63SznoMAxkoFWWHoXm0+l0x2JnmqNfMgS/oPo+bFPiBqMQBXsbuw/wXjevWq1iY2OjLwNN4ls8Hke5XD7wgRBMb1itVszNzXV4WRrN3uQdl8uFRqOBjY2NQ6/hWQH5AcBDaVQ25f+420dsNhumpqZQrVYf0WXvnpLD6OgnVftlmo6OwqCH/dMOqsWxTkiNaQ4ScDgcWF1dPfKaoCjIftkH1hmpWEbevVt8kQAAyV1JREFUCPuxVblglWvAdp1eUOfU9yKLHgZVTZEGnwZMFbIZFtBAk9TLtiMStBYWFnD69Gl89NFHWF9f71uUCtgLyKhUF41GO4Ictiuxd5plFlUbnQRBOuyq7GyhUOggqLHcRXY3AMkKUxFRnVTY65o5VpJa44VCAT6fD3a7XUrAzOhUq1W4XK6+7vFABpoX7/f7EQgEkMlkOjSoOeA6Ho8PRIRgSooPhx4N/072XqlU6umFqekvenPtdhv37t3rO7WZz+eFOGK32w/1dNvttkw+crvdHW1m7fbeVJMzZ85ImnVYwBIDAJmvTWbsj7MXmCIoZE2qz5zRTq806EEbS33vJwmSHtW/D1PkBDyMXrnWSZC02WyiVb+7u/tYn0GRmW7QAWYZjQcwjXEmk+nQXBgdHZXo9qBnTb1sZgQGXRc0DOrwHv4bjcgw8RB4f/x+P1KplJS3/H4/KpUKvvzlLyOXy+EHP/jBQKUvGlX2H4fDYSQSiY5SJ/BQj10tg6iTs/jvlIJlH313BpZgoEamNgVK2LZ3EFSpZ61Wi3A4jHZ7b6IWjTzV5w4b6qNioBXI2gwPZt5AYO+mcXavyrLrF91a3uoQcDLwuj0wNQ3ODcXWGq1Wi1wu17cGMnsWK5WKROuHod1ui/bq+Ph4RxRdrVYxPz8vSkbDgmKxKCxIrVYr9+vH3fNNwo2a2lY3YS8RCxrKww7aJ3ndJAvx+oCHqe9hAsk1ZNEzrU1xjkgk8tjfeT+JVBK6uOZY/yUhiwTBZrOJQCCAVCoFs9ksRnw/sE2T/bJHYVtzLakzATjpb9j64VutlrRX0oCyd9jv9+ONN97Aj370I6ysrAzUKUGnhs+AGTqVHc9MCJ2uer0u5LPu0hKNJ9fjfiQ1tSTCdrtSqQSr1Srl1YPQbDZFb5yEYpPJBKfTCbPZjGAwKJmUfstuA4cOTCGwpYVfiqlPVQJ0UKgHJd/bbDZ39BqqIBGIP1NFA/i7/S4MHvQs6vfrPdfrdSSTSbRaLUxPT8u/x+NxrK+v9xRweZahpqDUNNKPcxiGKkLSaDQknaVu5P2MLEfDHYQnHUHzMH4cIZSnHdSsp5gMU53NZhMjIyMDzbwdBGRJqxEV1wJT1DxMbTYbstmsaHEflrZWddpZ9zzK8+OZQ6Yx1yhlYocFbFPKZDLI5XIiCpJIJPD8889Dq9Xi6tWrR+KAMIpW/+Oz4IAWAJKV4JlPw6x2U5BRrYrV9DovuJ4oS80sTL/ng9rfTCW9arUq2UWTyYRQKCSkwX4w8Mlks9kQj8dlA6q9YU+SkMO0oNPpRD6fl966jov/e1IQgI56Ez1fqtz0A6bTzGaz1Da6r6fXZmUUnUqlMDY2JoztRqOBy5cvw2g0YmZmZtCv/1SD6m5M54XD4R9bhGgwGDA3N4ef/dmfxfPPPw+fzyftbd296t0wGo0YGxt77PQy++/7gerhD2NqW4XL5eqYlU1CjspsfdKw2+0SkbKNhXoLFLGoVCoy2pIiIeoIzP3QarXkvWn0j+pkqNPSmAkcZB09C3A6nahUKtjd3UW73ZaBNRaLBRcvXsT777+PmzdvPpFBMeQRsK2NZTWHwyElV7fbDYvF0iHZyXOC64Tv1Uv3mw4VRU8Y5FHmkxkRNZLvBls3eUalUikJEJLJpDDS+8VABpo3oFuIgp50Npt9Yk34VP9xOp09CWcOhwNer1ceHB8evSUeGP1eT7PZhMVigcfjkaK+mkInMaEX2EKh0WikSR142Kh+9uzZwW/AUwqVoKF6pD8uOJ1OvPbaazAYDPjzP/9zfPLJJ/s6gd3tTdTfPcx5OOz6uzsKDoIqSkKW8zAdygSND9cAZ+m2Wi0sLi7+WModRqMRzz33HILBYEft22w2C2+E+5B1aNYjSTA9CCopdb8s2iD90XwPRnWUoBwWtNttRCIRFItF2O12WK1WuN1unD9/HqlUCu+9994Tc9S4p9UZDWNjY3C73XC73RgdHUUwGBQDTQIbDSZ1CKiTsN9gDn6vfD4vtWO1tYuZ2v1KZ2r93GKxyCAQdrpQfazfM2EgAz05OSnN3t3/zp7oJ7UxKV7CaVPdqNfrIqFGDWi19kdVq0FavWw2m6TpmDLpnp7SC6wplEoljI2NddSi4/H4P1ibzz8E1JTdj5vwotPpcPHiRVy4cAFf//rXsbm5KZ9JroHqNHHDMPPi9XqF5fs4UGUE+wEPZHrLw9T7SnAIBdW9nE4nnE6naDA/aWg0Grz88stwOBx48OCBtLNx1CUH11DISFV+oq7yYY4a65mNRkPOgW70u+YZUdJQUP1umAw0B9JQGIhnpM/nw4MHD3D79u0nIm1K40zDajAYMDs7i2AwKCMu+bmjo6MdZRcSCPks1TGjvZ4lX0cpT0pKd6+Fg/gEfL3VapUOAxIPOTWtX22MgU6OdDqNVCrV+QbKaLEnZZx5+AIPR0d2o1KpIBqNYnZ2Fh6PR24giV4UQ+8XjKArlUoH+USl4h+UHuM80omJiQ79bxINhgUul+tQpa8nBYfDgZmZGVy+fBkPHjx45OcUriHa7bZMFAuFQigWi4+s126opK4nBarYvfDCC0JcGjZwYA0PYIfDIYzqHwe8Xi8mJibwySefCCmN04Y46nNqakoyWGzTslqtmJ6eRi6XO9BYsAvAYDDA7/eLxvhROQRqBo9SwGzzGhaQuMX7pGYsI5HIY/GRusFac61Ww/z8PCYmJpBOpxGJRKTFqVKpYGpqSpyrbgEpdgN1T10EHpYkOASmVCpJ25Sqr65G5/utdaqMUYSLimaUQ+b50A8GMtCpVOoRMhC1dh83olLTS0xXOxyOA6fYxONxTE9PY25uTn6fhnVQL77ZbMoMT1WLu1shbD+0Wi1kMhm0222MjY11/M4wGWgyIgchTxyG7nSRTqdDIBDAxYsXUSwW8f777z+yoci4pRPGWvX58+dFf521scM++8dB5OIkpWEdQxkKheQQ8nq94hj/OFLblI28ceNGz15mGulcLieZNOpyOxwO7O7uHqoPrypicb/2w9zdD6x7MuNI+cthYvOn02mp07IMRA1sRo2DQs2QcW8yNc0e99OnT6NeryORSCCfz6NcLkOv10u9l2lp9dmxZAr07vjgGcTWKGYGmB1V+QhqLXo/8LziCFLepzNnzsBms/WdSRmIwUJ9bTWV7PF4jhQlknHHzcaUAZV4OFPzINCLpneqYtCNRbYd9XKPsjH5IN966y3cvn37yNfyNCOTycBms+H1119HKpXCnTt3Huv76fV6mR9MJqjb7cbLL78Mn8+Hv/7rvxZ92260Wi0RSxkdHYXZbBbltn6uiZ7/k476SExaW1sbOhU5IpVKwe/3I51Ow+PxIBqNyjN8HPCQJMmHuv7sh2VqUn2+1FHQarUIhULw+XzI5XIIh8MdnQb7gapnFJSpVCrQ6/VPpDOBhhmAKBUOC5hertfrsNls8Hq9GBsbQ6PR2Lc0uR9UiU+N5uHYYJJwM5kMKpUKxsbGUK1WEYlExAiXSiUEAgHR3VeHK7GLg2246pQzgq/j2Ey32y2O9VHbhumgkXRMx2V0dBSZTKZvfY6BVgvHfPFix8fHcerUKayvrw/sGfIhcIC5Ko+oDto4LLpZXFyUOt/jeu+sqdlstiNFA7VaTXqi1fs0TCQhrVaLmZkZhEIhrK+vP7bzYTKZMD4+jvHxcfj9fiwsLODOnTtYXFzE8vJyX2IXBoNhYCa5TqcTxq8Km83W0ZJxFNDAAP2NWH0WQULW9PQ0isWitDI9zh40GAzSV+3xeNBoNPDiiy9iY2MDy8vLUnfuPhMYNS8sLMgwjHQ6vW87jQpONWq32xgfH0c6nYbf70c4HIbH45Gs2OOAHBmqYw1LVoVkOnJsLl26hPn5eSwvLw8k60mQXe1wOGSuO4WwGEAZjUaEw+FHspzUPN/e3gawV3Lh/SaHhMGgel1qa5bFYsHc3FzHdDK29R1WIukGHRfyEAqFgjiabrf7x9MHraqGAcArr7yCQCBwpIcBPCTzqP3MXq8Xn/vc52A2m3vWkcnCIwqFgmh3A/uzLPtJY9IojI6OdijH9JsCrdfr2NrawtbWVgebe5hmwDocDrTbbXz/+9+XzfA4KJfLuHPnDm7fvg273Y5bt27h3Xffxfvvv9+XceYBMYhxVtNgqgENhUJ4++23O57dUdL4qrrRsILCEM1mUyYMMXI5KtQaI+vHt27dQjQalTQqSWEqWOtbXV3F3bt3kUql+hrxycE+9Xpd2gbptH3xi1/E9PT0Y5c/6Kh3t4AOA+hocOrYmTNncOLECeRyuSN9T1VTg/Vji8WC6elpIdilUilsb29L2pj3t1AoIJVKIRqNolQqSTsms6x8v16RMzMoHKLBOdGca7+wsCCcqEHEZlqtFhwOhwSc1I7gtLV+MFAErb6pRqOB3W6XFqNBNyZTE263G6dPn4bP58PVq1dRq9UwOjoKp9O5bxqAhA6qCcViMVkQvRwFNYWxnyNhMpnkYfJ7AZCDoVQqHeqEMNWWSCTgcrlE8WqYiCHtdhu5XO6xZRwJ6hOvr6/ja1/7GrLZ7I8lwiATlF41FaOAh4pkTqcTkUhEBqGQJRqPxwdysji2cNhmQKvI5XIwGo3Y2NiQTNfjOqIkaS0uLkrPcqPREJlf4NEZ3CT29KsYyNqm0WiUTg86Fjs7OwgGgxgfH8fk5CTu3bsHp9OJXC536PmxH9Qs2iBzgJ8FcP715OQk2u02zp49K1rUR1n7zJ4aDAYsLS1hcnISk5OTAPbKh+r70kgyimYpiSUSMrV7qYaR58S0t8PhwPj4uEy4ajabcLvd+OSTTxAKhXDq1CkADx17Ctn08x2ZkSXhbNDpdgMZaE4L4RdmmusoQwl4U5vNJqamprCwsID19XVsb2/jgw8+2NcDVr3RZrO5L8tbvU7Wlw7aXKxj63Q6hMNhObw9Hg9MJhN2dnb68gp5TWrP5TAZaLWm9iTBkWxPGuQ1WK1WEcznaEE6mS6XC1qtFrFYTJyqM2fOYHZ2Fuvr64jFYgN9pl6vh8vlGppUZi+Q/KKOWXwS0SEzZrVaTdjPzND1ipz7NZh00CwWi2i3s8xBNUCTySRTuq5cuSIH+NTUFLRaLba2tgb+jpyOVygUhk6LmxkHn88nXIR8Pn+kjCqNqtpeS9bz2tqa/F0dN8wzWi1lkL3Nf1dB54gZF6/XC6vVimAwCKPRiEgkgmazCafTCZfLhdHRUczMzMi8AYfDgenpaZTLZaytrfWVtVPbz/j3QTJ+AzMW1KEEB0W5/aDVaqFUKiGRSIgBbDabWF1dFT3tbuPL3L76HipovNV/79bg7fW++XweJpMJc3NzuH//vjzc6elpWCwWJBKJvvqqqeOrpuaHKa3FOg4jlycFerQHyXYOAqrCmc1mGAwGaZtgfdhisYjKmOqVk8Xp9Xrx4YcfigM6KGq12lD1v/cCIx6Hw4Gtra0nZnxoOKn1Thnh7vGih5G/AIiWv91uFw3vdntP7SqZTErWi+nURCIho2eLxSJeffVV7O7uIhwOw2KxDLyX+R1Yhx42p40tsSxDUIXxKGuBsx1oJOPxOAKBgHRrVKtVSUer3THdAYP62QzomD2jwzQ6Ogqv1yvBVCQSQSKRgNVqRSgUkq6QN954A3/1V38Fs9ksZ4rb7cbu7m5fnUtMjbOMa7FYkMlk+j4bBjLQWq0WExMTWF9fB7Bn1I5Kpyd0Oh1yuRzu3LkjGzCXy8Hr9SIUCiEej3d4G92tT8DDg1XVzlUPeapKRaPRAyNzq9WKkydP4u7du/LvsVgMExMT4nHvJ7Suvg/wsD6z35SlZxlMEz4pA63VajE5OYmpqSncuHFDdJ7V9GA3uWM/sJ3CbrdDo9EglUpJLzSV3jgGdHt7u2datlgs4vLly0d2rHh4DNMUs25Q5pVEHoPB8ERaiDQaDSYmJmCxWLC+vg69Xo/R0VHs7OxINNLPc9FoNDCZTHC5XPB4PJLWpkYyWec8wMkADgaDAPa4LZ/97GeRzWaRz+eh0WiO1C7J+8RJRozShwG8fxypaTabUSqVjnwu8Oxmlqter4tNcLlcUs70er09U8U8H1THjWllm80mEbHT6cTOzg7u3r0rET97uKmXXiqVcObMGRFlUudPUyBJTbPv931YUqOioKob3w8GMtD1eh0XL14UA10oFKSQfhSoZBrOYgYgwvLT09My+1f9HUJNtQMPI+VuA9yLWMKITRUPaDabSCaTHYf25uamMPr6AT+Hi5SEh2HCk25NojgER7EBD7McBoMBHo8HiUTiwM/U6/WiEQ5A+iN57y0WC2ZnZyVVedD0rScR5fQT3T3LYL24WCx2kOoeFyaTCYFAAOvr67BYLMLlICegVCodKB/JaMntdsPj8cBqtcJkMsHj8aBUKmFtbQ35fB5Op1N6aSlgwYl2Ozs7eP3116HT6ZBKpSSiPkr9mA4Aa+nDtCZcLheKxSKsViu8Xm9HpvEooFNVLpeRy+WEgJxOp4XXQS0On88nvCE1xa3WoIGHXSInT56E2+1Gq9VCLBbDnTt3ZKY80+rsEOB6MBqN2NzclOh9YWFByGP9ZvkYzDCCpqP3Y0lxp9NpnD9/Hn/913+998t/r8l81EVHzyYQCKDdbouBpjRfr1ontVb5WmpvE+12W2pNdABYY1Kh1s258crlMu7evSvvx40Vi8U6vLOD0E2WYXp1mPCk0tDAwwO1UCh0bO5WqyVD34G9/muOAaXhZSpUJQ2mUqlHDKzBYMDJkyeh0+lw9+5d+TmlXNUxdY+b8VA35LC2WAGQYQCMJp5Up4Ldbsf29rZEKMlkEo1GAyMjIxgdHcXdu3elLEEniCITjJB1Op3Mpgf29mw4HMb6+jo8Hg/Gx8cRjUaldxqAtPfE43GEQiHodDp88MEHsFqtkto8yrpgnz6vY5hS3FTc4nmgPq+jgBFnKpWCxWKB1+vtmPdNXo9GszcPnMaS5F5GqRQ4cbvduHDhAkKhEMrlMra2thAOh7G5uSlZNZPJBIvFImMyDQYDXC4XgsEgisUirl+/jlKpJK2lGxsb2N7e7js7xrS90WiEyWQSQZV+f38gA93NQnxc6ToSeCYnJ9FqtRCJRABANtfy8jLy+bxsPvYmB4PBA0lb9IStVis++9nPYmNjA5cvX37kdWqdudVqYXNzE7u7u/B6veLlsPeyH7DepbZokTE8THiSh0y7vSehygiZykuUdnS73VheXgbwkEXJObHsj+zmJQAPx0yWy2UZ75bNZjsMCY2yxWJBuVxGMBiEw+GQzzsquBmHLXOigkNz2Pb4pEoezKBQItViscBms8Hv94uUbjKZRKFQkLm9PEdoJOr1OlKpFNxuNzKZTEdqstFoyNlB3W3uV2rpWywWrK6uisFoNBpSHhsULpdL5CWHbdwk9bHj8TjMZjMymcxA0WU31NKZ2WwWbXS2RPJ9FxYWcOLECUkZq6JWao2ZvINkMilz5OPxuBhnZt0ACEHNbrcjFArBZDLh/v37MJvNuHTpEnQ6nRh4Zt/6yZKVSiWUSiV4PB5YLBZYLBYhqfaDgXI2rVaroz77uIuNfZSsGRLj4+MwmUzCqhsZGcHMzIwI858/f15qRb1QLpelLvbFL34Rzz///IHX4Xa7ce7cOaHcX7p0CX6/fyC2MqN1n8/XkfIbtugZePLKaLVaTXpXGZGRXPPgwQNsbm6iWq3KYUvCDWtGvRw1m82GkZEROBwOjI2N4fOf/zzm5+cfSVNyowQCAbzwwgsIhUKP9V24DgYVNnjWwKimXC4fua2mF6hbzH7R+fl56HQ6OBwO0VnngBz2SzPrUa/XUSqVZKpeJBKR9hxqKtRqtY6WShK36vW69Ku63W6kUikx4Kurq0eur5OFTmWrYcqq6PV6jIyMoNVqwel0Yn19HeFw+Mhrgalpo9EoqWsyqr1eL9xuN9588038x//4H2Gz2VAul2V/B4NBeQ3Pj2w2i1u3buHWrVtIJBIIBoM4deqUOJUkijFTykwMzw69Xo/Z2Vl89rOfRa1Ww/r6OtLptGRfDzoH6Wyk02np2Qb2gptBxG8GZnFTdpGL7XE2JkUmksmk6KnywGQ0fe7cOVy6dAlGoxHZbBbhcBjz8/Not9vY2dl55D15AFMb2+fz4Utf+hL+v//v/5NItpvFvbS0JDWmbDYrbSODRECsn9hsto6DeZi0d4knzeCmJ2oymTAzM4NYLIZYLNbRa20wGBAIBKDRaB5h85J4QQa/0+nE+fPnJZOyubmJr33tayiVSo88U6YgrVYrrl279sh7DwrWyh73fZ52UJaVs5ifpNPGZzk2Nia9ySsrK5iYmMDly5dhsVjwsz/7s7hz546Qu4rFokS7zIhw8AFLXlarFcvLyxKVkYjE1HMsFsP8/DwikQgsFgvS6TRisdiRHS1GeE6nE61W61AexbMIjudttVpYWVlBIpE48lpgJowOUiwWw8zMDHw+H8bHx3H37l189atfxec+9zncv38f165dQ7vdxksvvSRqc5wStbu7i0wmg2w2i0ajgfHxcWi1Wrz11lsitXn27FnJbFAFj9mUEydOiDNnMBiwvb2NVColz+8wghgAie65fvL5PFZXV5FMJvvPyg56E5eWlgDstVhR+vNxUC6Xkc1mJffP96Zhm5ycRLlcln5kALhz586+KlbqgI1yuYylpSXYbDacOHFCjHf3TS0Wi1hZWUGj0UClUhFRAY4IAyBi5/t9X9apstlsz8lLwwKXy4WXX375iagsqbBYLJiYmJCaP3Xe6fiMjo5Cr9eL46aim8FPcYmbN28iHA6jUqkgmUxKWlMFncLt7W1EIpEOh8rtdksU7na7OyZn7Qer1doxXY0YJoEK4OGQkfHx8SeqL63RaOD3+zE2Noa1tTVEIhE8ePAA7XYbt27dgslkQigUkvar2dlZudeMukgyBfbWK3tdk8kk7HY7ZmZmJGPWTTpdW1tDs9nEW2+9Jcz0QcUlCH52rVaTHuhhSnGTJ8Ry0uMOTOKzY/8ze9NNJhPOnz+PsbExZLNZLC4uimZCKBTC2bNnYTabkUqlsLm5iUQigUqlIu2uzKDcu3cPo6Oj+KVf+iVotVqkUil4PB6MjY3BarWKKNXY2Bimp6fxhS98ASaTSfQRmOEzGAxSu97vedI5I3PfaDQiFovh5s2byOVyfQduA58anArDWcz9HFr7fvjfK7qQKcmNPjMzIwoyJF1R3xUA7t27h1gsBqfTibGxsQ6ZT5LDgL0H/o1vfAPvv/8+Tp48KfUGEslU0GsPBoMwGAwy+MLr9crPA4HAvt+XxKDd3V2kUimYzWbpgeP/hwFjY2PCZnwSUZNGo4HH48FP/dRP4bOf/Szi8TgqlQrsdrt8RrVaxc7ODra2tnrWv5nt4CSzdDotLE2mv7lJ2IZFg0kSCvuiuZasVit+7dd+DV/84hcxNzeHkydPdowR3Q+qApb6HYdNVazZbOKFF15AqVRCMBh8YobHZrPhtddew8TEhNSWKYjkdDoli/atb30Ler1eHGvgIeGQ65J9rgaDAUajEQsLC6jVarK2zpw5g/n5efm9Wq0Gl8uF+fl5SWH6fD7Y7XZJedLoHgamSmOxGBqNhhDShs1RY6ttMBjEzMzMY511TDUzszE7O4vTp0/LmUvlulgshnK5LHOVKS3KEY5bW1vI5XJiC5hhczqdsFgsCAQC0mq1tbUFp9Mp2U8a1sXFRaRSKZw4cQKlUgn5fB5msxkjIyMifDQ6OipBY/f3oFNXLpcxPj4Oo9GI3d1dbG5uihhOPxjI9aUiTqPRgN/vF6r7oKABNRgMsNlsCIfDHYcY+2KvXr2KDz74AK+99pq0RwCQtisW+V0uF1KpFNrtdgeLkKzC69evPzKiTj1AmRKz2Wz45V/+ZTEKvBaCB3wvUHCdoxg5QL5cLkvrwDAgn8/j29/+ds9IdlDodDp4vV688sorOHv2LN59911EIpEOwiBxkIFjdoN1SHW0oFarxdzcHN58802Ew2Hcv38flUpFnD1KjfK7qbhy5QrW1tYkoj/MyJKDQHWyeDzeocU8TC02TqcTDx48kOEPnHv7OHA4HPhX/+pfweFw4MqVKzh9+jSWl5dRqVRkclG73UYsFoPZbMbVq1c7Drp2uy3ynaxFcy97vV6sr6/DYDCIof6FX/gF/Pf//t/hdrslRe50OrGysoJ8Po+ZmRmsr69jYmJCInamcw9rn2TvK/BQda1XBudZBtvfgL19du7cObhcriNn1migNZq9EaYjIyMwGo14/vnn4fP55FzlIJVKpYK1tTWsrq5id3cXOp0O4+Pj0tvsdDplypbf78fMzAzi8Tju378vPfKrq6s4c+YM7Ha7TC+7ceMG/H4/yuUyfvM3fxOffPIJotEo/H4/QqGQ2CqXy9VTqIsGms/bbrdDp9NJJoXchn4w0GqZmJjA9PQ0gL3+YBbjBwXp5pwywilQ3GyxWAwjIyMAgGQyKTUDGk2msKrVKkqlUofRVCU99Xo9NjY28N577yGbzeLVV1+F0+nsuBa1F9tgMODUqVNwuVzitfGmAnutPr0ISRxeT0lRvV6PU6dOyb0ZJkWpSCSCeDwuDM6jwmAwYHZ2Fq+88goKhQL+8A//EDdu3Bj4fTiNiOIj3fB6vXj99deh0Wjw8ccfIxqNPtJy10u8plQq4fLlyyLz2U8EbLPZcO7cOZn5CjzMzBxUHnkWkc/nsbOzg1gsJnoCR4VGo8Hk5CTeeecdFItFZDIZ/PzP/zwAwO/3Sz88Wfv1eh35fL5nFMIeVkYw9XodLpdLUov/8l/+S2i1Wpw9exZ/8id/ApfLJedJvV7H0tIStre3YbFYcP/+feRyOayvrwvZjNyCw9YDu0hGRkbknKKC2bCAxLv5+Xlh2AeDwYFsAslUvJ8sR8zPz6NYLGJrawuvvfYaJicnpbMmmUwin88jlUpheXkZDx48QCaTEUlO6qsbjUbY7XYhjuXzedy+fRtLS0twOp2w2+2w2+1wOp2YmpoSJbTd3V1oNBqsrq7CbDZjdnZWiL+0U7VaTcpm3WDXUSqVksxMKBRCKBSSLEq/GbWBTthUKoWXX34ZKysr2NraQjabhc1mGyg6ICMzm81KSnJychLb29vCpNvc3Oz4ndXV1Y4B3HyoFBDodZOoHkZKfavVwptvvgm3243Lly8jHA6LR07Pv1Kp4O7du8LuBCC1B37/Xt+TRAL1s+fn53Hz5k357GEBGZvdk6AGgVarRTAYxMsvv4zNzU1cvnwZrVYL8/PzHcpf/bxPIBDAzMwMNjc3O56NTqeD3W7H6Ogorly5gqWlpY7n0D0OUu2ZP0qkq9PpMDU1hfHxcbz77rsi5kMc9X2fVjCSpHqUutcGgVarxYkTJ/D666/j448/BgC8+uqr+Nu//Vv4fD7RXebAjIPuod1uh8/nkzqy1WoVcQuPx4NQKITLly/j4sWL+JM/+RMhbamaCsBedoDM8Far9Yi2fj+ksbNnz+LEiRP4+OOP5ZwymUzwer2PPTP7aYHL5UIkEoHT6ZRxr5TJ7FctjcROynguLCwgEAggl8vJaNuJiQn8zd/8DaLRqJQ8E4mErAfaAwBCUqNCJTUTisUilpaWMDs7C6PRiIsXL6JQKOD69eu4desWLl26hIWFBbTbe8OAUqmUtGU5HA64XC6RBGVZrJeqnXot7EAyGo2Ym5tDsVhEIpEYSEluoPC3VCp1tKEYjUb5wn192N/XadXIS6/XY3p6WtqsnE4npqensba2Jq9hzyPQmR5nbzTTT2okzSI+sba2hs3NTVy8eBH/5t/8m47UPL3/er2OGzduYGlpSaJ19VDvdThoNBqpSZHhToY5e7iHafQg0zOPa6CLxSK+853v4MMPP0Sj0UAoFMLk5GRHVORwODAyMtLTIzeZTPD5fMJVUI2DxWKB0+lEIBCAz+frmDfeyzDz/ZxO55GjXJfLhRdeeAGbm5uP9FEPo9wr7yfZ0iwZDArO7b169ar01EajUayurgIAlpeX0W63YbPZ9uV/aDR7Q09Onz4thCBG3PyMarWKW7duIZlM4pNPPhHHW9Vq5uHKNKTb7T5ShtBsNuOFF17A1tYWjEajnENWq7Wj/PKsgyQxKqQlk0mcOHGio2X2MJC5rdVq4XQ64ff7ReLTbrdjbGwMpVIJN2/elNHCVHdU34PZkmw2C7vdDovFIpMWU6kUtra2EI/HUSgUpIZ88eJFfPGLX4Tb7ZaOALbx5fN5uFwuuN1uRKNR5PN55HI5ZDIZFItFURfrNQvCYDBIN9Ds7CzGx8dFi2G/ttD9MNDqo5fDjbKzs4OJiYm+DTRz95xiBewZaE4rITi0vfvvZOqyLUKt6aiHNf+uIhqN4mtf+xq+/e1v4/nnn8d/+k//Sa5b/azd3d2BWNjUoK3VarL5TCYTNjc3JXU6TP2wnNYF4Mgp7larhWw2i2g0ina7Db/fj6985SvQ6/UdG49knu5pMDMzM3jzzTfx2muvoVwu4+bNm+JQsTyRy+WwtraGjz76qIPxrzoVFETwer3weDwdhnwQ6PV6nDx5EmNjY/jmN7/Zc8CL0+l8opKYP2lQsYn1/KO2ExYKBdy/fx+pVEo6RMbGxjA6OopIJIJKpYJAIIC5ubme/A9GpSdOnEA+n0ckEhHFufHxcTlvqBFNwiHXLtWnON0oGAzKAX8Ucp9Wq8XnP/956U6hcwDsnX/DZKDpzObzeVitVty8eRPz8/MDrXOKy6hzk5eXl6WNL5/P49atW9LTzvuqChQxrd1oNGC1WhEIBOBwOEQkSmVNx2IxrK+v46OPPsKtW7dQrVbxMz/zM6hWq7h58ybMZjPOnj0Li8WCN998E1qtFleuXBFH9LD+Z/blF4tFUSQbGRlBsVjEzs4OMpnMQM76wAY6kUjgM5/5DNrtNj788ENUq9WBoo56vS4TgljD3tnZkY2QyWRw7dq1RyZWmc3mRwbC12o1qTeQwUek0+lHNgO96M3NTbz00ks4ceJEx8+pONRvnxp7XlWjxeuNxWKPqIoNEywWy5FT9+oiN5lMePHFF3Hp0iWJmohoNNphXO12O15//XX8yq/8Cubm5rC0tIT79+/L5qMAAdcXJ4sddJ2U+UylUkeOAt1uN55//nncunXrEdU4Sg6+/vrrCAQCR3r/pxFkxup0OknjHQV8TuFwGMViES+88ILoJz948EAGZGxtbXXU8TUaDWZmZvDcc8/B5/MhHo9jd3dXatChUAjRaFSkKIE9R2pnZwe5XE66LLgWWULjbGuTyXSkXvaJiQmcOXMGS0tLUs7LZDIwm83I5/PSFTIMaLVa8Pv9Mobz2rVrMJvNcDgcfdsElWXNdkhGn8899xwA4Ic//CFSqZQ4THxWzOQxcAwEAlhYWMD09DTGxsZkep1Wq5VyB/UxIpEIIpEIvve978Fms+Ezn/kMdnd3JWMzOTmJ5557Dj/60Y/w8ccf9xX1qoqX9XpdWvm8Xi82NjYQjUYHDtYGVhLb3d0VAlcul0MikRCVnH5+nyBxxufzye+OjY1Bq9Vid3e3YwYviVrdB22j0ZDRZK+99lpH+wOZfN3IZrO4evUqVldXH7lZrVZLKPuHgZtYp9N1pOAtFgsqlQoKhYL01Q0buDmeRG2dOslf+9rXsLKy0vEz9f3NZjPefPNN/Nqv/RqSySS+8Y1vSH8s05PcfIOk3klQPGoEyOjZ4XDg+vXrHdfM3ni/349isfhEmO9PC7jntVotSqUSfD7fkUs5qrMWj8dx69Yt3LhxQ6aCJRIJJBIJpNNpSWe+8MILOH/+PCKRCNLptNQaqUS3u7uLbDYrpSxm3hgZs/6sCi4xOstkMlhbWxu4LKHX6yW1Dexle7a2tmCz2eQ7zs/PH+kePY2o1Woip5rL5VAqlWQAxSBBGx0j4OGMabvdjjfeeAPNZlMm3LGvmIaXUbTNZoPb7YbVaoXBYJCpVSxX8FrUMmg+n0cikUA4HMbKygo+9alP4ezZs6hUKsJ52tnZwXvvvYfd3d1Dzzq19pzJZDA2Nga/3y9tgvfu3etw+Pp1aAfOUd67d08UnhgFu1yuvlos1NQADbSqsRoMBmWT8LW8wfl8fl/DyR64hYWFDinSdrsNo9H4iFbz4uKi1BSAh8pYlP3rh8xDz6her8tCYd8mRw0+yaESTxueVNqeWYteqnCETqfDxYsX8c477+CDDz7AH//xH3ccntRkJunwoM/qfrZshznKcyKD3Ol04jvf+c4j4jmsqRkMhkdagp51kNzDjJjNZnvsOjuJZ/F4HNvb2x3ZCO5frVaLl19+GW+88Qa+/vWvI5VKyRx5tc7Hvcf5ATw86cixX5rPXaPRiCRjPp8/Er9C7cNlap5zgynAMkwp7mq1itHRUbm/Wq0WN2/elFapfqESvZgNHR0dxdjYGDY3N7G1tSUzprnXOaQpEAhIwEhhkng8jomJCVy6dAkffPAB8vm8ZFur1ar0OjNtTja2w+EQAtjm5iZWVlYkC3MYeP5wVO7FixdhNBoxOTmJzc3NDoePrVf9kCoHZkBQ2Qd4OLeTD2kQ8HAjY5rTcVTdUjb7a7XaAyOcfD6PTz75ROY2qyCZTEW5XMbOzo6kTaiKBvSnM02BFbfbjYmJCanJszHd4/E8ko4fVjxu6xBHAR50IHq9Xnz2s5/FgwcP8Kd/+qc9DUEvskYvBSh1nXLM5VEjP4PBAIfDgfX1ddy5c6fjZ0ajEaOjo5ifnxci4zCBxo0cDPaKP856YN2QLZS94PF48NZbb+GDDz5AsViU1/LwBR6mGtXJRuo0Os4K5zQ9vV6PQCAgWbqjGGeTyYSxsTFcuXJFas+cJexyuRAIBBAIBLCxsXHk+/O0gfuQ95D8Hba5DQoaUWCPSxKLxbCysiLPt9VqScayUqlgfHwc586dk0CPqeVsNou1tTVMT0+LqqQ69Yxrl3vS6/Via2sLq6urSKVSKJVK2N7exsbGhkTr+4GOqk6nQ71eR6FQQDAYlGlcNpsNq6ur0mpL7Y+xsbG+7smRuubp7RQKBSwuLiIYDPalrtPxwVotxsfH5QaymVttR6G6mHqoUkqxG5cvX0az2cTrr7/eYZDJoOR7GAwGWCwWUfgBHkpF9vvdWVsmwYGROAkpdru94348jtra047HFV7gOM796r8Gg0GGIvzFX/wFCoVCxwi//TA+Po7nnnsOXq9XhqYDncQ2p9N5oDE4CDqdDqOjo3C73YjFYh0ZGqPRiImJCfj9fty9e7ejI2FYwGdAp5TzoR/HQAcCAWl76pUt02g0eOWVV7C2tiYj+9TDkwpN1FznUAzWHtvttvRs22w21Ot1GAwGeL1eWK3WjjTlINBqtRgbG0M4HIbT6RTi4/LystRjJyYmkM/nn6gs6k8afFZkR6+trYm0sqro2A+0Wq3IclYqFVitVmxubnaM+qXTVa1WEQgEcOnSJTQaDezu7goRMJlMotlsYnV1FY1GQxQAGexxRjiFjSjnSyEsBlZ0Cg4L2OjokQys2kaXy4Xl5WXcvXtXSkKcnd0vF2Gg1UgdUhqmdruN3d1dOBwOUXoZBGrDdjabxfb2tmwk3lCqlxHdUo1EpVLB9evX8U/+yT/BCy+8ID+3Wq0d7Fy2CbHGzckpfSu7/L133m63sbKygtu3bz9ymHQT1IZJoIIgo551vKOCrM39yhc2mw0TExP44IMPJA1+WG1fq9VidHQUExMTcDgcIkZANR+iUqkcuXeXG5utF+r6cblcCIVCuH//Pra2toZuQALwkNzDs4DG8KhgrTiRSIi2Qjc8Hg/cbjc++ugjURPsfi2jLHIT/H4/TCYTrFarZGvsdruMF6xWqzL7l/8+KAKBgERnlUoFc3NzMvClVqshGAwKM3l8fPyId+jpAzkfyWRS+pap8ub1egfi3zBLqp6b165d6xB5oiKbTqcTtngikRCREhLNGGFvbW2JChkNJLOlzJ6dOHEC1WoVm5ubMJlM0pHTzzqgMdZqtVIWGRsbE5GixcVFfPjhh8hkMjI9a3JyEnNzc31PORzoZKVeKQDxnnlzgsGg9MX1AxLOeEAyNUGPRavdG/1I5TKCpBE1KiKuXbsmyjPc8LFYrONmN5vNjgOVabp+QIYoxROq1ap4e4za9Xr9I/Jvw3hA05Gi3OpRnRCVZdsL3PQUsQAgUVIv0Gjcvn0b3/rWt7CxsYFUKtVzkPxRWdtWq1VmiKsdCLxeq9WK7e3tnjKAwwL2dqsZqsfp96/X61hbW5PaYK8943a7ce3aNSFlUqKXDj3XIOuIasRMY83f5fzoarWKra0tURQbFBREymazQgLKZDJYWlpCIBDA/Pw8YrGYyI2qE9qedTBSZBbKZrOJABV1qgexB2x30+v12NrawtWrV4Xfw7Iiy6GTk5PIZrMolUpy9jLzwgEVmUwGk5OTOHfunOhvjI+PY3Z2FidPnsTJkydhsVhw584dIQ2qa6cfUOiq2WxidHQUJ0+ehNFoxMrKCi5fvoz19XU0m00Eg0HReqjX632XOgbKt6gDx8vlsjAg79+/j7fffhs7OzuIRCJ9saCbzSZ2dnY6NoW6KQ0GQ89hHBaLBaVSSVSkVInQarWKr3/962Kg1boUQRKKXq+XmcIqgWS/B8NBHGxCZzuGRqNBIBBAtVpFLBZDMBhEKpWSaxpE1u1ZAssCL7zwAjweDz744INHWoweF7znrAURBzk8ZGpyYx+GQdW9PB4P3n77bbzyyiv48MMPcevWLRiNRiEHut1uOByORxjpwwZOeqOhrFQq0rp0FJIV98ja2lrP/cKzZnV1VX5OxjDJRd1nCYlENNIcxKLVaqX7pN1uo1gsymzrgWQY9XqcOHFCSnMWiwVarRb3799Hq9WS3uxWq4VQKISdnZ2h0eQHIHVcTnei06bT6XDp0iUkEgmsra31ZQ9ooFutFtLptPQ806lm9qtWq8FsNnfM+ybpiwIier1eCLyxWAyf+9znpAeePdpU9aL4CYlkzAj241jQONdqNXi9Xrzwwgswm8148OABYrGYnEMcxDMyMoJGoyETt/rBQAaapAfeUJfLJanpQCCAkydP7qtX3evLdUcw6mFJZaednZ2O96M3XKvVkMlkZP4yN9XW1haq1SrOnz+PTCYjYvtEq9VCqVTq8Par1aqQB3pBp9OJwVcVtCjMnkgkxMPjZwAPDf6wqUgRFosFo6OjIqv5pA0037f7sD/IkapWq9Kb/iQzF+xn/pmf+Rm8/fbb+N73vocPPvgA1WoVly5dgsvlQjgcRqlUwsrKylAdxL1Ao0T2s9vtlq4J7rej3P/9jKPRaEQ+n+8YPKHRaGA0GkXPvxsOh0MiKZvNtq9IBEUuBplzbjQa8dprr2F8fBxra2uw2+0yMKRYLOLixYuoVqtIpVLw+/2Ix+OoVqtiXIYBlLokUZCzlxOJBL761a+KXnYymTzUEVYFnfj/bmlnZi2BvXNenedNXhANcT6fh91ux0cffYTnn38en/vc5xCJRLC8vIx0Oo1CoYBSqSTnOR09ptAPI4ZRhKparcLlcmFmZgZ+vx/RaFT63sl38vv9sNvtqFQq8vN+HcGBDLQ6scZsNmNiYkJUWr73ve/h+eefx9bWForF4mNHjUwbZzKZjvciHd7r9SIajUprhnpoJ5NJXLhwAZlMBru7u9KGQZCur2K/62XKkg6F+uBGRkY6+q2tViscDgdyuVzHDNhh2ZDdqNVq+N73vidtFaznPykYDAaR69zc3Ox4bzJFe0mO9lvf6Rcazd4Y0q985St488038Wd/9mf49re/LZ5zJpPB+vq6lD6GMWPSDdbeOK0tn8/LeqcK2JN0kBqNBsxmMzwej5Du6BD3Okx5fel0GlarVYhjB6Hf69XpdPjyl7+M+fl53Lp1C41GA3NzcxgZGcEHH3yA6elp0YR2Op0d6cxhIonZ7XZxjjg8wuPxIJvNIpfL4bOf/Sw2Nzdx5cqVvtpXD8pe0qC1220ZakGRLDpYVIAjec3hcCCdTuOHP/whfvM3fxPlchm7u7vY3t4Wu9HtBKg92QddD6NnnU6H06dPY3R0FNVqFeFwGBaLRbgvasTOcjClafvRZB+oBs0arNvtFoLQ7Ows2u027t27h3w+jwsXLiAQCDyWQAeNYi/SBiOjM2fOdEwwohfF19BzPeq1kJ1HD71bqN/lcmF7e7uDxEAh/G4PcJiglhwob0oWNslCTwJ8r3K5jBs3bnQ4OWRi8tmz1sVnxtGfTwImkwkXLlzAb/zGb+CFF17A7/3e7+Gv//qvpY5psViwubkpm+8fg3EmisWitLKx/9hqtWJnZwcWi+WJTm5yOp0wm83Y2dkR/onL5YLP55NImdDpdJLds1gsohX9JOByufDP/tk/w/z8PN5//31Eo1G4XC585jOfwb179+Dz+VCpVOSA3t7eluya2WweqjOBE5rYycJSQiAQwPvvvw+bzYavfOUrHTOdjwISUlmemJqaEua0VquFyWSC3++HxWIRRTGLxSLpcGAvmPL7/VLa7K4zc3BS958JVfGM08msVivOnTsnk7BWV1dRKpUwNjaGiYkJzMzMiEYIy569OpMOwkAGmpGiwWCA2WyWni+z2Yx0Oo2//du/hVarxfnz548saccb7na7pZ+4GzS43ZHpxMSE/Jk10RMnTvRkfR92DQaDQaaydEdFFosFExMTHal1l8sFu90uzE1e37BFzypho/vf2+02XC7XY7deAQ9JgtTT5YbhJqEeLzcbFz0zLxS6PyrYH//SSy/hN37jN2C1WvG7v/u7+OSTT+Q1lUrlERLiPxZoNBq4XC7JqrEOH4lEpF5MXeLHhVarleEHKimNfIOpqamOmiFb94A9rgy1mR+3m2JiYgK/+Iu/CJPJhPfee0/YwmNjY/jTP/1TVCoV5HI56PV6RKNRbGxsyLq1Wq0dMwiGASaTCZOTk6KYNTY2JpygarWK73//+5ibm8MXvvAFTE9PH4lESMNIIhrVJ6kcZrPZ8Nxzz+HChQvQaDRIJpOoVCoi40rHLhKJYGRkBAsLC9LSO+g16PV6VKtVlMtluFwuXLx4EVNTUzAYDEilUlhfXxdulNvtFt13prQpVz2IxvtAJ2m9XpcpHk6nExMTEyJzCOxpJ3/3u9+Fz+fDqVOnOmQ8+wXrGa1WC0tLSzJEmyDFngaUkm78GRfBzs4Orly5IjNZnU6nHBj7PRx1kg2AjrGTKljPosPCiVxjY2PCKBxGiU9g7/DjAue95iHEMXDqPTwKmAJiejCVSsn7cRyc2jZH9idr1sBemttut8PlconxZhrroIOa08kmJyfx4osv4sKFC7hx4wZ+53d+R6RFCZIM/zGCBE5GBKpGMmtzKsP2cUDBh0QiAZ1OJ3KeHHPJ+b08tKndzzUSiUSkRWtQkKgYCoVw4cIFbG5u4tatW5Ie9fl8+Mu//EsxSslkEuvr61LmYzmNBLVhEqxhbXlychKTk5MYGRmB3W7H4uIiLBYLlpaWcPnyZbz44ov4/Oc/j9nZ2SP1RwN7stJMK1NKlUNVPvWpT2FiYkJ4EOFwWAwqsOdIfPvb30Y+n8elS5dw+vRpudZuQRv12vhvrLWz48TpdOLcuXMIBoPQ6/XCk3E4HLBarVIXZ494qVSSLCPJq/3ykgbOA7bbbRmWfuLECUkxsS8xkUjgO9/5Di5cuIAzZ86IBmm/fWVkA25vbyOdTj9yAHLRG41GaLVapFIpee+VlRWcOnUKy8vLqNVqokLDqI/GlpKArF2TdEbnoFAoQK/XY2pqSibq8PoMBgOSyaSkSoC9+lgul4PX64XZbBYmIQBhew9Laot1F4fDAZvNhp2dnQ4nhs8nEAggm80e6UCiN67eVxI/ePiyxDI3N4eZmRlcuXIFxWIR6XQajUYD9Xodu7u78Hq9GB8fl1q1wWBAtVqVGhRlPpm54XQkCpCsrq4Kj6EXDiN7cH31I3rwLCEajUrNmfW0ZrMpJDHut3a7LTXgo4AO9trammSuMpkMNjc3odFoZA5xrVbD9PQ0tFot7t27B2BvHVH8QlW96re9jpORAoEAUqkUdnd35TnSIXjw4IEMaGEJ0Gg0iqPAz6rX63C73fuKsDyLqFQqiMfjCAQC0m5WKpVw7do13L17F+fOncONGzdgNBpx4cIFGI1G/O3f/i2Wlpb6Hj5BWc9GoyE14uXlZZRKJZw8eVJe22w2kc/nhexnt9tRrVZluhlbeBcWFnDixAkYjUYRWCkUCmIPWq1Wh2pZtVqV8h0DuIWFBbjdblQqFdhsNmxvbyMcDqPRaMjUNAYKrI/zfek49rsGjlSoo1cYDofxzjvvYHp6WiaaAHtG+pNPPsHP/dzPodFo4N69e+IBHQR6PWyA7+VltNttbG9v49VXX0UgEMDi4qL8jJ77xMQE1tbWUKlUsLy8/EhagQ9C1fsmxZ4kAwCP9PExekylUo98l3g83lEzZ5tYLBaDXq8fmk2p1WplwER3Ow1rRaxND8peZ4p6YmICTqcTqVQK8/PzSCaTHYIirVZL1IAmJyc7uAAqe5otG2zL83q9HQI2wF6WRK/Xw+l0wm63o9FoIJ/PI51Ow+12w2QyHTjkoh+jO0hf5bMCKohZLBbprCDBRp10RmatyWQSp6hfUJEtkUjA5/NhfHwciUQCkUhEhEa4l8+fP4+xsTFcu3ZNsmQq2zubzcJoNEKj0cDn88lQHKYvVZ1kZgUcDodEPWfOnEGtVsP6+rqU+JaXl+XwZTnMaDTC4XAglUrJ9y4UCggEAgMJIj0L4H1iplGr1eK5557D9vY27t+/D7PZjFAohDt37iCZTOLtt99GLpdDPB7va2IgCWAq/4ftnSSkNptNLC0twe/3I5fLoVKpwOfziZFmGcput+POnTuIx+NwOp2y39kNlEwmhexWKpWk/ZYEWK4zv98Pp9Mp6z2RSGBjYwPJZFKybz6fr0M8BYAYe7LE+8VABtrpdHYwz2KxmLBrqdZDQ5zL5RCLxXDp0iXk83lsbm529LWpD4GeUqPRQLFYPHTAPWd60kthzTGVSmF1dVWUfdQIV4UqXs+aAiPe8fFxlEolLC4uPpLSZKqU16qCMnOMFFR2+TDVnehoqG0RBGfrktDRC3R4VNIFMyc+nw8jIyPQaDSIx+PSx8g1x03Be2+1WnH58uVHojM1Y0GnjX2xHNICPDTmTqcTzWYT6+vr0jZy+vRpNJtN3Lt370Ap0P0YxOpzJ6GJh8EwgE5nrVYTXeFwOCxGUDWQAIS4p0r57geqCDJytdvtMJlMWFxchE6ng9PplCxJo9HAzMwMJicnsbq62kHsZETPg5yHN9et2+2WA5g90EyTlstlxGIxWCwWnD17Fu12G5ubmwgEAsjn89jY2OjIwDUaDZH5ZNslOw3sdjuy2axE0cw2PusIh8Pwer1yD7a2tuDz+TA9PY0bN27gk08+QaPRwKc//WncvXsXc3NzeOWVV3D37l0pgfRiTHP/kuOjGmeNRgOv1wu9Xi+a59vb2ygWi7DZbOK4kyBIZTC2ZDGjSr0Cm80Gn88nnTqcnMZJicyuAXs8o+npacnAptNpbG9vI5fLSdaEGWBqenPtmUwmCf4GyaYNZKDPnDmD69evy4GVzWbxd3/3d0gkEqjVapibm4PBYJAWg48//hgzMzMYHR1FLBaTi2NasJs+z3QZNwjB6R8qyeK73/2uED8sFgsCgYAM76CMp06nw/j4OLa2tjpuSKvVgt1ux5tvvok7d+5gbW1NnI9CofDI4Az2R9LBUN+LP2PtjQ+Twgi9RBSGGfSk9zNcZrNZyBJkYlOhTqPRIBqNSrqU3jPwMLvCKE2dRtbrc9RyBtng3PCMqHmNqrwgHbXFxcW+Nbpp9OkM8N/sdju8Xi+CwSAAYGlpqa/3e1bA6Hhzc1Nq0ur3Bx6OpWR7TK/+dDWiMJvNcLvdohJms9mklZH3lCUu1rgLhQI+/vhjmEwmuFwuGAwGxONxGAwGVCoVOTR5qJpMJsmaGY1Gie5ZOqEgE0lIS0tLMrUsnU5LiYsiKHQa8/m8ENparZYYfY6bDAaDGBsbGxoDTVIgy1BarVbq74FAAJlMBvfv3xc288cff4wvfelLOHPmDKLRKBKJhDjyjFi7g5rutcLpc9Rc4JqijCplfjUaDXZ2duQ8dzgcIgNKxyyRSCCfz4su99TUlGSG1doz15vX65XZ5ZVKReyR1+uVNUXGtkpgZSYAgJRjfD5fx0jl/TCQgc5ms7BarbIJGXWQ5RwOh+F2u5HP51GtVpFIJPDhhx/KKDqK6TO10d1zZrVacf78eWxubnbMzqTBZt2HUS/TBVarFZVKBX6/H6Ojo6I21Gq1EAwGEYlEHjGQZAkznUF1sK2tLbjdbjidTjm41evtfh+29VBRh8bYZDJJ280wsXz7abDvFmpRf9dsNnekiLiIw+GwtKhpNJpHmPfdBztbOnoxItXXcUN0t050/w6vjXJ//Xq4KulQ7QdXx+CFw2Fhlw4LisWiZAp4MPFAo0gDxUUsFotMnlKVABltk/fBLEM+n0c+n4fb7UYqlYLP54PJZEIymQSwF8lwPbDX2el0wuv1wuFwYGNjQ3qzG40GrFar/Ge32xEOh8Vo6nQ6SdXb7XZkMhnJxplMJqRSKTgcjg4OBI0ExYuKxaIYeo1GI+Nm2dVAJSmLxXIk7fenFazztlotGTSxsrKCfD4Ph8OBYDCITCaDK1euwO/3o1arweFwwGKxiJGkVCjXEaNWttJls1k5c1l2mJyclOxpKpVCOByW8Y4nT57EiRMncO/ePenN5p602WwwGAxiWE0mk6xDrk9VxlmNfsln4LRF8g1IWGQwwdQ2f4eOGgM7/l4oFHryBnplZaXD02E0AuwdcGxQZ7hfKpVw48YNuFwu5HI5+P1+uFwu5PN5GI1GuWi+l8ViwcLCAkqlEtbX1+VzPR4PisUifD4fzp8/j8XF/7+9N3mS7LrOw7+c53moeR4ajQa6GyBAgAAB0pJJm5LCDIUXDocXDq+99NILL7zxH+GNtbIsiaIk2nRQFEjKJEABBNBAz9U1D1lVOc9z5vst6veduvkqqyqzqhqoTuYXgUB3ddZ7L9+994zfOecptre3oWka7t69K2SecDiMN998E6lUSoa7r6+vS5iDwoDKXmViU6iTpU4FoYZYgJNKhwXyXFRaXGrY9byQ/YsEVUEzlKnmWNX3o1dy7NRDo+i00L/L5cL8/LxYwKc9B9B9zKR6716MI16r1yYjVMoqS5eeUyQSwejoKICjbkdX3bDjukAdlMIWuFTSFGDFYhEej6fj57VarWMEoNlslkEVDEOzb3IsFsP09DS8Xi92dnbgcrlgMpkk0jU1NSXeCtn89+/fl/NHRU7PNhQK4fDwsKN5BNfSbrcjn88LkYtKh6HPYrEorTxJlOR1yV3IZDLi5QcCAVgsFgQCAXg8Hon48LsPAlKpFIxGIxqNBhKJREdUlEZYNBqViVMAcO/ePVHcarqM3CP1Gmp