train_model.py 7.7 KB

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  1. import numpy as np
  2. import pandas as pd
  3. import sys, os, argparse
  4. import json
  5. import cv2
  6. from sklearn.utils import shuffle
  7. from keras.preprocessing.image import ImageDataGenerator
  8. from keras.models import Sequential
  9. from keras.layers import Conv2D, MaxPooling2D, AveragePooling2D
  10. from keras.layers import Activation, Dropout, Flatten, Dense, BatchNormalization
  11. from keras import backend as K
  12. import tensorflow as tf
  13. from keras.utils import plot_model
  14. from modules.utils import config as cfg
  15. from sklearn.metrics import roc_auc_score, accuracy_score, precision_score, recall_score, f1_score
  16. img_width, img_height = 200, 200
  17. batch_size = 32
  18. # 1 because we have 1 color canal
  19. if K.image_data_format() == 'channels_first':
  20. input_shape = (1, img_width, img_height)
  21. else:
  22. input_shape = (img_width, img_height, 1)
  23. def auc(y_true, y_pred):
  24. auc = tf.metrics.auc(y_true, y_pred)[1]
  25. K.get_session().run(tf.local_variables_initializer())
  26. #K.get_session().run(tf.local_variables_initializer())
  27. return auc
  28. def generate_model(_input_shape):
  29. model = Sequential()
  30. model.add(Conv2D(60, (2, 2), input_shape=_input_shape))
  31. model.add(Activation('relu'))
  32. model.add(MaxPooling2D(pool_size=(2, 2)))
  33. model.add(Conv2D(40, (2, 2)))
  34. model.add(Activation('relu'))
  35. model.add(MaxPooling2D(pool_size=(2, 2)))
  36. model.add(Conv2D(20, (2, 2)))
  37. model.add(Activation('relu'))
  38. model.add(MaxPooling2D(pool_size=(2, 2)))
  39. model.add(Flatten())
  40. model.add(Dense(140))
  41. model.add(Activation('relu'))
  42. model.add(BatchNormalization())
  43. model.add(Dropout(0.4))
  44. model.add(Dense(120))
  45. model.add(Activation('relu'))
  46. model.add(BatchNormalization())
  47. model.add(Dropout(0.4))
  48. model.add(Dense(80))
  49. model.add(Activation('relu'))
  50. model.add(BatchNormalization())
  51. model.add(Dropout(0.4))
  52. model.add(Dense(40))
  53. model.add(Activation('relu'))
  54. model.add(BatchNormalization())
  55. model.add(Dropout(0.4))
  56. model.add(Dense(20))
  57. model.add(Activation('relu'))
  58. model.add(BatchNormalization())
  59. model.add(Dropout(0.4))
  60. model.add(Dense(1))
  61. model.add(Activation('sigmoid'))
  62. model.compile(loss='binary_crossentropy',
  63. optimizer='adam',
  64. metrics=['accuracy', auc])
  65. return model
  66. def main():
  67. parser = argparse.ArgumentParser(description="Train Keras model and save it into .json file")
  68. parser.add_argument('--data', type=str, help='dataset filename prefix (without .train and .test)', required=True)
  69. parser.add_argument('--output', type=str, help='output file name desired for model (without .json extension)', required=True)
  70. parser.add_argument('--batch_size', type=int, help='batch size used as model input', default=cfg.keras_batch)
  71. parser.add_argument('--epochs', type=int, help='number of epochs used for training model', default=cfg.keras_epochs)
  72. parser.add_argument('--val_size', type=int, help='percent of validation data during training process', default=cfg.val_dataset_size)
  73. args = parser.parse_args()
  74. p_data_file = args.data
  75. p_output = args.output
  76. p_batch_size = args.batch_size
  77. p_epochs = args.epochs
  78. p_val_size = args.val_size
  79. ########################
  80. # 1. Get and prepare data
  81. ########################
  82. print("Preparing data...")
  83. dataset_train = pd.read_csv(p_data_file + '.train', header=None, sep=";")
  84. dataset_test = pd.read_csv(p_data_file + '.test', header=None, sep=";")
  85. # default first shuffle of data
  86. dataset_train = shuffle(dataset_train)
  87. dataset_test = shuffle(dataset_test)
  88. print("Reading all images data...")
  89. dataset_train[1] = dataset_train[1].apply(lambda x: cv2.imread(x, cv2.IMREAD_GRAYSCALE).reshape(input_shape))
  90. dataset_test[1] = dataset_test[1].apply(lambda x: cv2.imread(x, cv2.IMREAD_GRAYSCALE).reshape(input_shape))
  91. # get dataset with equal number of classes occurences
  92. noisy_df_train = dataset_train[dataset_train.ix[:, 0] == 1]
  93. not_noisy_df_train = dataset_train[dataset_train.ix[:, 0] == 0]
  94. nb_noisy_train = len(noisy_df_train.index)
  95. noisy_df_test = dataset_test[dataset_test.ix[:, 0] == 1]
  96. not_noisy_df_test = dataset_test[dataset_test.ix[:, 0] == 0]
  97. nb_noisy_test = len(noisy_df_test.index)
  98. final_df_train = pd.concat([not_noisy_df_train[0:nb_noisy_train], noisy_df_train])
  99. final_df_test = pd.concat([not_noisy_df_test[0:nb_noisy_test], noisy_df_test])
  100. # shuffle data another time
  101. final_df_train = shuffle(final_df_train)
  102. final_df_test = shuffle(final_df_test)
  103. final_df_train_size = len(final_df_train.index)
  104. final_df_test_size = len(final_df_test.index)
  105. # use of the whole data set for training
  106. x_dataset_train = final_df_train.ix[:,1:]
  107. x_dataset_test = final_df_test.ix[:,1:]
  108. y_dataset_train = final_df_train.ix[:,0]
  109. y_dataset_test = final_df_test.ix[:,0]
  110. x_data_train = []
  111. for item in x_dataset_train.values:
  112. #print("Item is here", item)
  113. x_data_train.append(item[0])
  114. x_data_train = np.array(x_data_train)
  115. x_data_test = []
  116. for item in x_dataset_test.values:
  117. #print("Item is here", item)
  118. x_data_test.append(item[0])
  119. x_data_test = np.array(x_data_test)
  120. print("End of loading data..")
  121. #######################
  122. # 2. Getting model
  123. #######################
  124. model = generate_model(input_shape)
  125. model.summary()
  126. model.fit(x_data_train, y_dataset_train.values, validation_split=p_val_size, epochs=p_epochs, batch_size=p_batch_size)
  127. score = model.evaluate(x_data_test, y_dataset_test, batch_size=p_batch_size)
  128. if not os.path.exists(cfg.saved_models_folder):
  129. os.makedirs(cfg.saved_models_folder)
  130. # save the model into HDF5 file
  131. model_output_path = os.path.join(cfg.saved_models_folder, p_output + '.json')
  132. json_model_content = model.to_json()
  133. with open(model_output_path, 'w') as f:
  134. print("Model saved into ", model_output_path)
  135. json.dump(json_model_content, f, indent=4)
  136. model.save_weights(model_output_path.replace('.json', '.h5'))
  137. # Get results obtained from model
  138. y_train_prediction = model.predict(x_data_test)
  139. y_test_prediction = model.predict(x_data_test)
  140. acc_train_score = accuracy_score(y_dataset_train, y_train_prediction)
  141. acc_test_score = accuracy_score(y_dataset_test, y_test_prediction)
  142. f1_train_score = f1_score(y_dataset_train, y_train_prediction)
  143. f1_test_score = f1_score(y_dataset_test, y_test_prediction)
  144. recall_train_score = recall_score(y_dataset_train, y_train_prediction)
  145. recall_test_score = recall_score(y_dataset_test, y_test_prediction)
  146. pres_train_score = precision_score(y_dataset_train, y_train_prediction)
  147. pres_test_score = precision_score(y_dataset_test, y_test_prediction)
  148. roc_train_score = roc_auc_score(y_dataset_test, y_train_prediction)
  149. roc_test_score = roc_auc_score(y_dataset_test, y_test_prediction)
  150. # save model performance
  151. if not os.path.exists(cfg.models_information_folder):
  152. os.makedirs(cfg.models_information_folder)
  153. perf_file_path = os.path.join(cfg.models_information_folder, cfg.csv_model_comparisons_filename)
  154. with open(perf_file_path, 'a') as f:
  155. line = p_output + ';' + len(dataset_train) + ';' + len(dataset_test) + ';' + final_df_train_size + ';' + final_df_test_size + ';' + acc_train_score + ';' + acc_test_score + ';' \
  156. + f1_train_score + ';' + f1_test_score + ';' \
  157. + recall_train_score + ';' + recall_test_score + ';' \
  158. + pres_train_score + ';' + pres_test_score + ';' \
  159. + roc_train_score + ';' + roc_test_score + '\n'
  160. f.write(line)
  161. if __name__== "__main__":
  162. main()