42mg0Ynx8HLOzsxgbGxPZ3Wq1kMvlxGB85ZVXZFBGu91GIBAQb5fRGbajJpGPRmWxWMTBwYE8G3trkMPEPuDcB8xXUwawJzefn//OplUej0dquJ9LiNvtdp/KyKbnyELu6elpCXnQE2UbxlwuJyEQVQDX63UJmRAs5WDLuHK5jEgkgsPDQ5kJajKZsLOzg2w2K80S6IGn02kpB2K4qVKpoFKp4JNPPuloNEKQfdnNW2QepJuRUigUupLBBklA09BQyTVqi8RuG4/haVqo3aAeUEZm1LWh4mcUht6b/n5k15/VBYjPazabJRyp7xLX7fl4+Phnhm/9fr8MmK9UKlKBoGcLDxKbn2x44Ohc63ufsyICgKS1GO1ilIIlKYyClMtlaTbBvuaFQgHxeFyaErHW2OFwIJvNiqFfq9WwsbEhz8XymWazCavVKt5rIBAQ75adALkubMOZz+elnIvtjdmUJp1OS7ic+W6mvxgFdLvdmJubk8hcJpOR3xmkASrkAHAdqaDoUTIqyZ4EjUYDOzs7SCQS0oGSXAK2jmWklVwfGtx+vx+Tk5MIBAJIJpM4PDyUvDKNQa7H7u4uEomE7Dt1sBNZ1Sr5jK05Od2OQ2BYTqpGiWi8qZwpNbrHvazyrRhNYxooHo/33Ba5LwXNw6QPK/ILqMI3Fovh9u3bwrpmnoCCMBgMol6vizLmNT7//PMO15+dgIAjQfDkyRNpUA8AX3zxhdTWtdttHB4edn1u4EhRMkzGXAPvzXAFQx0UMHw+lRzGfANrHXl9tRwLOM5PD4r3TFCgcSPTYj6t+w4FJf9dVcYATnjhPAiEGurm4e/W61rfC70bKHRVkhHQnaTCfcHvyp9xrzIiREb4w4cP5YDrQSNxUNj8LpdLvF96GzRe2u22eD1UlnyP7D7mcDg6yh8ZVTMajRIuLZfLqNVqwj9h+JjKjp5ppVKRLl0Mj7IclGF01kyn02nZl9lsFq1WS9JmpVJJno+Knn+mp8awJSN+/J5+vx9+v18IbSQasYkTWcKDBLfbjVgsJrl2kqDoVZO1TlIWAGmz6XQ6hTSo8pJIzqK8tVqtCAQCsNlsyOfzKJfLiMfjYjhxL2UyGdjtdpmQqHqpqpdL9jgrbvicvBfzw+Pj49A0TWZBUBewzJPpDTooelliNpsxMjKCsbEx+Hw+uc/+/r4MaukFfSloei5so6d6Tfr8WrPZxJdffgm/399RM8z/u93ujvZvdrsd4XBYBm0T7XZbyGBk2Xm9XoTDYZRKpRNju7iIKvQeHnPWam6ZAoSHSN+ajqEuNmToVjLCUgt9DbTVau2ZcHTdoWcoM12ghrj57qxWqxCHaHmqKQ1CTSOQUKTPF/Pn3Xr6quurNxz1OXB14Atw0uNXIwM0DNQ94ff7pXNSs9mUPtzdLGJa78FgEOPj40gmk1hfX+/pPV93qCxp4JhPwu555AgAx+vD80BvmeQchjKpwDnvmwpf04772TOPWCwWpU8CoyqM0vD8s2czACEg2mw2eW4qfU63M5vN0h2N4W+2i2QnMF7b5/OhWq0iGo1KvpT7k2kczhkmN0EtQxwE8H2xiQeNJ5fLJSVYJHSxhpiVPuoUKoaRmTqgwcv3qZbecmoVI5wulwuBQKBjBnOxWOxw6hjdYdSLnCbKIRoG5L74fD7xdHl/7mvuE16bP6OD4fV6EQgEEAwG4fP55HPxeFzy6c1mUwaonPuO+1kQhp66DcNQw7gUps1mU2qG1ZwhG11wIfhzr9d7ostMsViUhvzqlJyxsbGuMzV5ONSXxsHsfEY9CYjWk+rdMK+sXhc49o67ha0ZxgOOrahBa/fZzfJT36Xe2yTRQlXC3dIGp11f9cD1n9X/vn5NVKVPw+KsaAaFvHpfAIhGo4hEInC5XKhWq8hkMpIf77a2rMGcm5vDm2++ie9///solUr4b//tv5167xcRNJ5JilFTEgxbAsccDOYXyZLmQAN6xMBxKaPBYBC+C4Wxx+NBIBCQOmimPJhDZgqFypIyh7KAUQwa0jQEeaYZ1eNsYDUikEqlROmwEiEUColnRAONNdfFYrEjH8n66zfeeAM/+clPvrI1ep7g+jocDlnPWq2GfD4vCpmKkWkDOkg8k5qmSftWNnFhLT0AyeszQkLFq0415Oez2aykEFTeEdNY1Ac0FhkRZkth7gMq1Gw2K3uMeovcE1XxWywWRKNReDwe+P1+ibJwmhcnZ7HPQ7lcluY756HvEDe/AEON50Hv0QAQ1i7DhcxbHx4edoQzgSMhy7C0eh313iShaZom4fFgMCjjxNRwqEru4eFjqzdVwDBvRKi5V0J9B+phpgAYxKEZLpdLwjnd1lb1ds7bHwwVAxDhTcGqdqLS30uP88JFvEa3+5PJS6HLdAmbUdC6zuVyMpe623qSnTk2NoZvfOMbeOONN3D37l3EYjH8+Mc/xo9+9KOBGkFJb4MpH5aw8UzTU2bUQo1yeDwetFrHYwH5/km4JFua58tsNgtpc39/vyMyRaVJMg7DrK1WS7x0lbcAHM8Mp9fERjWMvqn9/6kQLBYLvF6vKJV2uy18HH6XYrHY8V153YWFBbz00ksy5WpQwLNCJcn2y1RgVJA0ttTP8HPM/QNH68JSKOC4KRJwPNeAStxms8Fut0stc7ValVC1GumgfFH3JT15ymk11817MIdMo4IyT5VPo6OjCIfDsgcByPPzP5XrQkXebDZx8+ZN/Pa3vz33HfeloAuFgggnr9d7Kimqm8DkC2XLtadPnyIUCnV8JpfLIRQKCeOP19I3d0ilUh3Kk4OwVVJOq9WShVMFqsfjgaYdDVugQCEDU33u04QpF4LWF4fVs66XBfgqSEAYBESjUUlv0LBSQ0UAOixnCkd91MJgOBpGwTFtXA+25OxWL6v+LvNFvRg/+s+ogt1sNkvukAQhEj+Ypz4tJMkc9ejoKF555RUsLi7i1VdfxdjYGH7605/ib/7mb3Dv3r0rn5N9HVAsFkWoUQmTMMW11/87S6/U3DQNMUbJ0um0yBb+PtMkdrtdlKymadKYgl273G43jEajCEZ+jt6L2+2Gx+MRxcDcJM8/veJqtSqpEJVspta0ksGt9lcGjuXD+Pg4vvGNb2BpaUka1HDi36Cg2WyKDGdpGcuQ3G53hzPDfcE1JI+EqULyBuh582zTiCbxioTTQCAAt9stpEM10koFS8+ekU1GVxh1YQ6ak7iYxuTv04mjQmZzk2AwKI4d+RGpVAqNRqNjoBR/n78TiUQwPz8vk616QV8KWhV0dP9Pgz4vSctWHaqtZ34Wi0UEg0GxbLqxXi0Wi9Q3hsNh6fyi77FLUoieic0Zonqi21nMXy4SrUB6D5VKBSMjI9jd3UWz2exoX6cKF33Y/kXGzs4OrFardFwCjodGqH/n5nQ6nbLZ6ZUyFGkwGFAsFpHNZuUz5+0p4LgevdtnubbAccqBeS2LxSKGokpKicfjUpZxXpcf5pVDoRBu3bqF1157Dbdv30Y0GsUvfvEL/Nf/+l9RqVQkTDqo0J8depY0yrjeTC2RTEjuh8PhgNPpFCY2lbbJZBIvlvKBeWaWU/H9F4tFkQX0hBkSNRiO2i5yn0UiESGv0SuiImi32/D7/cIIdzqdEikpFApCiGM0Tp1ip97L4/GIpxyJRJBIJPDgwQMYDEdTljY2NgYm/wwcOWys/WaenutLRce+7KrHzGgT88lk5tNjJe+Av0ddYLFYZN8wWplOpyVlQk+eNdKqcqaRxVQK70NdpKbgyNonf4r/8bsyJZPL5aTjIfUKS7LYQ54d8aLRqHynbDZ7ZvtgFX0paHqLtGj0UMNYegXdbrclD8GQtOoZU2Bubm52CGL134xGI27cuIGnT5+iXq/D5/PBZDIhl8sJJV4lo7GLjDowg1aYnnWult+o4LOo5Rq5XE42yO7urjwrrSWyUCmQBglqiQJw3DFLLZnhZzRNkzWmkuQ74edisVhfKQB+loeP4Sn256VBRGOAz0GPOJ/PCzOzV7DkZmJiAjMzM3j99ddx584dGRbw3//7f8cHH3xw5vdgxGdQlXa73ZYQIz0Vtc0nzx6bQzCvy25y9JKp4BniJn+BwpsthWOxmIS9uZc49Yx7g8qCxCSfzyd12RTQqkdMB4LRGbKTGTHS1/+bzWZEIhG88sorsNvtuHHjBjKZDLa3t7G1tSWe1cHBQcfku0EB659p9NILZv6YvCEa5Gren+eAMoF9tFW+idoqVU1LsAEUib2VSkVIiWRc05Om3lD1FeU+S/poXNhsNnHqjEajcIhICmaqTa1cYIqDqZCxsTFhbk9MTKDRaCCbzSKfzyOXyyEWi+Hg4KBn0nBfu4WF3aoQVqEKH70CZ2iKuSE1L2iz2TAyMiLTYlQSB8MUtGgZTuaUGl5TbdfI+59mrdKi58EHOgU/rSlaRNPT09IWjoYH72cwGGQotypI9F7loIJeBnBMrCLxAoC8Dx6uYrEo4SG9t6rmpGmxquRCGkFqu1C2aaRwJ2Oc68d16Cf/q5ZRkYH96quv4vvf/z6azSb+z//5P/gf/+N/4OHDh9jd3e1pjbtFgwYRPPeqAUR2tuolq+U4Pp8P2WxWUlIqadNoNIrnQtZ8NpuVVqAqK18lZDFFwsgJvTJen6VX9NCpQFWCGr8Pf8Zyq1AohLm5Ody5c0eUQ6FQwGeffYZqtYrt7W1pT6qPEg5SyeXo6KjIWfIGGMa22+1wu90d87vpNVPJMpfMGnO32y2zvJnPpxJlDppnWe1KSTlC2U35wogI94jNZpNnYkib3jg/RwOKIXg2oKKXrdb21+t1aXE6Nzcnkx3Hx8eFGMZ+3fF4HIVCQQyVXg21vlt90nqkVayWDZwmgEioIPReJQUroSpWVbBq2lFNtdogoR+wzpn3UL19huiAIwY3G7mzuJ7WUq1WE1a4Wgun5ix/X6HmjVWhabVaxcumZ6uWnpHIo7JqGa2hQajm9huNhoQ2AZwIUfWrCKnobTYbZmdnsbi4iLGxMbz77rtwuVxYXV3FgwcP8J/+03/C5uamNGQYojdwnai81f8z/EshSSFcq9UkJUFFylBqvV7vCHcDkOYnavtGdR8wPE0jjxG2boaTWp9vtVoRCoXEUOdUrdXVVayurorzkM1msbe3J/LqrJTZoIDpPio6epv0mtXzS0IZoxtMazDtwHUjy5vyQWVM899pcKnylmRFNRxNb5g5Z3rFTqdTjDDyXlgWR4ODERM+v9PplGt4vV4xDN566y1hmHs8HuTzeayvr0sXQSplyic9Cfo89KWgedBo2TKcpIYfLrIxm81m1wYj3aAq9273UcMZak0tLWaCZV3cTAxBVqvVE0QO1armZKJ4PC4KpluTjt93qMqy26B6lbGtttJTw4jPQwkyKsLRoV6vFy+99BLeeOMNsX5NJhM++ugj/K//9b/w5ZdfYnV1tefGAkP0Du4B1filEKTwp8JTyUMq61b1iNkGlOkl7idGdfh3VSlTNqh/ttlsuHnzJjRNw8zMDAKBgDSgSaVSWFlZEWJbqVSS0ap6XsuggwqZUQbVKwWOjSYA4jkCkHPPzm1qtIKKWM35MoSsRlZVHonP5xMZwt9XyWBqKoPd3Tj6kfuP9ckq25v3bLfbGBkZQTgcht/vh9PplHkT/K77+/tYWVkRpdxtcuNFcOGEiL7AW+3+ordA1RrkqwQPoupxn1Zjy5Ao++tyIfmZbrliHlw2JSBBRI0GdLvnEOeD63JWKuKyoAFps9mkWf7CwgJu3LgBv9+P6elpIffs7e3h7/7u76TpCDtBDfH8oKa5KB8oT6i0VSZvNwKfGvni//Xrpv87r8nzT+/t9ddfF2Yu+3anUinp/Z1IJISUpHpY6nV/H8H3QKOKRjCVsKog1YY1DPNSIavpRbX8levEzzGczWvQ4Oa6kgymdr5kaJxhbFag2O126ZueTCZl2hUn0QUCAVitVoyMjIgyt1gsyGazQhLL5/PIZDKi5IGr2wtXwlhQrWCCSrubcuaB68am5r+rNcanfVn14LGlH71av98Pg8Eg9dGsvQRwYmazel+GVklqYi9gWunMWQ1xPaBavGpJA8Pqy8vLuHXrlqQt2HLwyZMn+LM/+zPcv39fvLTfVwF73aBXuGelLno1jhlWBSC908vlMrxeL6ampkSWVCoVbG1t4fHjx3C5XIjFYh11tUOcDrUKQ58+ZISDf+d/JHWqipigg0TWvUr4YthYNZJUWcA0COU4lT+9cZfLJV3nXC4XlpeXkc1mUSgU4PV6RUlrmiall41GQ1qJss75efOMnhulUL9Q3f7ttLKa06xl4JjERdYeE/fRaBSVSkXap/HfaJF1G+3ldDolXE1mIQW92idcZR0O8fWCoSev1wuPx4NIJAKfzweDwYBoNIo7d+5geXkZrVYLT58+xd7eHu7fv49CoYCtrS1sb29/LSP/fl9IYl81VBKhCoY4q9UqpqenMTs7i0qlglwuh7GxMenJkMvlhGOyubkpbT6Z9xzidFDxnldGyrVRlTb/z/U77xqn6QpGcZl29Xg88Hq9Mp2KCtTlckmFjdVqxeLiIlwuFw4PDzE2NoaFhQWk0+kOMuPh4SHq9TrS6TRyuZyk6ujYqVVKvUJfoXQeri3nv9sXsFgsCIVCEk7gZ2q1GmKxWMchZXMI1fpSS7zYHYrF6gy3qLXUQ4F6Euz69HXBbDZjaWkJ3/3ud3Hz5k2Ew2G0Wi2sra3hyZMn+NGPfiQ5Y+aZulm5es+b+6QXgdMvKIgGiVzWrSTxq4baRIJ103a7HS+//DLGx8exs7ODQqGAQCAgofN6vY4nT54gEAggk8lIwxEKXX1b2quGvuTnRQbLnPp9V+rne91DKpeI/5HJTQXN0rxAIAC/34+xsTFpfLS8vCw9K4rFIkZHR+FwOISwenBwgGQyiUwmI+Mpc7mcnFn13nyWi+wROo29VpX0paDVoRdfB9icvVgsdli39LiNRiMikYh4v8wnsbwHgJQDqOxzlZB01cIZgBBWBgEkTjyP93QW1ANycHCAn/70p/jRj36E/f39czc7SSP6w62SjZ43Bo1AxEqGr8qIVSMQNHh8Pp80ryAb2GKxdAzyqdVqePbsmYyZzGQyMJvNyOfzJ8pC1Zy3fl9cxfdkmHdQmpWwYcdXIdvoZKnhcJK79DMTqtUqxsfHEQ6Hpf6Ya88ucVtbW9JFjAxuNk1Ru+Dx3mqoHsCFjTjKgV7TpD0paJXQ83V6lWq9InBcDqXmIFgUz7A0R4QBeO7W8Wm4aPnPdQKfnQ3xv06k02lpENMLVDIj8XUISbX95IsKVUl+nU03yC/hc/C8k/CZzWZFELKUi3tATZ+p34eVHHrhfJWggh6EPaCfd/68oV8X1bNlPpvs7nw+Ly07OeBGrW1W+/urHrFKSlT/TTXu1T1zUS9a/R5noacTxrKjr9sDaDabHYJZ3+NY37CkWxji6zgYfG+FQkFGkL1o4B54UfPxX/feVTEI++CrFs5nQW8wvgge6iDsgQcPHnzNT3KMVqslYyjZVvVFwHn7wKD1oLHa7TZisZjMZR6iP2jaUbet8fHxvgvVrwuGe+DyGO6DIYZ7YAig933Qk4IeYoghhhhiiCG+WryYJtwQQwwxxBBDDDiGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriGGCnqIIYYYYoghriF6Gjc5nF5yOQwn2AwBDPfBEMM9MMQRet0HPSnoWCyGqampK3u431fs7OxgcnLy636MC2G4B64Ow30wxHAPDAGcvw96UtAejwcAYLfbUa1WO/7NaDTC7XYjn88DABwOB9rtNmq1GjweDwqFAgwGA5xOJ0qlEiwWCxqNBgwGA06bdLm4uIhUKgWbzYZEIoFWqwWHwwFN09BsNuFwOGAymVCpVFCr1TA+Po5YLAa73Y5arSbXDQaDKJVKqNfr8Pl8yOfzaLfb8Pv9aDQa0DQNLpcL6XQarVYLRqNR/r1YLKLZbMJisaDZbJ76rGeB1qXRaESr1ZL3+CKCz3737l0EAgF4vV5ks1msr6/D6/VicnISW1tbWF9fR7PZxOjoKBwOB+x2O1qtFqrVKmq1GlqtFiwWC2w2G5rNJlqtFrxeLyYmJlCr1VAul+HxeJDL5TA2NoZCoYBarYZUKoVqtYp2uw2z2Qyn0wmr1Qqr1Sp7qdVqIRaLwWKxoF6vw+FwYGpqCh6PB0+fPsXm5ibsdjsmJiYQDodRKBRweHgIg8EAi8WCYDAIv9+P7e1tFAoFmM1maJoGs9kse4P3NxgMMBgMMBqN0DRN/mw0GmEwGFAul9Fut9FqtaBpGubm5uByufCrX/1qIPaBHpQNZrMZJpNJ1tZkMsFqtaJer8Nut6NSqcDlcqFYLELTNJhMJpjNZtRqNQDHZ0bTNFitVrz66qtYW1tDNpuFz+dDqVSCpmmw2+0ol8vyO/z8yMgIdnZ2MDo6ioODA1gsFmiahkgkImvNe9jtdrTbbVSrVbRaLYRCIaTTaZhMJgCQPc79aDab4fP5UK1WUSqVOta71WrJ3mi1WrIf7HY7HA4HGo0GisWi7KFB3AOE2WxGs9mEwWCAz+dDNpsFAJhMJrRaLfmcyWRCu93uSbbOz8/D4XDg2bNnaDQa8Hg8KJfLaDabpz5jtVpFo9E48W82mw02mw2FQkHubTAY4Ha7US6XO57RaDRicnISu7u7aLfbHc9uMBg67m+xWGQfUF7oQVlTr9flOc9CTzEWbmh9OIObkMoZABqNhiwONyoAOYD8QgaDQQSf2dxpJ1SrVTidThwcHMgLNJvNsFgsaLfbKJfLKJVK8gKMRiO8Xi/8fn/HYpvNZthsNjgcDhG26nfgobRYLACONgFf3vj4OADIoeOh1b+Ts6BpmiiOXn/nuoLPPj4+jmAwiI2NDWxubsLr9SIQCCCVSqFQKMBqtXa862q1Kv8ZjUZYrVYAEGXr8/kwOzsLt9uNRqOBVquFfD6PmZkZTE1NwWw2I5VKIZfLIZfLwWazIRAIIBKJIBAIwG63IxKJYGxsDKFQqON9+/1+Me5oNCwvL2NpaQmTk5Nwu92o1+totVqIRqOYmZmBzWZDOByGwWCQvVwoFOSw8wC2223Z4/w5vzMNUo/HA5fLJcYkQ1mDsA/0qNfrsNlscv7sdjsAyN9brZasS61WkzPH90Zlx8/bbDbU63UYDAbcuHEDAJDL5TAxMQGr1QqPxyOf533r9Tqi0ShcLhfq9TosFgt8Pp/cx263w2q1wu12i9FIJeJwONBqteDz+WC32+H1emGz2eD1egFA/s89brPZYDKZxMgwGAwn/g4ApVIJ+Xwe9XodkUgENpvtzPf4IuC8Z1eVlqqkVMUH4IQ8PuteiUQCyWRSHCv9tYAjBcnPT0xMYHp6+sRn7HY7FhcX4XA4Ou6taRra7TYcDkfH56lsQ6EQAMj6UQaooLFG3dYN3Kf673caevKgz4Le+uHiqJ5Fu92Wn/PzZy3c3t4eXC5Xx+cKhQKMRiMcDgdKpRKAo5fVaDRgt9tRKpVQLBY7rkOh6na74fP5kEqlYLVa0Wg0UC6XoWkaNjc3JSoQDoeRy+WQSCSQy+XkeSmUTSYTTCaTbBI9zooKDAqsVivW1tZQLBYRCARgtVpRqVRQKpXQarXgcrng8Xhgs9lQrVZFWFmtVmiaJhYt3ye943q9jmw2K1GRdruNg4MDxGIx7O7uQtM0hEIhTE5OwuVywel0olgsIp1OY2pqSqIeq6uraLfbIozpxdOTS6VSEsHZ399HoVCA2+0Wb6fVamFiYgL5fB6FQgHtdlu8NnpjVAo05rh/eSibzSaazabsF7/fP7D5OpPJBKPRiGazCavVKu/C7XajUqmcOPv0fNV30Wg0RLjR8OH+ePjwIWZmZuSzXK9KpSLXcDqdck7T6TR8Ph9isRicTidyuRyazSYajQZcLhfy+bw8s8PhQLFYlChOIpGQiNnk5CTy+Tz8fj92dnbk+SwWC/L5PAwGA+x2O4xGI6rVqpwDGqeMFPIcqN/z9wH0IKmseB6oCAF09TD1oDwtFAooFAryc+qAbp81GAwdSlBFu92Gy+VCIpE4Iau7XRMADg8P4ff7AUCMfTqfqsynQamu8WmedK/oS0Hrb+RyuTq+lNFohM1mQ6VSkXA0F0l9efoXwzCiepANBgNsNpt43rw/X3yr1ZIQF3+3WCzKy2m32x1hNArWRqPREYZTQ/ZffvmlKJBisSjKnIKg1WrBbDbDarWiVqt1hGxU63+Qsba2hlKpJF4EPaNmswmn09nx/oEjq9ZsNotQpsCqVCowmUyoVqsol8uiTEdHR2VTFwoFeDwe3L17F6FQCF6vF/V6XcLdlUpFUhGZTAbFYhEWiwXlclnu02w2sb29je3tbXke4MgbM5lMWFhYgNPphMFgQCqVkucMh8MwmUwoFosSCmU4jla10WgUxU+lbDAYUKvV0Gw2YbPZxDjxer0nojCDgFarJemrcrkMt9stStFsNqNer8NsNsNsNqNSqXR41qow03uePFfVahXb29uwWq2wWCzIZrOiwOlFF4tFUbCxWEyejYaDpmnI5XISUeHvVioVABBlbzQaRd6sr6+j0WggGo2KV1WtVlGv18VAKJfL4nl7PB60Wi2RTxaLRUK4TIlQFg4SqKT43SgTufb1el1kQS8eM6+pl6X6KG43pad67hsbG12vXa/X8fnnn3eE1j0eT0dEVo9KpSJ6guurRsN4HTWCxn+nXuBe4D1UfXcWLqWgrVZrh9eqfmnVW9K/cC6iumD6h6XXoofqofN5Dg8PJV+s5hz47xQe/JlqVKjPxpAXn99ut4uRQVAx678TDQD9sw0aSqUSzGYz7HY7LBaLeCAUwlyfdrsNq9UqeUd6H5VKRTwQh8MBq9UKv98Pr9fbkUsm14BhYqPRiHQ6jXQ6Lc/QbrdFOeRyObRaLYyOjiKfz6NUKmF/f1+Uhdvtht1uh9vtlrCzw+GA0+kEcKQQstksGo0GHA4H/H4/7HY7stksAoEAisWiXJf7t1gsilDiNdxutyhxvifmogdtT3C9qKhKpZKcv3Q6DZvNJoKaipmCjoKLZ5ZGDnAcVuQ9uH/077BYLCIUCqHVaiGRSAA4EqBOp1OiXMyBtttt5PN5BAIBJBIJ8X553tVojyq7kskknE4ngsEgCoUCKpUKCoWC7ElG4ur1Ovx+P3K5HOr1usgjfl+bzdYRTRgUqDKSKSw1qsRoGNBdqapylIYMz4+q8NTP0yBQ4Xa7xSAHTkZ2VahrwGdmqopnVQ9ej3qEv6N/Dj43uTHtdrsj8qZ+v17Ql4LuZv3wZ/QqVY+X8Pl8yGQyJ35HVWp6nPYFVAOAKBQK8Hq9MBqNSCaTsFgsMBqNEnLoRkSgEuVz6+9JD1y1gBku5wZkPoIhrlqtJoJHDfEMkmddr9dhNBrhcrnQaDSQy+XgcrmExAcccwKcTmdHxKNYLKJWq8FsNkvYlznrfD5/4oAZDAak0+mO/cLQJ0OqVqsVuVwOVqsVLpdLFHE6nRaSGA9ho9EQw8/n84mAVe9JngMFts1mw8TEBBqNBnZ3d3FwcCAHmJEieseNRgM+nw8GgwH5fB4ulwsulwuZTAalUulEfutFhrqvSbAEOjkmtVpNzp9K6DIajZIeoCJUyZ3AyfPfzaNqt9tIp9PCa+DnNE2Dw+FArVaDw+FAOByWezHKVqvVxGigwWUymeS51Igf5YDRaMT4+Diy2SwymQw8Hg9CoRD29/flMySmlstlMQDoyfdKiHpRQP4QIxHA8bqcppTJAUin0/J5VeHqlV6v76ubvlAjsExpUCfo96eapuqmoPVoNBqwWCxilDGET8dTvTZTsUxxUH71ggvnoGnZ8svT+iRjWYXRaITT6RRrs5cXcB7UhWs2mydIOBQg54VUGJbvZlioix4IBCS0GwqFsLW1JZ4jcGRJMpzHl8+wxiCBuVqz2SzeAgk0BoMBfr8fwWAQHo8HZrMZyWQS1WoVz549E2U2NjYGr9crCpMeR7fD2G2vMP/TaDRQrVaF1ENhbbfbheXN9WCenOkUHp5Go4FKpSJCnn/P5/NwOp2w2+1oNBoIBoMIBAKwWCzY29uDxWKBxWJBqVQSL5q5TfIhGP7mc5FXMQjQCxkKJKaQyHBVUx0U3E6nU/K1p+UKz4NqHKgKAoDIArfbjUQigYWFBVkzcllIQuO1qNAZ8VC9eU3TJOqmaRru3LmD/f19rK+vw+/3Y3p6Gjs7O8LDmJ2dxdbWlnjZhUIBPp8PmqZ1EGpfdOgjhYwkqKH8bunM0wi3l4ku0ABUQQdMreqgjFb5UawuoWxTDbTTwH+fmpqCyWRCPB7vYKWrcqtQKEhqrV8DrS/GgpoHYPiGD0OLQrVmiXw+Lw94kYfsBSzRAY6ELAWGqqDV5D03FkPWp7HugKONw3KLbDYr4W8Kc+CYIEQLSg3RDBIYymZez+FwSNTA7XZjZmZGohnMQW1sbKBSqSAQCGBmZgbBYBD1eh25XA7lcrkr6U41+rqBnhK942KxiGw2i2w2i2q1KgSyTCaDdDqNXC4nXhq5B7w3jTmVqFSv15HP55HL5TrC6pOTkwgGg+JhBwIBYQST6MafMz/Kwz9Ie4HRI31qAzjipugNLpY60uPi/rhKcB25lrxPLBYTjgDXwW63d3jJNOYowAm9gV0sFnH//n3cvHkTs7Oz2N7elrIfp9OJarWKvb09eL1eCf0DR6mh8fHxrvLxRYYqU3m2+OduaDQayGQyHdGkXh22fs8PqytoNKiVGJQ5NCT5DM1mE3a7vad7MaoWDAYlQqfuKRVq+qQfB7UvBa2SgIDjRbBarR2lJ/yPNV5kTfcLempngd6LPnzEPADDWHxO/fVoLasGRDfU63XE43F5yZFIpOPa9MJUQdyNiv+io16vw2q1iudIr9BisWBmZgZut1vyx61WCx9//DGKxSJefvllLC8vw+FwIJvNIp1On2mpMl9M8lg3wWaxWISBzYMFHKUcCoVCx8EzGo3weDwIBAJyKJlzUsuD9AepUqkgnU7j8PAQ6XRawpz8HYbVmRJJp9NCmHM6nTCbzUJwu4rI0XUB97nKzlVz0noviXl8p9OJZrPZl3Imie8skh3vzXNMh4FcBRpylE1U3jQ2C4UCnE5nx345Dfl8Hr/5zW/w2muv4ebNm4jH4xJNY612KpWSZ2e0YWtra6DSHGpqQzV6WNqmnm3yMfh7XMt+5KPT6RTDsBcwmquvhSbHhc/Fvcx6fKvV2hOhU9M0JJNJJJNJzM/Pd8golnypkQRVx/RqbPTN+edN1QPG0B5zSwxjqA/UrWD8zAczGjEyMtJ3Qb96kOnJqnlyt9stXh+fm5bPeSUQVLj0kJjHBCDemNVqRSAQ6GsjvUigkVOpVCTHXCwW4fF4pA49FAphbGwMn332GYxGI958803Mz88LmadQKEikoRuYL+I6Mq+swmQywePxwO12w+l0IhqNSm6xWCyK1axpGpxOJ2ZmZvDqq68KE5yMcobLVcNNPTwkDKVSKezv70s9640bN6Te1mw2yzMy18T8OJVAs9nsmkZ5UaESuei1qudJzUVbLBb57qeVspwFt9st8qSb4FSZs0ajEX6/X2QUw5ysi2a+kYYd+RKMmpBbcZ7Bns1m8f/+3//DH/7hH2Jubk72lMlkknB2sVhEtVrF6OiolBSyfHMQwJQGAJH7wEmla7FYMDk5KaWGmqadSEv0ci+/3w+3293z79AgA07WH3MfWSwWIagyTcUKhF5BY2xpaamj1NJisYhxSWeAz9JrFLkvBc2b6LU/yT3M9dGivsxmpHI9TWny4OsZcSpbrtFoSAMF4EiJkizC31MVaS/hJ03TEIvFUK1W4Xa7pYAdgIRRXC6X5OEGDSaTSdjM7XYbyWRSyDHMs964cQMPHz5EIpHA+++/j6mpKeRyOcTjcSHTnHZt9VCp3oz6PklSC4VC4hWn02ns7+9LHTVzzR6PB4uLi5icnESlUsHq6qooC3p7pVIJHo9HyIXdlADD18lkUrphsc62WCzC4XDA5XIJQYw1m4zQ9MPcfBHARjOqsd6N1cp0UKVS6SCF9YNCoYCxsbFTBRvlAA0kEjhJ5uTzVSoV+azZbMbY2Biq1apwKFS2+FnpFSKZTOJv/uZv8P3vfx/RaFQ8ymaziWAwCAAdnRBPMzBeVLTbbVG0lH0AOip7TCaTtAXN5XId3IFeoCcU91NHTgNdVby8N5+DHQ75dxrwNK57gaZpWFtbg9FolJp9nntGVfQM/l6v3ZeCZliPG5GhAX0B+quvvgqXy3WhkB7DUpqmYW9vr4P9rYIhFbX+mIqRC0NSEq0uMrKZi9I0DRMTE1hYWJA2hb2AeVXgqGONqqRbrZawytUmHYMC5m7ZsKHZbGJhYUEUdDAYRKvVwm9/+1v84Ac/wNLSEmKxGPb29qT9ZTdYLBZEo1EEAgFZI3piqmBnedbY2BicTicKhQI2NjaQSCTg9/vh9/vFUzIajXjllVcQiURw//59bG5uIhKJYHFxEUajUWqnWaLj8XjEU+t2gFqtlnjSjUZDutCxQQtDcGyYwZIfkhAHqUkFhZyaGtB7nSTdUAD2yz2hbKnVaiJI1f1Dz5kpFcog9j9gAxPyUcrlshh6qVQKZrMZDocDuVxOFCq7D/biRQPA9vY2fvazn+E73/mOpDP4nB6PB+12W5S0yWQSY2BQ0G391XX2+/149913hQzaL9jRDYCc116h8iRU41HVVa1WC7lcTvYNyzo1TesrCtpoNLC2tobp6WkJ8dOAsdlsYrwTz0VBqzdpt9uSI1ZvZjKZ5GBcBAwL8B7dBDoPEVnhBD18tdznxo0bkvdRLT4inU5L6JOeWi9oNBqIxWLQNE26zBAkkrF71iAJ5mazKQzsTCaDiYkJzMzMwO/3o1KpYHR0FJ999hkmJyfx+uuvY3t7G3t7e+cyI9lHGThuXMMDT7IZcLSm0WgUbrcb29vb2N3dRbPZxNTUlPT3ZjjLbDZjZGQEKysrCAQCeOutt3Djxg14vV4Eg0GMj4/LPROJBJxOp7SFPc17Yr10KpWScKrD4ZBWs3xulqC1223pZjZIaQ/uaXonal6P/0ZD5yLpLTZ5obHOfs4quE/oNFAR0zlQGcN8JpJCm80mNjc3JcoWjUblnj6fT3rG94KVlRVks1m89tpr2N/fF54FUx8kEbIcc1Cg7gGbzSZyW8XS0pI0kboIwuGwOFj1er3nNJEqc/UkTaZi9KCsnp+fFy+6H5RKJekDTzDy5vP5et5PHd+jnw9TWarWEj0dKrapqSlsb29faEEYdqI1exrYZEKfx1S71jAfPjc31xFWorCgd5/NZlEoFDA3NyfWTq+oVCo4PDyE2+0Wa57RhFQqJZ66fsDIiwx2YaMAmp+fh8/nk/VutVq4f/8+vvWtbyGXy2F1dfWEIdUNFOT5fF48UlqiZEhTeEYiESQSCWSzWYTDYYTDYflcuVyWlAs9aQB4//33YTabsbW1hY2NDRH44+PjcDqdyGQyKJfL0oBFDbXr0Wg0pGkKw5YkjPFssFlGPp8Xz+15VC98XVCFjdqoBTiWE8zr9vO9yaJfXFwU5c8acz3UTmG8D9m09JpUr47ha/4O03Jk/U9PT0tJjNpXu5dn/vnPf47R0VHhQIRCIfHIGHmklzYo4DtlX3K9h2y323H37l189tlnfeecgaP3OjExgUgkAqB7CuW03yMHADjSUS6XS4hbkUjkVKdpb28Pk5OTCAQCANB3SmJnZ0fmDhDk6fDZ+Ey9oC8FzdCRWpLA0BXzLKz7vIgwYqtECrpuMJvNp9aTqt48rSG73S5J/G5ot9tYXV1FMBiEyWSSsHmvSKVSMBgMCAaDHaw9WuaD5kGrpXaTk5MYGRmRJiOvvPIK7t27h5GREYyMjODRo0cSTTgPtDQZ5Wi1WpIHouBnK9ByuYyDgwMZlsG6ZRpoTJOUSiXpzV2tVrGzs4N4PI5KpSIlcmazGTMzM6hUKtjd3ZVmAmeVWjBsmslkRAmwaxkNGHrj1WpVeo0PEoOX5WkUhnowqtRvbauao7x9+/apnAAAJ6JllE0s/2SUj9GLbgQjyq9YLCbCn/uCBnYvz1ytVvHjH/8Yd+7cgdlsRqFQQCAQwMHBgfSnBy5Gkruu4Ltnf2pVCRuNRrzxxhsoFAp49uzZha+fTCb7Zm5zTdV9yRA7DbPTFH2tVkM6nYbf7+8ok+sVtVoN29vbHXKfvBRG9fpR+n1pDrUrC3M/fABN0/Dyyy+LJ3JRxGKxU/POxGk1lKpHTauaeeezUCgUpHk6hyz0ikajgXg8LjM99QJJT69/0UHlZLVaMT8/L4bIzMwMrFYrHjx4gFdeeQXpdFpqRHtBo9GQ8W8Gg0FqFrnJVVY/hxqwvIkKmjluNX9ULBZljfQENR5WhuZIKlLrYs9CrVaT8jqDwSB9u9khjTwJdVjAoECNpulBA+eiEQODwYBnz54hHA53jb7ow5UMWXJqGPPWbEQTCARQrVaF3d0NmqZhZ2eno7GMWjLaC6rVKuLxOObm5sQANBgMKJVKsNvtJ1JhgwCeFf05DwaDeP311/Gb3/zmUuTInZ2djhkLp0GfytBDlcvnrSfJwySj9kv2pXFAPcK0GZ+D5aO9oC8FTQ+XzQlUhh2HEySTyX4ueQLlchmHh4ddCWbhcBjt9tEQhW5GAA+yygLO5XLnUvMZeuJIun6tpoODA1QqFclnAkelIVTMg1Re02q1kMlkEA6HZV5uNBrFwsICnj59CqfTibGxMTx9+vRcQ0tFu33UI52KjGFHHm63241IJILt7W2ZMgRAaqo55IKsYjIomYLhZCU9ms1mR3cnhjwZ6j7vmRl+pydvMpkQCoWkraTD4ZDa64swmK8r+K7Vc8pzFwwGT3SZ6geMyH300UfS/UkFFbTaYIbhaHpHFNhq+9izBC0JnWxFq89h94rt7W3hyNDYq9VqEnEYGxvr821cb1DR6Ecozs7OolAo4ODg4FLXL5fLQuI8C9xregdJr7DPM7hocJDP4PP5LswdUaNxbAFMp6BXp+1CsVcKJNUK4BjAqxBCp7G/6aWdZ02pC8DhBmeB5UG0fPqpgQOONsfOzg7GxsbEGGCrwUEKbwPHhK3x8XGkUinY7XbMzs4CAD755BPMzs4in89jZ2en7/Amc0zM29Noslgs0hwkHo/Ley4WiygUCmg0GicajKhkRl5XrzD4M9WwazabKJVKPRMGVeKhzWaTiVpce+azL9PW8jpCnc+unjeuQSaTuXRZGedw68E9wpQUc8m8P4CO80yPmBGabiDrmtPZ2B6yn+/AsPru7q7MsFZrgy9S/3vdwV746nsym814++23sbGxcWn+DXv4n7YOVJ76Tn1qKk7f1+A8qI5nvyFpFSpTXFX0pVKp51RH3yQxCk+1MwwAyeE9r1pPeu4UuKe9aDYsUJ/rPMFosVhkgDfrKPsFez0z1M3Q5yCxNoEjBT0yMoJAIIB4PC5lbGtra6hUKohGo1hfX++oebwIWL9qMBgQjUbx6quvSjcom82GZDKJbDYrJTxUtsxBcx9Q6ZLh321/MmKiRl76CWvx+urIQZZgUcmorPRBAJt/aNrx5Cd6s+oox8uAxhahGl3qqFO13EqVE0yXMN11lvNAQ4O/UygUTkQIegV71JtMJjHY2Y97kIw0ADLeVYXX65Xa4KvAWcqZfCR9zln9s/4snyWX9OHpyzhYKjGQBNTTnuk09HV3NZzEsWu8WavVwuHhYT+X6wkMOWiahs8//7xjGkm3z6rJeZPJhGQy2VOolQcT6L/rGZFMJjE5OSkM3kKhALvdPlC5R5fLhampKSQSCWEmfv755/jpT3+KaDSKarWK1dXVKxNEIyMj+Na3vgWLxYJPPvkE9XpdyqvUXvAUsEy/AMdNB3gg9c/En/Pz7PSk8hhURX8aGOpmWU2tVoPX64XP50MikehohDIoULv18T2R0bu1tfXc78+2w/pyKJXBSw+fnovKadCDoWj+mSxutad4r0JV0zTs7u5KfwR68/v7+313RrzOYH5dj1AohPv372NnZ+e53p/nlWdelfuEvgU0f+8sJa32EycX5qLgHmXFB/dir85LXwqa9Y6s82SOJhKJIJ1OX3mvYZJslpaWOmj8Nputo82m2mFKtaTYwu+8MAsbYjBsdtEoAHPjtOrK5bK0Fx0UuN1uNBoNHBwcwOFwIJlM4pe//CUKhQIikQg2NzdllNxlYbVacfv2bczOzuKDDz6Qv1erVeRyOakr5aZXG9QwwpNOp8Wz1e8DKhW1RrbRaEh7PtU7A85u0afmrnmdYDAIu92OarUq068GBfRW+e5YSkTv6XlAL3hVjoF+GA/z0eQzkHh4FkmMMoByTO8InFY/2w1U9uxexpD5ZQi01w18p8Cxp+lyueD1enHv3r2v5BlY7cH2zSr0+gA4kikcE9sNjLYAxyV/l9FrlEms4R4dHT3Rtvgs9KWg6Wlw02va0QSjqamp50KA0bSjvs4TExMdL4meG8OIaqkFXypw9IJ7CbWSjauGOC+Cer2OdDqNiYkJ+dlV5OKuE+x2u/QYdjgcSCQSwpAtl8vY3Ny8srrvyclJvP/++3j06BFqtRr+3b/7d1heXobf7xdSIgBJJag1yJyY1W634ff7JdSs3wtqGJP/t1qtHaUYagj9NAFPkhufhSFvr9eLUqkkM6sHBWz+wHdE77QXQs9FQK+WXINCoSClUySFqY2BOLyC/2d67qyzzf7y/D76vdJP8xKSEjlYhkYfo46DANVg4nth3/HnOVaTjVFUhUwekXqeu51VOplngWWjNECuyvGs1WrSE75X9B1gp0XCMADnqF41KGzfeOMNxGKxjn9rt9vIZrNwuVyIRqPyc1r0fKGVSqWn8HapVJLa7VKpdCljIx6PS4MNdRD8oIA1niRRqU1EUqkU8vn8pT0ohkpv3boFs9mMjz76CH/6p38Kn8+HJ0+eoF6vIxgMwmw2I5FIwGg0YmpqCpOTkxgdHRUhG4/HxXvmUHUVXBd932yV66Dmrc/znjg9iy0eOaKSxkS3TksvKlhqB3TOPX9eE7uYKqJg5oQ8p9Mp3boYPqanS66K3ts/DWqaq5sQVfPtvaBcLsPv90ujjH48pxcB+t7SZCw/LyMNOJINjIxyz5XLZWQyGXi93o4eGd3kUC/EP5aOms3mK4t4WK1WeL1e5HK5vuRA3zlo9f/881mNQC4ChpZcLhe+//3vd11whg1u374tnr2eVKJO1TkL7EhksVikScZFkc1mUalUEAwGEQ6HexIMLxK41sFgsKNfNj2Ffpnbao6XXlIwGMSNGzdw69YtrK6uwmKx4ObNm3j27Jl46E6nEyMjI2i323A6nVheXsbIyAiKxSLy+TwqlQrsdjtcLpf08NUTR2w2G8xms3QVY2icze31BKVe6ier1SoCgQA8Ho8ccrU376CA3gUFM3CyzPGq7gMc1zurte6c0850l8FgEMIfw5v8vxpZOwv8DuqccBX9rGEmk4HdbofX60UqleoowxwE6M8TO7BdtT5QQY6PXkYzPTE5OdlBJtTjPNmuDllxOBxXpqAdDgdu3LghXTCfSx00N7vaF5ltHy8KVfCpB73ZbCKXy+HJkyeneujJZBKRSKTDQ1WvdVbHGBW0xlmrdhm0220cHBxgcXERtVoNoVDoueXkvg54vV7cvn1bWhmWSiUZtciyqH7gdDoRCATg9/sxNjaG2dlZvPbaa5iYmMBnn32Gv/7rv4bb7cbu7i4ePXokJRftdhvhcBgLCwsIhUIwGo3Y3d1FsViE3++H1+uF3W5HLpeTwRUEuQ1erxfVarVj/7Jvdr8lNsCxh+Xz+TA2NoZIJAK/3y9KbJD2gUoSazQaHTyLi3xPEvyA446A9DhV4h3JWwTTSmz/ykoMhpTVMqfz1pPfifn0yxrWZPSTtzFoHjRhMBhk/nkvnJ/zYLPZpBugvtSxXq+f2tMAQIfDdlFwvvdVsu41TUMwGITT6ZR+8L3gQjuQG5cWYb9ekwoeTFVR8++apuHjjz8+dcHr9Tq+/PLLDqXQzyBwNvNnz2B+t8sq6UQiIbNBl5aWBqoXt8/nQzAYRCqVQjablUYl5CX0o9SoKJmqePnllxEIBFAqlfDpp5/i/v37CAaDmJ6exurqaodlzkHsLOnZ3d2V0ZKBQECYvIVCoYPJTc+ZXi0HeTgcDoTD4Y5GEhcR0LyXy+VCu91GIBAQ1ujzCv9+HeCZpyfg9/svlcrRNE0mCTmdTmnPycEX3XLCAKQxTT6f7whJsnFNr8YClQE9J+DYAbkM0um0NC3a29sbKB4CQa7Q2NjYCWP4oqBRq3//yWTy1H7m2WwWDx486Dhn/Zxhkp/p2DE1chWoVqtIp9OYmprqy5HpWwKx/ZnVasVLL70kfY0vCgr0l19+GZFIBGazGZFIRKzNlZWVEwuuvrTNzU1R7r2GtAk2eScODg6E2HEZGAwGzM3NIRwOd22D9yLD5XLJ9CiG8EdHR9FoNC7ERWg2m6jVavD7/Ugmk9jY2EChUMDU1BTeeecdLC4uolgs4smTJx0lHZqmyWAM3tfj8aDZbCKZTArLm3lI7hG73Y5AIACbzYadnR0ZNRiJRHD37l2EQiHU63X4fD4ZgtLv99E0DT6fD1arFZOTk+JVDFJHOeCYj0IuwGWndRUKBYTDYSGckXzIM02lSzA9QmOMnAEq9F6FIEdVApD58eSPXMZgZxqAUQY21RlELC8vY25uDslk8tKRolqtJoQq1XECjg3zbigUClhZWelwEnp1GIxGo0w0bLePRoSy3/9VcIjYcIVO7XOpg7ZarTK31+PxYGJi4koaErRaLbz22mv4j//xP8JkMgmxBoAMUDgNzHuetSkonPUvpVKpyOE3mUxwuVwIhUIdoaiLhqXU2cCDlIO22+1otVpYXl6G2WyWXPBF6gVZT1+v1+H3+5HJZLCwsIC7d+/C5/MhlUphfX0d29vbiMfjHTOVOSearRwzmQz29/elPpseF3NjLpdL5kU3m02srKzg8PAQExMTEhIfGxtDPp+HxWLB7du3MTExIV4Y2cO9fCfuJRJDmLK5TKTpOoLNfUjIumykqNlsYm9vD9PT0zCbzajVaigUCmIwcw45oYahybTvFSSSsWe43+8Xg46NbtR6aABnTjjrBkZN4vH4qTJoUDA2NobR0dErbcSitkvW99DvBnq9F4GmaUJwJRPcbDZjeXlZFDSH4FwEbKTD9M1zCXHbbDbY7XbJ+c3Ozl5J+LbdbmNlZQXz8/MwGo1IJpM9N9w/LfSlopuSpeBVf5dzhlWjY2RkpO9DxWevVCqX6kl8HcH2lXa7HY1GQ6IdZ9UWngUyJlutlrTHNJvN2Nvbw6NHj5DL5Trev9qekweyVquhVCp1GFxUzMFgEKOjo0L8SiQSePLkCYrFIm7fvo2bN2/C6XRK/2yXy4W3334bN2/eRKlUEg/I6/X2VB7BlA37ujMvB5xslPKig53d2M5UZUFfBBRirVYLo6OjUpbEGlf9PGC1pKbf1Apz1DSiSXQ0GAwyjEVNvdGT7je6pmmalHoajcaBmgmugvXPVwm1Wugq0S1HzQis1WqViYazs7OYmprqmHPOMZQXgSq3ekVfClrf4/i8uc394P79+3jy5Il4VdlsVmrb9C+05y4sSqtHKmNazvoX1Wq1UCqVJMRJTE1N9b3xLBYLpqamUK/XJSQ8KGB+1eFwwO/3Y3R0FEaj8cJsR4b/Wq0WQqEQdnZ2kM1mYbFYJAfEfUDhpmfG67tZMZ/Mua6VSgWbm5uIx+MAjpigd+/eRSAQQCwWQ7FYRKVSwcrKCjweDxYWFvBP//RPODg4gNls7mg60gtYDUClzoYZgxbetFgsEorsN+fbDfzdzc1NABDjluVKqrHDz/dC/uK1zGYzrFYrwuGwMNDpNbHZicvlEvY9AOkQx3Nss9l6NkK4H9XnHlQPupcZCf2i2WzKGN+rvi7hcDhgs9k6SrZIQvP5fNJnnAb/RYed0HNmtOm5eNAssmbd6VUWo1cqFfzqV7/qsIiLxSJcLhemp6d7ugZDUmrDEh4+tmHUD0dQF5/sQRWJROLU+dNnPQdrMgfJewYgm4teE0O5l/meDocDoVAI5XJZemwzdM3mA5ypqxprqmKmEB0dHcX09DRGRkZQLpfx5MkTPHr0CFarFW+++Sa+9a1vYWZmBplMBltbW9L5zWw2I5/PY3d3Fw8fPkQmk+kYeNBvL+16vS78g6tgBF9HsP6Y3/Eq9joNmlQqJWtdLpdRKpUwOjp6IYYuDTrVWKbBxP2jGhk2mw35fL6jz3soFILNZuubOKTKgkEjCqrw+/3I5XJXek1OpdNHLbo5bf1A34FSbzhTPzgcDqysrACADGUpFosXMhgYdSQBrddr9PUtKZxtNhtmZmauzLIxm80YGRnB/fv3O14WlSlLOE6z0BnTp6fcTVAwTEkGIJ9dvR6FAg+0yWTC+vr6hfIOPIiDNKAdOFZWjEKMjo5eqr+w0WiUmurHjx9LqDmRSIjyJFnI7XZ3NEJRu0u53W54vV6YzWak02ns7OxIHeqdO3fw/vvvo1Ao4P79+9IliAYbDQyOpUwkEpiYmMBHH32EQqGAaDQq4fNevES1koD3umzpx3UEoxusOb+KdBcVpp5QVavVkM1m4Xa7ey7r1He6Yg11oVCQ1pvAsVxjCSmbL2maJsxe9tW/TEkpv8cgYnJyEl988cWVXpPkP708dzgcl8o3q9dnK1b9tDmSFA8ODjp4Fpubm6Jr+oHZbIbH4+lbH/QlNVgbetU1nQ6HA++99x5+/vOfd/ycSnRvbw8AJNep/hs9ZbUtI3Ac0qrX6xJaUA0KVcjzz4VC4QTprdFo9B0pYKezVqt16fnY1w3FYrGDoHXZ5v/0MJLJJGw2G27cuIHDw0Nks1mEw2EYjUZEo1HMz8/j6dOnMqdZHXzAOvZcLoeDgwPk83k4HA7Mzs7i7bffxsTEBIrFIj7++GOYzWbMz89jb28P+/v7sm/y+Ty8Xi+i0SiKxSIeP36Mg4MDvPzyyyKYu7UK1YNEEh5iTjVjXnrQQEOWivWycoEkrW4DDdLptNS3q3ObuYbsza0+l9frRSaTkZA2ACkHpIxQ5zUDnTIEOFLuHFnZ7/hJeue8ntPpPLVM6EVGo9Hoa/77eVDbtur3AYmlnKjWC2jMq/tF5SGp+4Ye7pMnT8ToVCc5XiQaZrPZEAwG8fTp06713aehLwXNUppMJoPDw8Mry6mZTKauTcStViucTid2dnZgMBiwvLyML7/8soPcpS4eWzTyBdOCZslLIBAQZa/CbrfDbDZ3dMJSF7JfodNuH82HZg/mQUI2m0U+n0exWEQ8HpfOa5dtKF8ul6X+tFQqSeOSiYkJGI1GrK+vIxaLCaGH4wA5OIOpDIPBgKWlJczNzcHr9aJSqSCZTEqv9bm5ObjdbmxtbUl4lnOtb968CZfLhc8//xzJZBKvvfYa/H4/YrEY8vl8T9/RbDZL/22DwSC5aHXYyyCAHdicTidKpVLHuMbLXjcYDOLg4ODEvzkcDpRKJdy5cwexWEyUJjkMbrcbpVJJKieMRqPsDUZ+2u22NKKhMGZajCMiVcFNpa9p2oW8X7VHe7fJSoOCZ8+eXekUM3qtbJOrnj16oTTCTjuX7ObHxiAul6tjJjijc+q6kAidzWalfWixWOzopXCRVI7ZbIbD4UAsFjvBoTkLfZsCJpNJ2i0+evSo7wfthmq1ir29Pamr5SHx+Xx49dVXYTaboWka/u2//bew2WwIBAInLBA13ElQ8brdbhQKha4WnqZpsNls8Pv9sNvtuHXrVseM0Yug1Wpha2tL8uiDhFwuh+3tbayvr0uDl93d3QsraJY3tNttVCoVxGIxWCwW+P1+YV5/8MEHMBqNeP/99zE+Po7p6WlMTEzgpZdewvj4OAKBAKLRKBYWFvDaa6/h5ZdfhtPpxMbGBh4/fgy73Y5yuYxGowGv1yuGJoctsPZ+ZGQE8Xgc+/v7+M53voP5+XkkEgmkUimZJ30eGC5LJpMolUrIZrMIhULSFnVQoGlHo/jY8OWqctAAMD4+3kFAXV5ehtFoRDgchslkgs/nw507d9BqteD1ehGJRCQszgElFNzqviRBzGA46ues1kvbbDYJ19+9exfBYBAul+vSjYuY+2aPhkFKefG9+Hw+ZLPZEzMTLgNGNdQ+GzMzM3jnnXdExjscDty5c+eEY8fqDbUHhdFoRCQS6chnsyJFXzfNlKrH48G/+lf/Cn6/v8NhuwgYIi+Xy32dlb4VtNfrRTabvdIhGdVqFZ9//jm+//3vw2KxIBwOCyGDQxGAYyr/zMzMibywygYma7LZbGJsbAzNZhORSAQzMzMATjIpc7kcjEYj3G433n//fZnjelG02218/PHHEqYbJOZmpVKRJiBOpxOZTAaJROJS9Ye0VF966SVhc1MwfvrppwiHw/jP//k/49/8m3+DpaUlzM7OwmazYXR0FG63G+FwWP7ju2Y4Op/PI5VKST7R6/XC6/VKeZDX68XU1BSsViuePXuG3/3ud5ibm8P777+Per2OZDLZEf48CxT8uVwOu7u70us7GAzKWLxBAZVfPp/v6Md9WTQaDVSr1Y7KiXq9jnA4jHQ6DZPJhF/84hfSc5kjPt1uN6xWKzKZjHjH9IB5rWKxCK/XC4/Hg0Kh0JGuK5VKcDgcmJycRLlcxn/4D/9B+DaX9Xqv8v1cJzB1Yzabxcu8SpAPNDExAavVivn5efzgBz+Qc9RoNLC8vCwkYsoMRkpo+AOQSImqN7p1PuQoXVarfPe7372SGd61Wg3r6+tS0fHcWn1SEDMHdBUwGAxIJpP4xje+AYvFgkgkApvNhlKp1GFx/vmf/zlSqRR2d3c7csUMSzC8HQqFJKTw+uuvS7OTt956C8DJsDgACUGRBKJn+vWqZMlwfvDggYRFBmmaVTQahcvlEsYrLd3LoN1uY3FxEXfv3sX+/r5072EnoWAwiL29PTx48AAmk0lmPJO8U61WUa1WUS6XJfydSqUwMTGBRqOBlZUVvPXWW3jppZdQKpXg9Xrh8/lkMhKZlYlEAnNzc3j77bcxPj4uljQbV6ih025gnSQ7lLGmFzhqXOP3+y/1nq4T+D6YY9eP/7sMGLqmINvf3xeuCXOCf/VXf4Vms4l8Po9cLodyuQy73Y5gMIhyuSyKl2VTwNG539zcxOTkpKytw+EQg75SqeCNN97A48ePMT8/L13o9NPMevGqWSPOKJra7GJQoIaGq9XqlX+3drsNm82GiYkJ4Z2kUilZj1qthsPDww4lzMhOPp/vkEtMUywvL8vaqURBwuFwoNFoYGZmRhQ9dYR69vvVfaVSCSsrK/IcvTo0fZ8ovoyrbiSezWaxubnZcSDUsi4A+OSTT9BqtZBOpztevsvlwt27d8WyIkErkUhgdXVVwrB7e3uIRqMdU6YMBgPGx8exvr6OWq2GX//614jFYggEAh05NVrT52F0dFRCIizLGSQG78jICHK5nIR9PR7PhZsvsEZ0eXkZ8/PzqNfruHnzJv74j/9YWMHNZhOffPIJ/uzP/gx/+7d/iw8++AB7e3tYWFgAcLQu4XAYTqcTDodDSF7BYFCU+dTUFN5++20sLS1Jj2y1eYnRaMTY2Bj8fr8o47GxMVHearjU4XCcWm7ldDrh9Xrx5MkTABADIp/Pi8c+SDAYDJI6uMq+xYeHh2LckjtSLpdRr9elDpXrAhydd8oQv98Pj8cjXcfYCIdotVq4d++eROJqtRrGx8clavbs2TPcuHED/+W//BcsLS2hUqnI/uZeZzTmvO+rElFJahykaBojlmof86tEs9mEw+GQCYHFYrGjlaimaVKtoULTNDgcjg65yzpmFeSJUNYDRx3RbDab3PMv/uIvcHh4KAYX17Cfenh2RCNvph8+Q98K+hvf+AYA4Jvf/OaVh+xWV1fRarWkO5WaxAeOS5f0YQm73Y7FxUV5aSStmEwmIQNpmoaf//zncLvdHWEOdebv7Ows3njjDbHcmIumJdXL9+XsYdZzdnveFxmcw72wsIBarQaPxwOPx9O398TSqKmpKUxNTeHx48doNpu4ceMG8vk8tre3EQqF4PP5YLfbZVpWs9mE2+3G9vY2nj17hnq9jtHRUQQCATidTvh8PmQyGezu7uLzzz/H7du38Qd/8AdYWVlBKpXC6OgorFYrvvnNb0pdrTq96unTp9Ks4N69ezg4OEA2m0W5XJa8dTeDiznSkZERKR2jx0fy4SCRxCwWC5xOJzweD0wmk7BuL3tNPdGsUqlgcnIS3/72tzuM3kaj0TFRi/8lEgkhG5JJr9+brVYLe3t7MqQllUrBarXCarXi4OAAlUoFpVIJiUQCrVYLLpcLJpMJtVoN0WhUnvEsAc0GN+TG8POD1LSIsFqtuHHjxpWH8alo5+bmpP3z7du3ZQ8YjUakUqmuRFy1sRFwpCMikQh2d3dPRFDVKYZM1+VyOfzhH/6hhO95lukB92OMTE5OdtTQq8OZzkPfb3RsbEzYsDdv3uz3188ErYq9vT2Uy2WxVqngTtvcrVbrhEVCMgnrUA0GA9LpNHZ3d8WaomJmWLtcLuM73/kOvF4v8vm8CAC+1POsHrYPrFQqWFpakp8PEjmoVCohEolgcXGxo5VmP4eTCmxmZgYmkwkHBwfSh5vh7PHxcbz++uuIRqO4deuWTMwCgN3dXTx+/FhawpKtTSVaKBRweHgIm82GO3fu4MGDB/if//N/IpVKiSJuNpvibdE6npiYkLKbjY0NpFIpOBwOBAIBIaKdlpO02WzCAicRhPW2bIgxSDWw9XodS0tLMBqN0iL1suCaAMD+/j5sNhu8Xi/W1tawsLAgApmfVYWcGmol/4Cpi26dADm32OPxIJ/PI5PJoN1uI51OS+6zWCxKqs1ms0ktNpucnGd46xth0CgdNFSrVdy8efPKW30ajUfznWnccF0pa9rttqSS9FBnINDj3dzcxP7+fkcko16vY29vT/5eKBRE+UajUUxNTck1SV5mnrvnZiP/vxMAQGrtn1uIe3t7G3Nzc1hdXcXrr7/e768f31gR6OrLmZiYwOrqKgqFAsrlsiTWz0KpVMLTp08lLKb2PCVxZ2xsTOqip6am8Ed/9EcddZHAEYkkl8uJkCUDmwfsPKsnEAhIaHR+fl6+1yCRg/jOmB9ks5J+wtwWi0Wmuuzu7mJjYwM3b97EwsICHA4HNjY28O1vfxtWqxWJRAL5fB47OztIJpMoFArI5XKoVCpwOp2YmpqSVp4Gg0HKaqxWKxYXF1GpVLCxsYF4PI61tTXcu3cPjx8/xocffig9n+kJTk9Pw2KxYH19HXt7e/D7/RgZGYHf7+/oNqZXtCSyvPvuu9je3kY4HBbv3OPxSBvZQauD9nq9MiyFQvAisNvtsp9ohNVqNUlz5PN5fPTRR5iYmJCzetq7pJfCyg8a5voQZ71eRyqVkqlsVOztdhsbGxvyM36WsqXXdaRRRi4FHYJBJIslEglUq1Xcvn37Sq+7tLSEP/qjP8KXX36JWq2Gra0t/OY3vxF5fBYbmrXSwJHMKhaLUlnz9ttvS5dAAGJgqi0/AeDzzz/v4DpRObPBSa+R0ZGRETHMaND2ir53y87ODm7cuIG/+7u/w40bNy7V/F39wgDwxRdfdDC02fLvtBehDqXY3Nw8ocjVXLY6qu7x48eYnp7G5OTkiWt+/PHHwv7rV6Cy9SHr6K4yL3ddQEsWOMrJpVIpuN3unj0DCs9qtYp4PC7NJ95++22sr68jHo8jk8lgbGwM8XgcxWIRtVpNSB8Gg0H6gI+Pj8NiseCTTz4RK5U11OFwGK1WCysrK5KiKJfL0nTG7Xaj0WggHA7jxo0bEkbTNE1y02ztd3BwgFwuh2KxiHK5fGJfWK1W6e29sbGB999/v0NJcF8OWg1suVyWEX1kQV8EPDOcSgYAi4uLQjxqtVp4/PgxCoXCqcY6y9t4bi0Wi9TM0+vyeDwd6a1ms4n19XW89957MJlMIi8KhUKHca6u4Xm9v+mdkVDEv9NYuIrpf9cRm5ubkv68KEjsJaampmTCHHC0Xr2UdLI5DA1pdR+wMZKeD0CugWpABYPBjkZTjMjwmr3AZDJJJ0IVz6UO2mAwYH9/H5FIBPF4HKFQCLdu3ernEieuR6Hl8XhweHiIhw8fduR+z2IGsmaNwldtTgIcz3vm8I1GoyEM4Q8++ADvvfee1HECkNrZQqHQ93dxOp2wWCx4+PAhvF4vNjY2BjLvRLa0xWKRaIfRaMTo6GjP12g2m4jH48hms4hGo/jhD3+IXC6Hjz/+GNlsFoVCAVtbW1JvX6/XJec4OjqKW7duYXp6Go1GA/fu3UMmk5FB6NwzFosFxWIRhUIBsVgMKysrePz4MT755BN8+eWXMBqNCIVCcLlcuHPnDhwOB/7hH/4Bmqbh9u3bIqRJDmNURq9k6T2/9dZb+M1vfoNgMIjJyUlsbGxImBSA5LkHBUajESsrKxgbG0MmkxGyUD9MXjUETIHH///Jn/wJgOP5zPV6HZVK5UT+n3lrlVHMlp4qmYifcblckj8HgPX1dRwcHODNN9+UMpyFhQXxcvo9u+12W1pRqjlwOiODlO5SlcyPfvQjzM/PX4rJrXZqM5vN2N7exl/+5V/Kz6xWa08Ng7jG3cC+Ck+fPpUcNyfzqTXQHKzCXtwXhdvtRrFYxP7+PoDj/d2rsd6XgmYejV7KxsYG5ubm+nzkI+gtUbfbLew5TkZi+RW/FDe5CpZhNZtNeL1escD4rPoXYbPZ8J3vfAfb29vY2tqSA89c6O7ubl/fg880Pz8vuex2uy1F+92E+ouMTCYjOdv5+XnJ6fQ62Yz16lR+gUAAwWAQP/7xj2EwGBCPx+F2u7G7u4utrS3x1k0mExYWFvDee+/BbrdjY2MD6+vrqFarGB0dlb7bFJBsDkKvmWVOIyMjSCaTODw8lOs8ffoUf//3f4+HDx/i5ZdfRjAY7Lj3WbDb7XjrrbdgNpvxu9/9Dj/4wQ+wuroqSockJ7vdfmEP8zqCniqbhTC31g/UEsZqtSrzpW02G375y192NBNxuVyo1WonvFd6RCSCkrCmDsIAjhvicC63xWKBxWKBpmn43e9+J7nqSCSCRCIBj8dzIc6A6iVTxvE9dRv8MCi4f/8+QqGQpK4ugkqlIu98cXER9Xodv/71ryV/22q1UCwWz5SnBoMBfr//RLtWFTT2DQYDRkZGcOvWLQmD01ufnZ3Fo0ePLtUdzWAwIBKJyFAeFb3ug75D3JVKBbu7uwgEAvirv/qrSzePB4A33ngD09PT0pqNX6bZbIqQZC65W19Wlre43W4JLzFPoLeAk8kk3G43NE3Do0eP5N+Zn+7He2YEgDW1+/v70mtXbW4xSDNgmePNZrPY398XbwXovVacgkvTNNjtduRyOSQSCZhMJkQiEYyPjyMejyORSEg7v9HRUXz3u99FJpPBhx9+CE3TJLeTTCaxu7srhy4QCKBUKmF/f1/2gN/vRzQaxcjICJxOJ3Z3d1EqlbCxsYF//Md/RC6XwyuvvIJXXnkFm5ub2NnZOddSZ3nWN7/5TXz00UcIh8Nwu9343e9+J2NL2cnOYDD0PJXtRQEbuTCkqO6FXqBvpUtv2Waz4dmzZx3EGvJJ1OvTuGb0ivuKoWV9jpJCmPfm9RuNBh4/fiwkQ4fDcake+jTK1bahF20bfJ2hJ0qpZKuLgO/G4XDgj//4jxEOh1Eul0UHMNV13jtk0xqDwXDqiFj1GktLSyciM3a7Hdvb25eKfrKBTjcl32tKsO8Qd7vdxrNnz5BIJPDJJ58IK/oymJqa6rC81APLje10OjE7O9v1Xu12G2NjY3A4HBIGYziJB5totVqIx+MwGo1S66beq58DxM8uLi4KYzcYDKJUKnXkngap/rXZbGJvbw+/+c1v8OGHH8LpdCIWiyGbzV6IAEOC0dTUFNxuN+bn51EoFLCzsyOj3ZxOJ/7ZP/tnyGQy+Pu//3u88847eP/996WmmS0UDw8PEY1GpdWmyuqu1WpioRsMBmSzWRSLRTidTrhcLkxNTWFubg77+/v44osvzjU8efiXl5fRbDbx6aef4t1338WHH36IcrmMUCgEg+FoTCYbqwxS/pGhTLPZjPHxcQnpXibE2Wq1UK1WUSwWUSqVOqJQ9JyY21dJV4lEQjrLkZQVjUY7QstqbpqygXWwbCZSr9eRz+dRKpX6jgbQKGCUhDX0atTkIryW6wy73S6y1W6349NPP72SNA45KWyPS4eNZ1gFjSBC0zSk02mJxqgGGp03ABJxYeqEoGcbi8UuPOOe+45RPH27Z3bE7Ola/dyYii+TyUi4iD1sL4OdnR04HI5TN6/RaITP5zs15FStVmWYNrs30YrVKw2XyyWtKtV6tItatiaTSYwDhur07dwGSUEDkH7VDocDLpcLT58+lY5S/YAhpkqlIhOH7HY7UqmUtGK0WCx444034PV68ZOf/ARvvvkmvve97wGA1ESTWHhwcNAxlUYtx+Be4IAEn88Hh8Mh3aji8TiePXuGx48fI5VK9eQ9cwTmysqK1O4/efIECwsLcLlcsNvtyOfzUlcdj8cv8LavJ9jDfm1tTTxYKs/LgmdHzdeq+WTmddX2vuwiNzo6imazKc0naDiwmQZ7HHBGPIl8Knu8n37ZVA703insaUDoG5qc5tG9iFCVY71ex+PHj2V++2VAOdKtAYkqp9krQ49sNitNZVSdoU7GouJ2OByS12a0jve+qPdstVrhdrvh9/txeHh4QpaQoNoLLqSggeOWaGqo6KJIp9OIx+OnvpDR0VGMj49je3tbPFJV8Wqahlgshmg0KqxSKkW9heX3+yUErb/ORdBut7G9vS1EGfZ9VsNag0QMASACzWKxIJfL4dmzZ2g2mx0WdS/gFKFMJoNarYZcLodCoSDKGTiKrrz55pv4v//3/8LpdOKHP/whnjx5gk8//RS5XE56XM/MzKBSqWBnZwdutxsjIyNwOBwyUtDpdMqs6VKpJGVwxWIR1WpVOhV1y3PqwdrrSCSC/f197O7uYmZmBk+ePIHf78f09DTq9Tp2dnbksysrKwO1D6go1dF/nK17GQFN4XWaJ04FwNIl/p01zGz3ub6+LlEMNVfOtAPTZdzLJLj1OxRBVe5qqRm/Q6FQ6PguVzEz+7pA5RC0Wi2sra0hGo1e2mGz2WxYWVk5M4qljnDVO1eMhs7Pz3fkovVNhtial0pUHZxxmVQEZ0gwEqSuP5nqvaaG+9JOatiWVmgul0MkEunrC+ixvr6Ojz76SJoQ6PHNb34TAKTHLkttVEGQTqel/piHFDjJBC+Xy4jFYmJZX1RBM8ymaZqE/Mk2pmdGy+kirPDrDJYjUDDT4HE6nX17UJubm3j27BlisZi0ZqXlbDQaJYT85Zdf4k/+5E+Qy+XwD//wD9je3pbGBdVqFX6/H4FAANvb22i32/B4PLBarSLASTh89uyZEMaYQ7fZbD1HObj3xsbGkM1m8fHHHyOdTiOVSiEej2N6ehpGoxGbm5uw2+2YmprC1tZWz61iXxSwm5Lb7ZZGIqqyuygYEu5mzFitVmkCw7IsTqJjmdTh4aEQvCqVitSj05GwWCwol8uIRCLCsgauppe0ph31/na5XBKOp6zsNjnpRQcNHHZhq1QqMr3rMjg8PMRf//VfC2FLDxpYZ81m3t/fx+zsbMezqA1jaNTt7+8jHo/Lub4KUPbHYjEZx0t4PB7pLtgLLuw+sq6MdawXPZRqs5Buh9Jms+G9994TmjpzTGTrqgu0urqKyclJVCoVWRj9MAf2kQbQMeOzX1AwMKxtt9slRDI+Pt7x2UEjhjBMXKlUhADFOth+9gHrlJ88eSLkM+aeea+RkRGsra2JZ7q6uirMfvaAZvg6GAyiWq1ia2tLQtCapiGVSmF7exsbGxvSAatUKokyp+LsZZ0cDgcWFhYwPj6OnZ0dtNttNBoNxONx1Go1GbwAAHNzc3j48CEymQxGR0cHKgdNNBoNpNNpOQvsunURqDX23dZCbSnL2c2MXFHhVqtVaQtJ7gHTcIlEQkYO7u3tSamV1WqViGC/HfGA4zpuhlDZwEcd3kBjfpAalajhYovFgmq1imw2e2mHzWg8mv9+2nnkGOGzWmZSNrEhCc8pUyK8Nhshqfe+CMhJodOYTqdP6Bc6df0Qq/t6GrUvNg9StVpFLpe78EiuXoUihZva9k2f83rw4IEMR89ms7DZbB3Wi35G7HlNB85CvV6Xejv1Ovpw/6A1KlENJJ/Ph7GxMek7TdZir5u83W5Ld7B6vY5YLIbNzU05dGRjrq2tod1uY2dnR9jajOCwIQEHUphMJqytrUnLRqvVikgkAo/Hg8XFRbzzzjtwu93Y3NxEOp0WUtJ5JTUkfL3xxhv43ve+h2w2i2w2i6WlJYyNjaHdbiOVSiGbzUoXspWVFWxubmJ8fBy1Wg3pdPrS7/+6gGeJ+eLt7W34fD4pJbqIwc6c8mn3S6fT0l641WpJiVWxWJQBKSQN0kCnAnc6nTK8hPKDkZpGoyG9xPs1pnm+GT3i/RjpU2XOoJVckrXP70uDZHJy8lLRCKa7ToOaSz4rbfTFF1/IbHA1sqOmadUuceRVXQROpxMTExMSlWW0l/dzOBxwu90yfa9XvdDXKVKVHScZhUIhxONxzMzMnNnp5zSctWGNxqMZzT/+8Y/h9XqRTqc7CCLlcllePhmg//RP/4RQKARNO5oFqxJzuhF/+j0wqpU8OzuLZDIp5Vns1729vX3h6193kPloMBgQDoelkXy5XIbP50MoFEK5XJZQ5HnX4mc4WlT9WSAQECXO2nIKBR44etImkwkulwuRSASxWAwPHjyQnuF2u11SIKVSScYTqoNS1EOvB0v8Xn/9dXznO9/BJ598gl//+teYmpqS0YWZTAaVSkXCfIVCAfv7+9LAJZVKDRRZUCVtmc1mZLNZjIyMIJvNSk1zt65r5+G0HC2jUz6fD06nsyP3zX7ZzWYTTqcTiUQCS0tLsm+cTqdUVlQqFamRJljOSSXTKzgQh01x2FCFXny9XofX6xW5eNYeexFBQ7rdbsvZ5XseGRkRFn6/OC9PXy6XJXp6lr55+vQpMpkM/H6/dJzkTPFu3re+4qcfeL1eTExMYGdn58SQJKaDVBZ6r/us7xw0cGyBuFwuLC0todFoYGRkpGvrzMvAbrfj5s2b+PTTT0+w8Rha1QuAcrmMiYkJTE5OPpfhBCojGDiuxeQLZ2nAIENtnQcAExMT0kPbbrfLxKh+oNZGA0drzMlBu7u7MtnMYrFIvtnr9cJms8HhcIiRNjk5ibGxMem/HIlEUCgUEI/HZeQo24aqh+SsdrKBQADf/va38f777+PDDz/Ez372M/yLf/Ev8Ad/8Afw+XzY3NxEo9HA4eEh7t27h0ePHiGRSMDr9Ur7SjbCGBTQSKKys1qtmJ2dlcgGu/hdVQSJjUWePXuG6elpiaSVSiWJWrHLXblc7ojq0VikUO6mJGu1Wl/GBIlqjCSpJaGtVkuEv9qc5LJlaNcNqkfKd3dwcICtrS0sLy8/t/3earU66qG7NbACjscYv/3225iYmBCvnC07u633RcvgzGbziTHI6jM1m80L6aO+FDSnNTF8wzCy3+/H5uYm3nrrLQQCgb4f4qz7vfXWW9KRSW3rx5dsMBjkADCspXplVwGVfk9omoa1tbWOGjc9QWaQ8k0ESS82mw25XA52ux0ejwcvv/wyisUiNjY24PP5Ls3mZE055w0vLCyIxxQKhVCtVpFKpSSMzfy3OuCdYwLpbenzT+p30v+M+2pmZgbf+973cOvWLfzkJz/BL37xC/zpn/4p7t69C5PJhHK5jGAwiFAoJN3RPB4P7Ha7dCxrNpvweDxXeja+bjDfRqVEz4lhvlqtJtyUq1DSHJ7Bcir9eSQ5iwK2XC5LjpleSy9h9148XOaTSUDl9cnYVUv82IKYcnOQZsOrbTGJZrOJjY0NOBwO3Lx588q/L9NbqkF12vnl5xcWFqTb3PNCJpPB2tpax3PQgQDQ4XzoW1Kfhb40iM/nEwKE1WoVUsCdO3ewu7uL1dVVvPXWW1fGhmPeT81NORyOjqYPRqNRiAA8kGTQ9jNUu9u9geNZ0Ow1TJAUoYZY6FnqrzFI4Mg8q9Uqo9lKpRLGx8c7unAFAgGEQqELeQxkgrKP7ezsLKanp4VzkEgkhEQSCoUkv8O5qwCEjFEoFKTfbq/rwYYTU1NTePfdd+F2u/GjH/0IGxsb+OEPfwiz2Yy//du/xfr6OtbW1vDZZ5/ho48+QrFYFGLa4eEharUaXC4XnE7nCULjiw7WGrdaLQlnJxIJ2O12jI+PS17f4/FcuvSKSo8s7v39/Y5GKdlsFvV6HRMTE2IUsu8+vTiW412GzErBqs9/FovFEzX3+tItzoceJDC/q1eO7XYbX375Jcxm83OJqqp8J7vd3jEAheC7r9Vq2Nvbg8VieS416NzXxWLxBAlUP/lOnV/eK/qSGIzfk8lrMBiwsrIi9Wb37t1Du93GN77xjSspKalUKtKdhsowGAx2dBRrt9t47bXXxGvhII+1tTVMTExcmLxGLCwsiKWoKt9arSYv32q1YnJy8oSnPUglFQRLU1qtltQsa5qGRCKBb33rW4hGo3j8+DEODw/h8/ng9/v79qRtNhui0SgymQwODg5gsViwsbEhvdU3Nzfh8/nw2muvYW5uDlNTUzIukhOnOMTh6dOnMBqNCIfDcDqdHQJFVRr0cmw2GwKBAMbHxzE2NoZyuYwf//jH8Pl8+Pf//t+j2WziL/7iL5BOp5FIJLCxsYHt7W0Ui0XY7XYEAgHZhxMTE/D7/bIvBqmLlMPhkDp0liixaUmxWMTY2JgoaZfLJa0XLwIavly/arUqkRAqzXa7jXw+j+XlZRgMBpTLZYyOjkpfBPbgZsRFne17GtR/YyRAb4QDx7lLyhqr1SpGphr2Zu34oIBEPaYfVJkci8Vw//59zM7OYnx8/MqclXK5LBMODQYDXn/9dbz00ksd17dYLHA4HPD5fGi1WvjVr36FZDKJ2dnZK1HSat272+3uuKbBcNQLPBgMnpAzF+Ef9KWgG40GarWaxNP9fj9SqRQ++ugjLC0tAQB++ctfolAoYHZ29lIhPX6pDz/8UMIZzP1GIhGxhDVNw9OnT6XkwufzwePxYHd3F+l0WpjWvRJ01FpvAPjn//yfd0y84sFmC0m+l27KeJAIIYTf75fOTblcTlq9JhIJlMtlvPvuu/B6vXj48KHMRmYJzHlgWJkNZ/b29mTzf/HFF1KmwLK2YDAoxCSSVHZ3d5HL5bCwsIBwOIzt7W3pejYyMiLCXDU0LRYL3G43vF6vGBUAhJkdjUbxr//1v8ba2hr+/M//HAAQDoeRzWbRbrdF4LvdbiEx8bk5cnSQCGIApNEHvZRWqyXkO5PJBLvdjpGREZRKJVQqFYm+XRQGg0HKYUwmEwKBAJxOp9RCkxzWbDYRDoclBUclzefk2nM9qHgpb9Qoh35kpBo2pUdPBjONBYvFgnq93sFFMRqN4uUNktG+t7fX0e+B54Yh53w+j6dPn8JqtcLj8VxJuFttAAUcGfM+n+9Eu08SP4Gj+QuPHj2SvamupcVikZ/p17rbflXnn/Oz6twFgv0XVN4B31M/ZMS+Q9zAMaHH5/NhamoKjx49Qq1WkzZ79+/fh8Viwb/8l//yQpYTLdBGo4FsNtvxMg4PD5FOp7G8vAwA4rmzE1Q6nZY5walUCoeHh3KYgPPzUGpnIAAytEH9d7UJAX+WSCTkd9Wc06DB4/Fgbm5OJg3t7++LwlxfX4fJZMI777wjpLFqtYqJiQnhL5wGjvqLRCIIh8PCys3n89jZ2YHNZkMwGBSrlfWt8XgcOzs7mJiYEA+JB3R5eRmhUAibm5vY29vrMPQASC6TIXv2ZCYZze12I5fLIRAI4MMPP8Rf/uVfwmg0Ynx8HNlsFslkEtlsFgcHB/JcFMwck8m841XlYq8LMpmMdEWiMWIwGLC2tibDSiwWCyKRiLx3Esd6hapITSaTKGBGI9gD3OVyyXve2tqCwWCAz+fDkydPxGNmqoGeF0Pz9OxVY02fGiPnxW63SwRGVcqUL+SjGI1GIYrRmKdMGESjnfwOts9VwU574+PjWFxcvNL7apomukd1BulAqK1Cy+Uy9vb2hDCo1nCr16PMPq0krtlsSs8G8g/01ygWi8hkMiKHaMQB6Hsf9E0SUw+Y2qBge3tbOiy1222srKxgaWnpRNOOXsB8HYWwemBqtRoePnwo1qnX65XyJgAiMJm7JsWdnozJZOoIQfHF0QCgUKHF+7Of/ayDjq8qZRV8HrXecVAPI0lggUAAlUoFe3t7qFarwpT2+/145513YLPZsLGxIe0u6Wmq/9lsNrhcLoRCIZkGlU6ncXBwgEqlglQqhfHxcSwvL0vtMSefra2t4fDwEO+99x7cbrdY6yQTmUwmLC8vSwhsZ2cHqVQK5XIZpVIJhUJB9kIymUQikZDB7cViEffu3cPe3h6ePXuGX/ziF/D5fBgfH8f+/j7W1taQTCaRz+dhNpsxOjoq5T4A5Dk8Hg/C4XBHFGYQEA6HpXscPUru+a2tLUQiERSLRSl9y2azHTOjuxmvqhdLIaYKNHYPpOFGhn0ymZRBKJVKRbr6eTwe3Lt3T1puUo6oXg3Lq3hPhtKZoqN8a7VaHX2maYjZbDaRLfx9hn4p8K1Wq5DoBtFoJ1h6qweNm29961tnRpJ6NWBVPsnh4SHW1tbEO7Xb7TJ2tpeUklqjzvVTlbf+mdh3gZ3sWMWgVp/oB2ScllbrBX1Ps1LHZBWLRWxtbUn5wt7eHsLhMLxeLxqNBv7xH/8Rk5OTfYX3uInZPo59kvV1i+wspm9uYLFY0Gg0JBxGdi8VOOt4bTYbFhcX5fuwExCVPckl+oL5Xmp7e/3siwiy571eL0KhkOSYE4mElDNtbGzA4/FgfHwcmUxGhqGQactpLiSC+Xw+KVPgZCy73Q6fzyclczs7O/j000+xsbEB4IhBajabMTExgWQyif/9v/83tre3hdFNz4hC0u/3Y25uThje2WwWuVwOpVJJRkKOjY0hGo2i1WoJwaxWq0mNt8PhkDniFLgejwczMzMIBALStU7TNAnB87ud1rbwRUWr1UIwGEStVpMzS4JUo9HA7u4uJiYmUKlUEIlEZB0o9JizVPvhM/rEKBfZ0larVfp+m0wmOBwOWCwWxONx2O12aNrR7HcqXaPRKMaBpmmIx+NSfQBAOr6ppVAMdbK/AvOXlUpFIgSsq+azqsZ9rVYTL5z/7nA4OgZm9Nvn+0VDKpU6tVve2tqaEAhVqMYS9cR5Skxfx354eNhRsXNaHfVZ8phVH7w/I156g4qGKOWg/t/UP6vyRzU2++Gi9KWgGepVGYvZbFYUZKVSwerqqjzQb3/7W1Sr1a4sOz24KMwnqXF9hgr4gufm5hAIBKQnq7qgRqNRLChCLb/is+qZ2SzBaTabMorwvOfttniDVOfYDY1GQ5pyOJ1OzMzMADgSXrlcDplMBru7u9jf35d88dOnT6VvM4UVeQz1eh2JRAK7u7s4PDwEcDSCcmRkBF6vF36/HxsbG/jggw+kgT5rnxcXF1Eul/HRRx/B4/FgampKFKnJZJKyr+3tbUmBqGUvTNXQUACOmJdqQxTgSICvrq7i8ePHSKfTUgI2OjqK0dFROBwOIbA5HA6Ew2EEAgHx9FhuNUgksYODg47GG/QimRPOZrNYX19Ho9GQdQcgaQBN08TIYiSLHAQKNf5MPWdWqxW1Wg0WiwWVSgXBYLDD22V4udFoIJlMIhwOd6S4JiYmUK/XJezI0HilUpF9o2kaMpmM9JdmeF6VKVTGVPb0nHgf9fp0MAbRYCcYmTittLVYLOJXv/qVsPoJtQsjZfN576nbOaLzODMzc+YM6NOuTYNKvQejryqoN/RkP8p+1ZPuRhLrVwb0lbWnh0CLVg0HEPQs6P1ub2+fYNix5y0PopoXNJvNmJubE+IPALkfAOmdPDU1hUqlgtnZWRwcHMj16T3zevSWac2wNWer1UI6nZbewVartUN5n6eggeNkv5pTGGQLGTg6aPSInU6neJu0nA0Gg3RrYncvvnMqSe4bRjbYy5iWK0eCejwePHnyBL/97W/hcDgwOTkJu92OyclJqYne29uTUrutrS2pzVbZs6zHJZGM+ch8Po/JyUlomtbRurZUKknoi6QyPiO7EqmpDE5G83g8EgZlOJ5h19nZ2Uv3KL5OCIfDiMfj8Hg8HXOVVW+SjUNisRjm5uawtrYmSpetcguFgpCLOAKSQptksP39fQklE+zdT8ZutVrt6OAFHMmrVColeyuRSMi88Hw+L4ML6AywXSy9Iz4r1577ljKMxma5XBbDod1ui/LmDGv+DgBp7jIoUFMR+nysCuaLOcRI/Xm3PwMnyVQGw1G/azaFUYedtFot3LhxA36/H6urqwCOdIm6Z2jodVOSJPx1e45u35l7Q22wRCOV600ZcZmGWX0paFoADBedVjLAQRZsAdktxE2ih35BmdxXlTo/Ryttf38fy8vL8jP1syQbZbNZeWnq4G2+/FarhWQyKXkkPc5L5KtsQvWagw4Sfbi2TG8wlEevoVAooNFoYGpqSkKc5XJZiFPqurlcLqkOyOfzODg4QDqdRrlcxpMnT2C327G4uChekc1mg91uRzweR7FYhMViQaFQQC6X6+jB7nK5EAwGYTQaRWirI+fohXF4SrPZlPGA/B5er1eEMxnbZOmyBpMeFAU/+zyn02lYrVZMT0/jzp07A5V/bLfb0gdb9UwoFNntr1AoYGdnBzMzMwiFQhIlAY6NeUYfAIhRRKOJJVqUNbVaTdbAYDAgnU5LSV6lUpGBGo1GQ0hd5BpQSQPH0TSGWFXyJ/clezWrTGU+IxWy2nIWQEfYnNdhKL+b5/WiQ/UYz5J/NGrUtSa6yVqui8r/ISmRP1P3BQBJufBaqgIHjod68Dmpg3gu1amDZzGt1TIrvQ7gvujWEInX7Sea0peC5gOpzeBPuxFJHPpF4wujV6v3VDmmS0/MUu+VTqexs7ODdDqNJ0+enGBc0jvivVULRrVe9YuvZ2arf6fVpH733weFrIc6h5VMXVqzFIjM3ZG9nMlkRJkzhMk6cno/LMfh+tTrdclf2mw2pNNpYdMeHh5KiV8ikYDBYOggCjEvyVptskx5YKlMjUYjUqmU1NkbjUaMjY3JIeOYQOY/AUi3MkZd6CU2m03U63XJw5nNZqkBZaRBrQZ40UFDyWazQdM0+c6NRgMul0smjdntdtRqNezu7kp4k9EJeq5kxKrhToYMs9lsR36bQpmyaGdnB2+++aYYBlT6LKsiyYtyS81Tq1EW/oz3qFarspeopNVadu4jyjNVaDMkzpnVdBIGlcUNdBok3cB1Y1RUTTOpfyboXKnQNE2aI+nRarVw79494S0AnfKdRp1e5lORqhwRyjIyvikr1N/ls6nfmfwm/b15Ta5/P1HWvhS0xWIRUgjDPadtOjXe3m0RmJvmi1OtV32fVYYUmTsymUzY2dkRSruqdBuNBhKJxInQs5rL0ltm6khK9XdUYcLvxO/TCwbxQKphfZfLJakOlpMw7Ofz+URI1et1EVDkF5TLZWFcsuSFXhEACVNXKhUUCgW43W44HA5omiajIjVNw8jICMxmM4rFooS9uU+poLkG9KxZjkVwL4yOjsLn8wnjGDieQU6Sm9vtljKqfD4vzThoBLpcLoyMjAjLnTOIHQ7HQE2zouJVI1AcSMC15Rmn4mb6AYB4uSppk14zI3AU5lS4qgekei6bm5twuVwolUqyNymfOJaSRhmNND4rc8bMf1MZc4IeFT4AKaViKZ/qjakGBA1R7rWz5OQgQZW16nflWus/e5o8ZapLVYJUbCrHR//vajqDRh8/081DV1Ot+n9TOU/6e1GXcF3V76B674y0qIZgvyzuvkPcfEhVoan/1g1qeFp9WP3YLX5x1XLioVUXhgQg4NjzpXfL/JYaTlT/vduzqsaEGpbSL3A/B4yW86CByo3/ARAlS8FJq1MN97FPMXBMyCNTn+/fYrGIh86OUdVqVT5DyzaTySAej2N0dBR2u132IvO/vB49NHV2bK1WE4+dB8zpdCIajcLtdkvHOlrNDF9zX2QyGZRKJeTzeZTLZalxDYVCmJ6eFtISJ3tZLBbs7+8jmUwOlIAmKYdpC0ZFGC7mu+fZVRms9DC5X+jdsjSNcoFhUZvNJhEOtSc/m4Kw5pykLlW45vN5Ud5q200aBarzoCp+5tEpS0wmkxiZat6R4H6hQuZYS+BIdjBSNEh7gNA7X/rvyLN3Gk4L++p1i6o/AMgeY29uVuDwM/rP8ppU9mcZTqpBoUZ26ADo95keNPa4py5aYtf3uEluZFWRqeFeHio99F9EtYTP80zVrjC8FutcGXLmSDl9mIT/6X9OcIHUMBo/c1rJQDfwffCZBtViZj6O3oHKkFUPhhpWVhnzVJwcE6jm8tSICnCcc1I78RweHiKXywlbWlWoDodDjAHmohiaUlnZbFxht9ultzs/x+/HPwOQP5fLZbkfy7kmJycxPj4u5DH+X9M0HBwcIBaLYW1tDWaz+cobNXydKJfLMtbV6XSiWq1KHTjXmZ4sz4aaHmJXOL5vRj24DzilqtVqibKkvFC7szHqwj/TGFDvValUhOegEv9UBaAqCN6XRrqeK0NjUfWkSHDjnuHPuXdpQDyPCXtfFygz9W1sVdnXS86VEQ61FLYbAVl1pPh3tdxNz0fimulTl93+T2eD+7FbAxMaAN3WUNVPjBjx9/hcF3HYLjwPWmVfqy/orIXQL6LeIgJwwtrgl9In+/XP0G1xuoUv9Pnjy4at9TWgfJ6zLMYXGaoQJGNVfZcUvAyBqzln1prX63VRZgBk2hTXmIpdTTFkMhn590AggEAgIA0gCHrmjUZDnlMNMbPlq9vtlmdi+I3h2lqthlKphHq9LgeNJDiD4ajPLtuXhsNhhEIh6ZzFfClLuw4PD6UM8Y033sArr7yCn//851/tgj0nkD9ChcmwLz1jljtyFjLHUKrKmOtCQqG+tFKtkaUXw2gIzzsV8NTUFDY3N2E0HjUgIgeG+5Rej8VikXVlxzjVSKdxxvQMoTfq7Xa7hL/5b2oUjjKp2WzKJCXVEx8EUGZ2y9ECxwqTkUgqU+4Z9XP0gk+DPket/py6wmKxwOfznYhWnaaT1Gc7S3meZmDQOWGUReUoMY3KfXvR6p6+m6PSWlJzL6qVQE9J7a6jDzlwMd1ut7RLU6/fjSCgQr03cGxZ6eP73Syoi7wolVDCg6dS9ge9tEoFCVHMO7ITF3BcO0gBRA+JglX1MCho9/b2OnKQFMytVktm+1IgezweOBwO+P1+tNttpNPpDvIOFTJwFO5mTT0VMktqms2mkIBUTgUVNMPWFDzBYBDj4+PS8SwUCsHr9Uqzi0wmg/X1dezs7MButyOXyyGZTMJkMmFqagq3bt3Cm2++2cESfdFBj5TKlgrL5/N1dOdSI0rAsXdEQ4q1p4y60TgDINdnK1nmDBmRoRFWr9clqlIsFiVUzlr9SqWCSqUiz0TvnIahGuUBjpnoDEtTiDM6SANcT3Iib4KKhqRJyjpWlgwaVMXKaAbloholVatx1P1A40yFXqZ2U5JcF6Y76/V6B39J9fCBTgOK1+yG08i//D3KLipk6ixGkNRIgPq7/MxpM8m7oS8FzZzNacxsvfJSLQnCaDTKoWZnIPULnMWM5u+qi87/1Hy23svt9WWcFgFQQ1p65qf+9/u534uIcDgMANLhDUCHYaaG+pnzBSB15rQ27XY70uk08vm8KFWW45GpyYPs8Xhk4AHJPLRK2UhCZUmqbHI+pzrohXlLGhQ8bC6XS1i/nKjl8/mkXSVblaqNOPb395FIJJBMJlGtVqW15507d7C0tCSC+cGDBwNFEiMDn4QwljVRQJJFTfYu87AUplScKguaHifXl/lnVgpYLJYO75PCl+VxwPGYUafTKY1w6GWrPBW1CoV7hh41r00PSE3NEKyDZj6d7WGDwSAKhYLwJ0h+VImHgwa9rFXJnsCxIu2mZGk09RL+1ctXRkoAyPrRuObnuM56XhNx2n1VI0IlhqlraLPZpDVwuVw+YYCrFQfc76eVX52GvhR0L/lVNbx7WhJdfYEU7Gqhv+p58fNc3NNIW/ratvNwnjLl4VMbm5z2ffQF8YMMDkRhK0UAQpio1+tCxnG73SdSH+p0H64lx4RySIHqbascAx5i/jvQOQKQnjHD7Axh0+NRGbW8RiQSkXyjy+VCIBCQlo9+vx+BQEA8IoZoNzc3pVmLOkUrEolgcXERo6OjQmY6PDzE48ePZfziIEVa1BIpCi41r8x3TCY3lbWalvJ4PEK84hozl0sWd7VahdfrRSaT6Rry5nQ1nj+VKMbrqWkoCtt6vS4GBo0B4Lg3s/67qqFsetb01DOZDKLRKGq1GrLZrKR1AMj3G1TlfBq6yWY15K0aO5QTlKM8a+12W6omuL+4VtQZXFdGWvT31/OPzgL3Ie+jksl4H/aBYBqMkT71GjQw1f1VLpcvtAf6ZnHr6eZnffluFlO73ZYXqT6wquD0uQz1ZZ/3Jc/zwPWEEH3Oi4ea361bXkRvoJxG5R9EqL2m6fmSnEXiHnAkmHiwWPOu9ipW6yFV8gWFKL0X1ctVm4VQ6PGgqJEYriENLCp7r9eL0dFRUcJqC1rmrxgOd7lcKBaLePr0qTQvabVa2N3dlY5VgUAA8/PzWFxcFO+Q4y6ZCuC+GiTlTDAaQu9UX9fMs8V1ZZSLhCAKMob9WHPM8ieWKtFbpVBXG4tw5CcAeRYAIuj5e3ovSM/i5T5Tw/GUJYz+cK82Gg2Mjo5if38foVBIyv7UskIVvw9y4Syo8luvMNW/q3l9guuvz1s3Gg2kUim5tuq9nve+uQ8oa7hu3ULx3IMkIar17IwUaJomXAY6DeVyGcVi8dKG2YUHdJ6m5PhyvyqBpPeEz/Lu+dJVhqWa01IVgnrIVDIBD/rv66HjgaFXQaVrt9tF4Kr5XApxsnH53tQpMKpXBRwrbQpQgntK9aJMJpOEnskMVz06v98v5Vfs4a16XBz4USwWYTAYUCgUsLu7K21Jt7e3JdQ6NjaGsbExmebFvtIcgUpj4fdpb+ijXCpDmmtLIczGHTxr+XweBoNBFDiNNjUawpJKCj99ZI3rzDVSBSL3aLc9BHQPb6p8BuC4csXn80mqhHvZZDLJgBam2YboD6rTx/SHykk6q5KmF0WsptxUmaIyrSmXqFy5z1THQPX41fuSi8F9zlK6XpzJXnD5CdrofGD1AFBZq0IYOBnf589Vq0a99lkK8bx8s6qQaRFRADCcpVp4p0FlKv8+CeBuUDegmivm5qZ3zdFzDBnRq+ah1PMIeCC4/mRJcv1oENAooJdFYcouXzQizGazDIpvt48mcHm9Xpkbnkql4PP5kMvl8PTpU8RiMVHSal56enoa8/PzCAQCaLVayOVyMqeavcV/30KYevBM8D2onihDzFxfvYGlP/P6/DCvz/I8le2tpkG6hd31Z5u/R8+aJWJqD27KJI/Hg2bzaKiLz+eTcCUnr1G+DWrFxlWjWwOQy4LO02mOod5bV8PVPN8Gg0E8d+oG/XW4r2iUM8XCMPfz6q9+JQr6NKhfUl+C0A2qMtYr6fPuoR5Y1QNTp86QVKReV58/Vu/fi+L+fcVpRpEaZVAjD1SuDDsy7KwKcTVUqeK0UgU1X8S8t8fjkXVmKVe73UYqlUI6nUYymUQqlcLe3h4ymQy2t7dlIEO1WoXP58PMzAzGxsYwMjIizNxcLofHjx+jUCh0tCQd7o3ToVfawPFacn9QueoNX55BnmO1ekQ9n9wT6v7Qn12SvOg18b4ul0ty5O12W1j5NptNGtGQZZ5MJk+Ufv6+G2X9Ql9mqzpPqjNHqHl/9f/69dWThnl9ABJZ478xtcVwtX6csApyXZgLV9N2XxXn6Lkq6G7o9sL1/6b/swq13owvUJ/b4GHVh6r1MJlMMjnptOccohPs2nQRi1E9lGoU5bzP6w+tw+GA3W6H1+uF2+1GqVQSFjHDTJlMRkJmLMlSuw2pRoPP5xOPnznqarWKeDyOdDqNXC4nddoX2RdqSPT3Hd3Ovb4nQTeonrn62W7et1peoypto/FoLjjLnXj+1Z7LDFNTmZMA1M1AHOLi0Mvsixo7PMOUFexE2Gg0UKlUOiIxVKyn8YpICGZNNkmrnAn/VSpmoi8FfR02qBr+6qYkznqB+jBIq9XqaJIODBXzeTg4OBDSxlcNCmKHwwGj0Qifzwez2YxkMtmRB1IPf7cQp8PhkPKpaDSKarWKVCqFg4MDPHnyRAheqqF3GXDPhkKhy72AIToMNnWkH4UrBbGmabLOHFLSaDTEGKtWqygWi+KZa5omuW61ZPM6yLzrDH2066sEjS4SudSZCqpSVvWEmgIhOYwjbknwo5euKnI16nNZ9LOnLtSL++uEwXBUU8Z8kN7y0rPL1QPd7cVch+/0IkFf7P880S3NYTAc94HnWFLWFxIej6eDIazWSFKgFAoFZDIZ7O7udtyTh1MlH+p/dpHv4Xa7MTk5ifv371/oGtcRX4dwVj0iltewhSf5CCSbsexPbQmaSCSEcQuc9MD1/JirxqBxWL5uA0avgNV3qxL92EWQHjG5LawYUZ2O68Qp6ElB80tfh1pfMupO82y65bKuC67Ts/QLPrvX65XQz/OGmqNSGdwOh0OmS3GUo9oXnJOW2IqSDGGGuEkg4z3U76jmz4HOWeQXVdImkwnT09MYGRmR+7yoOI0Q+nWA+Wsa5Cx/U/kMLJFTn5UCWL8OX+W6DMoeuK5gNYda0qtGV/SM+6/rO513354UNGvMvu4DCRwPyngRUSgU4PP5vu7HuBC4B1Kp1Nf8JC8m9vb25M+DsA+uC/RpLtWJ0OetrxOGe+D5Qp9nvq4cgvP2gUHrwXRot9uIxWLweDxfSWhz0KBpR+PnxsfHv9aczWUw3AOXx3AfDDHcA0MAve+DnhT0EEMMMcQQQwzx1eLFNOGGGGKIIYYYYsAxVNBDDDHEEEMMcQ0xVNBDDDHEEEMMcQ0xVNBDDDHEEEMMcQ0xVNBDDDHEEEMMcQ0xVNBDDDHEEEMMcQ0xVNBDDDHEEEMMcQ3x/wFsaIWj0z0C5QAAAABJRU5ErkJggg==",
      "text/plain": [
       "<Figure size 640x480 with 16 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 16 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 16 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "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",
      "text/plain": [
       "<Figure size 640x480 with 16 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "%pylab inline\n",
    "#load the model\n",
    "model = vggModel\n",
    "#redefine model to output right after the first hidden layer \n",
    "ixs = [2,5,9,13,17]\n",
    "\n",
    "outputs = [model.layers[i].output for i in ixs]\n",
    "model = Model(inputs=model.inputs,outputs=outputs)\n",
    "#load the image with the required shape\n",
    "img = image.load_img(img_path,target_size=(224,224))\n",
    "#Convert the image to an array\n",
    "x = image.img_to_array(img)\n",
    "x = np.expand_dims(x, axis=0)\n",
    "img = imagenet_utils.preprocess_input(x)\n",
    "#get feature maps for first hidden layer\n",
    "feature_maps = model.predict(img)\n",
    "#plot the outputfrom each block\n",
    "square = 4\n",
    "for fmap in feature_maps:\n",
    "    #plot all 64 maps in an 8x8 square\n",
    "    ix =1\n",
    "    for _ in range(square):\n",
    "        for _ in range(square):\n",
    "            ax = pyplot.subplot(square,square,ix)\n",
    "            ax.set_xticks([])\n",
    "            ax.set_yticks([])\n",
    "            #plot filter channel in grayscale\n",
    "            pyplot.imshow(fmap[0,:,:,ix-1],cmap='gray')\n",
    "            ix += 1\n",
    "    # show the figure\n",
    "    pyplot.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 107,
   "metadata": {},
   "outputs": [],
   "source": [
    "model_builder = keras.applications.vgg16.VGG16\n",
    "preprocess_input = keras.applications.vgg16.preprocess_input\n",
    "decode_predictions = keras.applications.vgg16.decode_predictions\n",
    "last_conv_layer_name = \"block5_conv3\""
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 108,
   "metadata": {},
   "outputs": [],
   "source": [
    "import tensorflow as tf\n",
    "def make_gradcam_heatmap(img_array, model, last_conv_layer_name, pred_index=None):\n",
    "    # First, we create a model that maps the input image to the activations\n",
    "    # of the last conv layer as well as the output predictions\n",
    "    grad_model = tf.keras.models.Model(\n",
    "        [model.inputs], [model.get_layer(last_conv_layer_name).output, model.output]\n",
    "    )\n",
    "\n",
    "    # Then, we compute the gradient of the top predicted class for our input image\n",
    "    # with respect to the activations of the last conv layer\n",
    "    with tf.GradientTape() as tape:\n",
    "        last_conv_layer_output, preds = grad_model(img_array)\n",
    "        if pred_index is None:\n",
    "            pred_index = tf.argmax(preds[0])\n",
    "        class_channel = preds[:, pred_index]\n",
    "\n",
    "    # This is the gradient of the output neuron (top predicted or chosen)\n",
    "    # with regard to the output feature map of the last conv layer\n",
    "    grads = tape.gradient(class_channel, last_conv_layer_output)\n",
    "\n",
    "    # This is a vector where each entry is the mean intensity of the gradient\n",
    "    # over a specific feature map channel\n",
    "    pooled_grads = tf.reduce_mean(grads, axis=(0, 1, 2))\n",
    "\n",
    "    # We multiply each channel in the feature map array\n",
    "    # by \"how important this channel is\" with regard to the top predicted class\n",
    "    # then sum all the channels to obtain the heatmap class activation\n",
    "    last_conv_layer_output = last_conv_layer_output[0]\n",
    "    heatmap = last_conv_layer_output @ pooled_grads[..., tf.newaxis]\n",
    "    heatmap = tf.squeeze(heatmap)\n",
    "\n",
    "    # For visualization purpose, we will also normalize the heatmap between 0 & 1\n",
    "    heatmap = tf.maximum(heatmap, 0) / tf.math.reduce_max(heatmap)\n",
    "    return heatmap.numpy()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 109,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAaMAAAGkCAYAAACckEpMAAAAOXRFWHRTb2Z0d2FyZQBNYXRwbG90bGliIHZlcnNpb24zLjguMCwgaHR0cHM6Ly9tYXRwbG90bGliLm9yZy81sbWrAAAACXBIWXMAAA9hAAAPYQGoP6dpAAAd70lEQVR4nO3df3BU9b3/8dcmIZtAk8XEJiGXgLGlRQkqgnYEVLxqvoOIdbxqEX8w2vYrQ1Ri5muBohXtkFTbMsyYghP/sPQ6KPP9FpU6tTVVJHotIySgDm2J1JREME3x4iYEssnunu8fHXOJBBrI2c87uz4fMzvOnj3u630g2dd+ksPZgOd5ngAAMJRmPQAAAJQRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwFxKlNG6detUWlqqrKwsTZ8+XW+99Zb1SGespqZGl1xyiXJyclRQUKAbb7xRe/futR7LVzU1NQoEAqqsrLQeZdgOHDigO+64Q/n5+Ro9erQuuugiNTY2Wo91xqLRqB5++GGVlpYqOztb5557rh5//HHF43Hr0YasoaFB8+fPV3FxsQKBgF566aUBj3uep1WrVqm4uFjZ2dmaM2eO9uzZYzPsEJ3qmPr6+rRs2TJNnTpVY8aMUXFxse666y4dPHjQbuAzkPRltGnTJlVWVmrlypXatWuXLr/8cs2dO1etra3Wo52Rbdu2qaKiQtu3b1d9fb2i0ajKy8vV3d1tPZovduzYobq6Ol1wwQXWowzb4cOHNWvWLI0aNUqvvvqq/vSnP+nnP/+5xo4daz3aGXviiSf09NNPq7a2Vn/+85/15JNP6qc//ameeuop69GGrLu7WxdeeKFqa2sHffzJJ5/UmjVrVFtbqx07dqioqEjXXnuturq6HE86dKc6pqNHj6qpqUmPPPKImpqatHnzZjU3N+uGG24wmHQYvCR36aWXeosXLx6wbfLkyd7y5cuNJvJXR0eHJ8nbtm2b9SjD1tXV5U2aNMmrr6/3rrzySm/p0qXWIw3LsmXLvNmzZ1uP4at58+Z599xzz4BtN910k3fHHXcYTTQ8krwXX3yx/348HveKioq8n/zkJ/3benp6vFAo5D399NMGE56+Lx7TYN59911Pkrd//343Q/kgqVdGvb29amxsVHl5+YDt5eXleuedd4ym8lc4HJYk5eXlGU8yfBUVFZo3b56uueYa61F8sWXLFs2YMUO33HKLCgoKNG3aND3zzDPWYw3L7Nmz9frrr6u5uVmS9N577+ntt9/WddddZzyZP1paWtTe3j7gNSMYDOrKK69MmdcM6Z+vG4FAIKlW6RnWAwzHoUOHFIvFVFhYOGB7YWGh2tvbjabyj+d5qqqq0uzZs1VWVmY9zrC88MILampq0o4dO6xH8c1HH32k9evXq6qqSj/84Q/17rvv6oEHHlAwGNRdd91lPd4ZWbZsmcLhsCZPnqz09HTFYjGtXr1at912m/Vovvj8dWGw14z9+/dbjOS7np4eLV++XAsXLlRubq71OEOW1GX0uUAgMOC+53knbEtG9913n95//329/fbb1qMMS1tbm5YuXarXXntNWVlZ1uP4Jh6Pa8aMGaqurpYkTZs2TXv27NH69euTtow2bdqk5557Ths3btSUKVO0e/duVVZWqri4WIsWLbIezzep+prR19enBQsWKB6Pa926ddbjnJakLqOzzz5b6enpJ6yCOjo6Tnjnk2zuv/9+bdmyRQ0NDRo/frz1OMPS2Niojo4OTZ8+vX9bLBZTQ0ODamtrFYlElJ6ebjjhmRk3bpzOP//8AdvOO+88/frXvzaaaPgeeughLV++XAsWLJAkTZ06Vfv371dNTU1KlFFRUZGkf66Qxo0b1789FV4z+vr6dOutt6qlpUVvvPFGUq2KpCQ/my4zM1PTp09XfX39gO319fWaOXOm0VTD43me7rvvPm3evFlvvPGGSktLrUcatquvvloffPCBdu/e3X+bMWOGbr/9du3evTspi0iSZs2adcJp983NzZo4caLRRMN39OhRpaUNfFlIT09PqlO7T6W0tFRFRUUDXjN6e3u1bdu2pH3NkP6niD788EP94Q9/UH5+vvVIpy2pV0aSVFVVpTvvvFMzZszQZZddprq6OrW2tmrx4sXWo52RiooKbdy4US+//LJycnL6V32hUEjZ2dnG052ZnJycE37nNWbMGOXn5yf178IefPBBzZw5U9XV1br11lv17rvvqq6uTnV1ddajnbH58+dr9erVmjBhgqZMmaJdu3ZpzZo1uueee6xHG7IjR45o3759/fdbWlq0e/du5eXlacKECaqsrFR1dbUmTZqkSZMmqbq6WqNHj9bChQsNpz61Ux1TcXGxbr75ZjU1NemVV15RLBbrf93Iy8tTZmam1dinx/ZkPn/84he/8CZOnOhlZmZ6F198cVKfBi1p0Nuzzz5rPZqvUuHUbs/zvN/85jdeWVmZFwwGvcmTJ3t1dXXWIw1LZ2ent3TpUm/ChAleVlaWd+6553orV670IpGI9WhDtnXr1kG/hxYtWuR53j9P73700Ue9oqIiLxgMeldccYX3wQcf2A79L5zqmFpaWk76urF161br0Ycs4Hme57L8AAD4oqT+nREAIDVQRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHMpU0aRSESrVq1SJBKxHsU3HFNy4JiSQyoek5Q6x5Uy/86os7NToVBI4XA46a7JdDIcU3LgmJJDKh6TlDrHlTIrIwBA8qKMAADmRtyFUuPxuA4ePKicnJzT+nyRzs7OAf9NBRxTcuCYkkMqHpM0so/L8zx1dXWpuLj4hKvBf9GI+53Rxx9/rJKSEusxAAA+aWtr+5efyzbiVkY5OTmSpPGrHlZagj8VtHTzsYQ+//GOlLj7+IfekJtPrDxa6O6TMdPL3Lzryx/T7SRHkgIBN+8DWw+c7SRHkgLd7j6batRnbn7LkL/H3Wc5jXlpp5OcjMICJznReK/e/MeG/tf1UxlxZfT5j+bSsrISXkYZGe4WhRmj3H3cdizTTUmkZzkso9FuTlvNGBN1kiO5K6O0bHdfe4G4uzJK73FTRhmj3JVRRmCUm5w0t59xNJRfuXACAwDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMwlrIzWrVun0tJSZWVlafr06XrrrbcSFQUASHIJKaNNmzapsrJSK1eu1K5du3T55Zdr7ty5am1tTUQcACDJJaSM1qxZo+9+97v63ve+p/POO09r165VSUmJ1q9ff8K+kUhEnZ2dA24AgC8X38uot7dXjY2NKi8vH7C9vLxc77zzzgn719TUKBQK9d+4SCoAfPn4XkaHDh1SLBZTYWHhgO2FhYVqb28/Yf8VK1YoHA7339ra2vweCQAwwiXsQqlfvDCe53mDXiwvGAwqGAwmagwAQBLwfWV09tlnKz09/YRVUEdHxwmrJQAApASUUWZmpqZPn676+voB2+vr6zVz5ky/4wAAKSAhP6arqqrSnXfeqRkzZuiyyy5TXV2dWltbtXjx4kTEAQCSXELK6Dvf+Y4+/fRTPf744/rkk09UVlam3/72t5o4cWIi4gAASS5hJzAsWbJES5YsSdTTAwBSCNemAwCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmEnZq93B9ffWflRHITGhG59wpCX3+43069cTr8iVKesRNVizTc5IjSZEjbq5feLA510mOS8Fed1lZh9x9nUdHu8k5UB53EyRp1IzLnOR8/T//20mOF4tIfx/avqyMAADmKCMAgDnKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmMqwHOJnmx7+ptOyshGac/W4goc9/vN6CqLOsvEY3f61Hi9z9+V38tb85yZk2rc1JjiT95sBUJzntewqc5EhSuMjd13kg4ua9dNWs15zkSFJexhEnOY985WYnOfFjPdL/Gdq+rIwAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnKCABgjjICAJijjAAA5nwvo5qaGl1yySXKyclRQUGBbrzxRu3du9fvGABACvG9jLZt26aKigpt375d9fX1ikajKi8vV3d3t99RAIAU4ftFzH73u98NuP/ss8+qoKBAjY2NuuKKK/yOAwCkgIRfUTMcDkuS8vLyBn08EokoEon03+/s7Ez0SACAESahJzB4nqeqqirNnj1bZWVlg+5TU1OjUCjUfyspKUnkSACAESihZXTffffp/fff1/PPP3/SfVasWKFwONx/a2tzdwl/AMDIkLAf091///3asmWLGhoaNH78+JPuFwwGFQwGEzUGACAJ+F5Gnufp/vvv14svvqg333xTpaWlfkcAAFKM72VUUVGhjRs36uWXX1ZOTo7a29slSaFQSNnZ2X7HAQBSgO+/M1q/fr3C4bDmzJmjcePG9d82bdrkdxQAIEUk5Md0AACcDq5NBwAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMJfyq3Wcq9y8ZSg8mdry0mLvT0Me9ke4s66ztB5zkdJ9X6CRHkvYcm+wk5y+Oclwq3X3MWdZnX89ylhVw9O37VNd1boIkpfcGnOR89a9u/vBivWka6tVGWRkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxlWA9wMul9ntIDXkIzenMDCX3+4xX+V6ezrM6LxznJiQbd/fmVbP7ESU5sX4uTHEn6+/0zneT8Y1q2kxxJ6vxmzFlW5qF0JznBz5zESJJy/xZ3kuPye3eoWBkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzCW8jGpqahQIBFRZWZnoKABAkkpoGe3YsUN1dXW64IILEhkDAEhyCSujI0eO6Pbbb9czzzyjs846K1ExAIAUkLAyqqio0Lx583TNNdeccr9IJKLOzs4BNwDAl0tCrtr9wgsvqKmpSTt27PiX+9bU1Oixxx5LxBgAgCTh+8qora1NS5cu1XPPPaesrKx/uf+KFSsUDof7b21tbX6PBAAY4XxfGTU2Nqqjo0PTp0/v3xaLxdTQ0KDa2lpFIhGlp//P55AEg0EFg0G/xwAAJBHfy+jqq6/WBx98MGDb3XffrcmTJ2vZsmUDiggAACkBZZSTk6OysrIB28aMGaP8/PwTtgMAIHEFBgDACJCQs+m+6M0333QRAwBIUqyMAADmKCMAgDnKCABgjjICAJijjAAA5igjAIA5J6d2n4nc/X3KyEidqzWk9fQ6y+oscfPnNn5zq5McSYq2fewsy5X08kNOcjr35DvJkaTQHnffs51fjzvJKdjlJkeSchoPOsn5+D8mOMmJRQJD3peVEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAXIb1ACeT1htXWjye0IyMrkhCn/94Xkubs6zsQ/lOcrysTCc5qeqrPxrlJKfokLuvvZ5vFDrLCu138146EPWc5EiSolEnMWP3ucmJ9g09h5URAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwFxCyujAgQO64447lJ+fr9GjR+uiiy5SY2NjIqIAACnA98sBHT58WLNmzdJVV12lV199VQUFBfrrX/+qsWPH+h0FAEgRvpfRE088oZKSEj377LP928455xy/YwAAKcT3H9Nt2bJFM2bM0C233KKCggJNmzZNzzzzzEn3j0Qi6uzsHHADAHy5+F5GH330kdavX69Jkybp97//vRYvXqwHHnhAv/rVrwbdv6amRqFQqP9WUlLi90gAgBHO9zKKx+O6+OKLVV1drWnTpunee+/V97//fa1fv37Q/VesWKFwONx/a2tzd7l7AMDI4HsZjRs3Tueff/6Abeedd55aW1sH3T8YDCo3N3fADQDw5eJ7Gc2aNUt79+4dsK25uVkTJ070OwoAkCJ8L6MHH3xQ27dvV3V1tfbt26eNGzeqrq5OFRUVfkcBAFKE72V0ySWX6MUXX9Tzzz+vsrIy/fjHP9batWt1++23+x0FAEgRvv87I0m6/vrrdf311yfiqQEAKYhr0wEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAcwk5tdsP8cw0xTMS25Vpx/oS+vzHi0UizrLG7j3iJCfeMvglnpJZYPoUd1nRuJOc6L/lOcmRpDRHxyRJwQ8/c5Jz5Px8JzmSFP2k3UnOV3anO8mJxof+usfKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnKCABgjjICAJjLsB7gZLL//Iky0oIJzYhMKkro8x8vPn66s6yM7qiboG+VucmR5KUFnORE8kc5yZGkw99w8+2X1uckRpJU9F9d7sLa/+EkxptytpMcScooKnSS443JdpMTG/p6h5URAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzvpdRNBrVww8/rNLSUmVnZ+vcc8/V448/rng87ncUACBF+P5PwJ944gk9/fTT2rBhg6ZMmaKdO3fq7rvvVigU0tKlS/2OAwCkAN/L6I9//KO+/e1va968eZKkc845R88//7x27tzpdxQAIEX4/mO62bNn6/XXX1dzc7Mk6b333tPbb7+t6667btD9I5GIOjs7B9wAAF8uvq+Mli1bpnA4rMmTJys9PV2xWEyrV6/WbbfdNuj+NTU1euyxx/weAwCQRHxfGW3atEnPPfecNm7cqKamJm3YsEE/+9nPtGHDhkH3X7FihcLhcP+tra3N75EAACOc7yujhx56SMuXL9eCBQskSVOnTtX+/ftVU1OjRYsWnbB/MBhUMJjYj4oAAIxsvq+Mjh49qrS0gU+bnp7Oqd0AgJPyfWU0f/58rV69WhMmTNCUKVO0a9curVmzRvfcc4/fUQCAFOF7GT311FN65JFHtGTJEnV0dKi4uFj33nuvfvSjH/kdBQBIEb6XUU5OjtauXau1a9f6/dQAgBTFtekAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnfT+32i9cTkZfmJTQj4CX2+Y93+OuZzrLGvf6Zk5xPri1wkiNJ4ckxJzmB3oCTHEm6ZvYuJznv/N9pTnIkKePgfzvL8tLc/F11F7l7z547OttJTtf5+U5yon090odD25eVEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADCXYT3AybT/xzeUnpmV0IyzmiMJff7j5e11l9VTEnKS03VO3EmOJH3j/I+d5HzWk+0kR5K+OfrvTnJe+1rUSY4kdV9Y7CxLjr78use7yZGkw5cWOcn55N9jTnLix+LSb4a2LysjAIA5yggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmTruMGhoaNH/+fBUXFysQCOill14a8LjneVq1apWKi4uVnZ2tOXPmaM+ePX7NCwBIQaddRt3d3brwwgtVW1s76ONPPvmk1qxZo9raWu3YsUNFRUW69tpr1dXVNexhAQCp6bQvBzR37lzNnTt30Mc8z9PatWu1cuVK3XTTTZKkDRs2qLCwUBs3btS99947vGkBACnJ198ZtbS0qL29XeXl5f3bgsGgrrzySr3zzjuD/j+RSESdnZ0DbgCALxdfy6i9vV2SVFhYOGB7YWFh/2NfVFNTo1Ao1H8rKSnxcyQAQBJIyNl0gUBgwH3P807Y9rkVK1YoHA7339ra2hIxEgBgBPP1IySKiv55+fP29naNGzeuf3tHR8cJq6XPBYNBBYNBP8cAACQZX1dGpaWlKioqUn19ff+23t5ebdu2TTNnzvQzCgCQQk57ZXTkyBHt27ev/35LS4t2796tvLw8TZgwQZWVlaqurtakSZM0adIkVVdXa/To0Vq4cKGvgwMAUsdpl9HOnTt11VVX9d+vqqqSJC1atEi//OUv9YMf/EDHjh3TkiVLdPjwYX3rW9/Sa6+9ppycHP+mBgCklNMuozlz5sjzvJM+HggEtGrVKq1atWo4cwEAvkS4Nh0AwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMOfr5YD89NUb2pQxJrGXCWp/ZUJCn/94sUxnUfrKgbiTnMzP3L2X6YmOcpKz/aL/5yRHkrZ0j3aSE8iKOcmRpNb/5fAlxRv8epd+Szu7x0mOJB37JNtJzui/ufnejUWG/rXHyggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCYo4wAAOYoIwCAOcoIAGCOMgIAmKOMAADmKCMAgDnKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCYy7Ae4GS6/vPflD4qK6EZeZ/2JvT5j+elBZxljflLh5Oc0HP7neRIUlrZZCc5V3ztfzvJkaRolpv3gnm57r72Mo55zrLGfNLnJCfz78ec5EhS2pFPnWW5EI1H9OEQ92VlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDA3GmXUUNDg+bPn6/i4mIFAgG99NJL/Y/19fVp2bJlmjp1qsaMGaPi4mLdddddOnjwoJ8zAwBSzGmXUXd3ty688ELV1tae8NjRo0fV1NSkRx55RE1NTdq8ebOam5t1ww03+DIsACA1nfblgObOnau5c+cO+lgoFFJ9ff2AbU899ZQuvfRStba2asKECWc2JQAgpSX82nThcFiBQEBjx44d9PFIJKJIJNJ/v7OzM9EjAQBGmISewNDT06Ply5dr4cKFys3NHXSfmpoahUKh/ltJSUkiRwIAjEAJK6O+vj4tWLBA8Xhc69atO+l+K1asUDgc7r+1tbUlaiQAwAiVkB/T9fX16dZbb1VLS4veeOONk66KJCkYDCoYDCZiDABAkvC9jD4vog8//FBbt25Vfn6+3xEAgBRz2mV05MgR7du3r/9+S0uLdu/erby8PBUXF+vmm29WU1OTXnnlFcViMbW3t0uS8vLylJmZ6d/kAICUcdpltHPnTl111VX996uqqiRJixYt0qpVq7RlyxZJ0kUXXTTg/9u6davmzJlz5pMCAFLWaZfRnDlz5Hkn/2jhUz0GAMBguDYdAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADCX8Kt2n6ncv3YrIz2W0Iz0j/+R0OcfIDvLWVRkopurXsS+8VUnOZIUH+XmfVNvjrv3Zz1nuckKOPzXFl85GHWWlfn3bic5aV1uciQpHhrjJKcvb7STnGi0R9o/tH1ZGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzFFGAABzlBEAwBxlBAAwRxkBAMxRRgAAc5QRAMAcZQQAMEcZAQDMUUYAAHOUEQDAHGUEADBHGQEAzGVYD/BFnudJkqKxSOKz4r0Jz+gXDziLikZ7nOTE0t29l4k7et8U63V3TLGImyx3X3lStK/PXZaD1whJSou7yZGkeMzNS3I06uZrLxr955/d56/rpxLwhrKXQx9//LFKSkqsxwAA+KStrU3jx48/5T4jrozi8bgOHjyonJwcBQJDf0/X2dmpkpIStbW1KTc3N4ETusMxJQeOKTmk4jFJI/u4PM9TV1eXiouLlZZ26tXYiPsxXVpa2r9s0FPJzc0dcX8hw8UxJQeOKTmk4jFJI/e4QqHQkPbjBAYAgDnKCABgLmXKKBgM6tFHH1UwGLQexTccU3LgmJJDKh6TlDrHNeJOYAAAfPmkzMoIAJC8KCMAgDnKCABgjjICAJijjAAA5igjAIA5yggAYI4yAgCY+/853gF4+NNtCQAAAABJRU5ErkJggg==",
      "text/plain": [
       "<Figure size 480x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "img = image.load_img(img_path,target_size=(224,224))\n",
    "#Convert the image to an array\n",
    "x = image.img_to_array(img)\n",
    "x = np.expand_dims(x, axis=0)\n",
    "img_array = preprocess_input(x)\n",
    "\n",
    "# Make model\n",
    "grad_cam_model = model_builder(weights=\"imagenet\")\n",
    "\n",
    "# Remove last layer's softmax\n",
    "grad_cam_model.layers[-1].activation = None\n",
    "\n",
    "\n",
    "# Generate class activation heatmap\n",
    "heatmap = make_gradcam_heatmap(img_array, grad_cam_model, last_conv_layer_name)\n",
    "\n",
    "# Display heatmap\n",
    "plt.matshow(heatmap)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 110,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "C:\\Users\\ASUS\\AppData\\Local\\Temp\\ipykernel_20096\\80715810.py:10: MatplotlibDeprecationWarning: The get_cmap function was deprecated in Matplotlib 3.7 and will be removed two minor releases later. Use ``matplotlib.colormaps[name]`` or ``matplotlib.colormaps.get_cmap(obj)`` instead.\n",
      "  jet = cm.get_cmap(\"jet\")\n"
     ]
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "def save_and_display_gradcam(img_path, heatmap, cam_path=\"cam.jpg\", alpha=0.4):\n",
    "    # Load the original image\n",
    "    img = keras.preprocessing.image.load_img(img_path)\n",
    "    img = keras.preprocessing.image.img_to_array(img)\n",
    "\n",
    "    # Rescale heatmap to a range 0-255\n",
    "    heatmap = np.uint8(255 * heatmap)\n",
    "\n",
    "    # Use jet colormap to colorize heatmap\n",
    "    jet = cm.get_cmap(\"jet\")\n",
    "\n",
    "    # Use RGB values of the colormap\n",
    "    jet_colors = jet(np.arange(256))[:, :3]\n",
    "    jet_heatmap = jet_colors[heatmap]\n",
    "\n",
    "    # Create an image with RGB colorized heatmap\n",
    "    jet_heatmap = keras.preprocessing.image.array_to_img(jet_heatmap)\n",
    "    jet_heatmap = jet_heatmap.resize((img.shape[1], img.shape[0]))\n",
    "    jet_heatmap = keras.preprocessing.image.img_to_array(jet_heatmap)\n",
    "\n",
    "    # Superimpose the heatmap on original image\n",
    "    superimposed_img = jet_heatmap * alpha + img\n",
    "    superimposed_img = keras.preprocessing.image.array_to_img(superimposed_img)\n",
    "\n",
    "    # Save the superimposed image\n",
    "    superimposed_img.save(cam_path)\n",
    "    plt.imshow(superimposed_img)\n",
    "    plt.axis('off')\n",
    "    plt.show()\n",
    "    # plt.show(Image(cam_path))\n",
    "\n",
    "    # # Display Grad CAM\n",
    "    # display(Image(cam_path))\n",
    "\n",
    "\n",
    "save_and_display_gradcam(img_path, heatmap)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 111,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Requirement already satisfied: LIME in c:\\users\\asus\\anaconda3\\lib\\site-packages (0.2.0.1)\n",
      "Requirement already satisfied: matplotlib in c:\\users\\asus\\anaconda3\\lib\\site-packages (from LIME) (3.8.0)\n",
      "Requirement already satisfied: numpy in c:\\users\\asus\\anaconda3\\lib\\site-packages (from LIME) (1.26.4)\n",
      "Requirement already satisfied: scipy in c:\\users\\asus\\anaconda3\\lib\\site-packages (from LIME) (1.11.4)\n",
      "Requirement already satisfied: tqdm in c:\\users\\asus\\anaconda3\\lib\\site-packages (from LIME) (4.65.0)\n",
      "Requirement already satisfied: scikit-learn>=0.18 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from LIME) (1.2.2)\n",
      "Requirement already satisfied: scikit-image>=0.12 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from LIME) (0.22.0)\n",
      "Requirement already satisfied: networkx>=2.8 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-image>=0.12->LIME) (3.1)\n",
      "Requirement already satisfied: pillow>=9.0.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-image>=0.12->LIME) (10.2.0)\n",
      "Requirement already satisfied: imageio>=2.27 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-image>=0.12->LIME) (2.33.1)\n",
      "Requirement already satisfied: tifffile>=2022.8.12 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-image>=0.12->LIME) (2023.4.12)\n",
      "Requirement already satisfied: packaging>=21 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-image>=0.12->LIME) (23.1)\n",
      "Requirement already satisfied: lazy_loader>=0.3 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-image>=0.12->LIME) (0.3)\n",
      "Requirement already satisfied: joblib>=1.1.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-learn>=0.18->LIME) (1.2.0)\n",
      "Requirement already satisfied: threadpoolctl>=2.0.0 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from scikit-learn>=0.18->LIME) (2.2.0)\n",
      "Requirement already satisfied: contourpy>=1.0.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from matplotlib->LIME) (1.2.0)\n",
      "Requirement already satisfied: cycler>=0.10 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from matplotlib->LIME) (0.11.0)\n",
      "Requirement already satisfied: fonttools>=4.22.0 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from matplotlib->LIME) (4.25.0)\n",
      "Requirement already satisfied: kiwisolver>=1.0.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from matplotlib->LIME) (1.4.4)\n",
      "Requirement already satisfied: pyparsing>=2.3.1 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from matplotlib->LIME) (3.0.9)\n",
      "Requirement already satisfied: python-dateutil>=2.7 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from matplotlib->LIME) (2.8.2)\n",
      "Requirement already satisfied: colorama in c:\\users\\asus\\anaconda3\\lib\\site-packages (from tqdm->LIME) (0.4.6)\n",
      "Requirement already satisfied: six>=1.5 in c:\\users\\asus\\anaconda3\\lib\\site-packages (from python-dateutil>=2.7->matplotlib->LIME) (1.16.0)\n"
     ]
    }
   ],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": 125,
   "metadata": {},
   "outputs": [],
   "source": [
    "\n",
    "from lime.lime_image import LimeImageExplainer\n",
    "explainer = LimeImageExplainer()\n",
    "\n",
    "img_path = './AXL-ANGIO-221.jpg'\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 126,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "application/vnd.jupyter.widget-view+json": {
       "model_id": "d443df45ed464c9e8b13751a9a2bf03c",
       "version_major": 2,
       "version_minor": 0
      },
      "text/plain": [
       "  0%|          | 0/200 [00:00<?, ?it/s]"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "WARNING:tensorflow:5 out of the last 42 calls to <function Model.make_predict_function.<locals>.predict_function at 0x00000275E65E0E00> triggered tf.function retracing. Tracing is expensive and the excessive number of tracings could be due to (1) creating @tf.function repeatedly in a loop, (2) passing tensors with different shapes, (3) passing Python objects instead of tensors. For (1), please define your @tf.function outside of the loop. For (2), @tf.function has reduce_retracing=True option that can avoid unnecessary retracing. For (3), please refer to https://www.tensorflow.org/guide/function#controlling_retracing and https://www.tensorflow.org/api_docs/python/tf/function for  more details.\n",
      "1/1 [==============================] - 1s 1s/step\n",
      "1/1 [==============================] - 1s 860ms/step\n",
      "1/1 [==============================] - 1s 823ms/step\n",
      "1/1 [==============================] - 1s 792ms/step\n",
      "1/1 [==============================] - 1s 893ms/step\n",
      "1/1 [==============================] - 1s 865ms/step\n",
      "1/1 [==============================] - 1s 814ms/step\n",
      "1/1 [==============================] - 1s 850ms/step\n",
      "1/1 [==============================] - 1s 849ms/step\n",
      "1/1 [==============================] - 1s 865ms/step\n",
      "1/1 [==============================] - 1s 909ms/step\n",
      "1/1 [==============================] - 1s 832ms/step\n",
      "1/1 [==============================] - 1s 800ms/step\n",
      "1/1 [==============================] - 1s 837ms/step\n",
      "1/1 [==============================] - 1s 758ms/step\n",
      "1/1 [==============================] - 1s 756ms/step\n",
      "1/1 [==============================] - 1s 758ms/step\n",
      "1/1 [==============================] - 1s 872ms/step\n",
      "1/1 [==============================] - 1s 738ms/step\n",
      "1/1 [==============================] - 1s 873ms/step\n"
     ]
    }
   ],
   "source": [
    "img = image.load_img(img_path,target_size=(224,224))\n",
    "model  = VGG16(weights='imagenet')\n",
    "x = image.img_to_array(img)\n",
    "x = np.expand_dims(x, axis=0)\n",
    "x = preprocess_input(x)\n",
    "explanation = explainer.explain_instance(x[0], model.predict, top_labels=3, hide_color=0, num_samples=200)\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 127,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<matplotlib.image.AxesImage at 0x27605f6e190>"
      ]
     },
     "execution_count": 127,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from skimage.segmentation import mark_boundaries\n",
    "\n",
    "temp_1, mask_1 = explanation.get_image_and_mask(explanation.top_labels[0], positive_only=True, num_features=20, hide_rest=False)\n",
    "\n",
    "plt.imshow(mark_boundaries(temp_1, mask_1))\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "import numpy as np\n",
    "import matplotlib.pyplot as plt\n",
    "from keras.applications.vgg16 import VGG16, preprocess_input, decode_predictions\n",
    "from keras.preprocessing import image\n",
    "\n",
    "def occlusion_sensitivity(image_path, window_size=50, stride=10):\n",
    "    img = image.load_img(image_path, target_size=(224, 224))\n",
    "    x = image.img_to_array(img)\n",
    "    x = preprocess_input(x)\n",
    "\n",
    "    # Get the model's top predicted class\n",
    "    preds = model.predict(x[np.newaxis, ...])\n",
    "    top_class = np.argmax(preds)\n",
    "    top_class_prob = preds[0, top_class]\n",
    "\n",
    "    heatmap = np.zeros((img.size[1], img.size[0]))\n",
    "\n",
    "    for y in range(0, img.size[1], stride):\n",
    "        for x in range(0, img.size[0], stride):\n",
    "            x1 = min(img.size[0], x + window_size)\n",
    "            y1 = min(img.size[1], y + window_size)\n",
    "\n",
    "            occluded_img = img.copy()\n",
    "            occluded_img.paste((0, 0, 0), box=(x, y, x1, y1))\n",
    "            occluded_img_array = image.img_to_array(occluded_img)\n",
    "            occluded_img_array = preprocess_input(occluded_img_array)\n",
    "\n",
    "            occluded_preds = model.predict(occluded_img_array[np.newaxis, ...])\n",
    "            occluded_prob = occluded_preds[0, top_class]\n",
    "            heatmap[y:y1, x:x1] = top_class_prob - occluded_prob\n",
    "\n",
    "    return heatmap\n",
    "\n",
    "# Example usage\n",
    "heatmap = occlusion_sensitivity(img_path)\n",
    "plt.imshow(heatmap, cmap='hot', interpolation='nearest')\n",
    "plt.axis('off')\n",
    "plt.show()\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "colab": {
   "provenance": []
  },
  "kernelspec": {
   "display_name": "Python 3 (ipykernel)",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.10.14"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 4
}
