train_model.py 11 KB

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  1. # main imports
  2. import numpy as np
  3. import pandas as pd
  4. import sys, os, argparse
  5. import json
  6. # model imports
  7. import cnn_models as models
  8. import tensorflow as tf
  9. import keras
  10. from keras import backend as K
  11. from keras.callbacks import ModelCheckpoint
  12. from sklearn.metrics import roc_auc_score, accuracy_score, precision_score, recall_score, f1_score
  13. from keras.utils import to_categorical
  14. # image processing imports
  15. import cv2
  16. from sklearn.utils import shuffle
  17. from sklearn.model_selection import train_test_split
  18. # config imports
  19. sys.path.insert(0, '') # trick to enable import of main folder module
  20. import custom_config as cfg
  21. def main():
  22. parser = argparse.ArgumentParser(description="Train Keras model and save it into .json file")
  23. parser.add_argument('--data', type=str, help='dataset filename prefix (without .train and .val)', required=True)
  24. parser.add_argument('--output', type=str, help='output file name desired for model (without .json extension)', required=True)
  25. parser.add_argument('--tl', type=int, help='use or not of transfer learning (`VGG network`)', default=0, choices=[0, 1])
  26. parser.add_argument('--batch_size', type=int, help='batch size used as model input', default=cfg.keras_batch)
  27. parser.add_argument('--epochs', type=int, help='number of epochs used for training model', default=cfg.keras_epochs)
  28. parser.add_argument('--balancing', type=int, help='specify if balacing of classes is done or not', default="1")
  29. parser.add_argument('--chanels', type=int, help="given number of chanels if necessary", default=0)
  30. parser.add_argument('--size', type=str, help="Size of input images", default="100, 100")
  31. parser.add_argument('--val_size', type=float, help='percent of validation data during training process', default=0.3)
  32. args = parser.parse_args()
  33. p_data_file = args.data
  34. p_output = args.output
  35. p_tl = args.tl
  36. p_batch_size = args.batch_size
  37. p_epochs = args.epochs
  38. p_balancing = bool(args.balancing)
  39. p_chanels = args.chanels
  40. p_size = args.size.split(',')
  41. p_val_size = args.val_size
  42. #p_val_size = args.val_size
  43. initial_epoch = 0
  44. ########################
  45. # 1. Get and prepare data
  46. ########################
  47. print("Preparing data...")
  48. dataset_train = pd.read_csv(p_data_file + '.train', header=None, sep=";")
  49. dataset_test = pd.read_csv(p_data_file + '.test', header=None, sep=";")
  50. print("Train set size : ", len(dataset_train))
  51. print("Test set size : ", len(dataset_test))
  52. # default first shuffle of data
  53. dataset_train = shuffle(dataset_train)
  54. dataset_test = shuffle(dataset_test)
  55. print("Reading all images data...")
  56. # getting number of chanel
  57. if p_chanels == 0:
  58. n_chanels = len(dataset_train[1][1].split('::'))
  59. else:
  60. n_chanels = p_chanels
  61. print("Number of chanels : ", n_chanels)
  62. img_width, img_height = [ int(s) for s in p_size ]
  63. # specify the number of dimensions
  64. if K.image_data_format() == 'chanels_first':
  65. if n_chanels > 1:
  66. input_shape = (1, n_chanels, img_width, img_height)
  67. else:
  68. input_shape = (n_chanels, img_width, img_height)
  69. else:
  70. if n_chanels > 1:
  71. input_shape = (1, img_width, img_height, n_chanels)
  72. else:
  73. input_shape = (img_width, img_height, n_chanels)
  74. # get dataset with equal number of classes occurences if wished
  75. if p_balancing:
  76. print("Balancing of data")
  77. noisy_df_train = dataset_train[dataset_train.iloc[:, 0] == 1]
  78. not_noisy_df_train = dataset_train[dataset_train.iloc[:, 0] == 0]
  79. nb_noisy_train = len(noisy_df_train.index)
  80. noisy_df_val = dataset_test[dataset_test.iloc[:, 0] == 1]
  81. not_noisy_df_val = dataset_test[dataset_test.iloc[:, 0] == 0]
  82. nb_noisy_val = len(noisy_df_val.index)
  83. final_df_train = pd.concat([not_noisy_df_train[0:nb_noisy_train], noisy_df_train])
  84. final_df_val = pd.concat([not_noisy_df_val[0:nb_noisy_val], noisy_df_val])
  85. else:
  86. print("No balancing of data")
  87. final_df_train = dataset_train
  88. final_df_test = dataset_test
  89. # check if specific number of chanels is used
  90. if p_chanels == 0:
  91. # `::` is the separator used for getting each img path
  92. if n_chanels > 1:
  93. final_df_train[1] = final_df_train[1].apply(lambda x: [cv2.imread(path, cv2.IMREAD_GRAYSCALE) for path in x.split('::')])
  94. final_df_test[1] = final_df_test[1].apply(lambda x: [cv2.imread(path, cv2.IMREAD_GRAYSCALE) for path in x.split('::')])
  95. else:
  96. final_df_train[1] = final_df_train[1].apply(lambda x: cv2.imread(x, cv2.IMREAD_GRAYSCALE))
  97. final_df_test[1] = final_df_test[1].apply(lambda x: cv2.imread(x, cv2.IMREAD_GRAYSCALE))
  98. else:
  99. final_df_train[1] = final_df_train[1].apply(lambda x: cv2.imread(x))
  100. final_df_test[1] = final_df_test[1].apply(lambda x: cv2.imread(x))
  101. # reshape array data
  102. final_df_train[1] = final_df_train[1].apply(lambda x: np.array(x).reshape(input_shape))
  103. final_df_test[1] = final_df_test[1].apply(lambda x: np.array(x).reshape(input_shape))
  104. # shuffle data another time
  105. final_df_train = shuffle(final_df_train)
  106. final_df_test = shuffle(final_df_test)
  107. final_df_train_size = len(final_df_train.index)
  108. final_df_test_size = len(final_df_test.index)
  109. print("----------------------------------------------------------")
  110. print("Validation split is now set at", p_val_size)
  111. print("----------------------------------------------------------")
  112. # use of the whole data set for training
  113. x_dataset_train = final_df_train.iloc[:,1:]
  114. x_dataset_test = final_df_test.iloc[:,1:]
  115. y_dataset_train = final_df_train.iloc[:,0]
  116. y_dataset_test = final_df_test.iloc[:,0]
  117. x_data_train = []
  118. for item in x_dataset_train.values:
  119. #print("Item is here", item)
  120. x_data_train.append(item[0])
  121. x_data_train = np.array(x_data_train)
  122. x_data_test = []
  123. for item in x_dataset_test.values:
  124. #print("Item is here", item)
  125. x_data_test.append(item[0])
  126. x_data_test = np.array(x_data_test)
  127. print("End of loading data..")
  128. print("Train set size (after balancing) : ", final_df_train_size)
  129. print("Test set size (after balancing) : ", final_df_test_size)
  130. #######################
  131. # 2. Getting model
  132. #######################
  133. # create backup folder for current model
  134. model_backup_folder = os.path.join(cfg.backup_model_folder, p_output)
  135. if not os.path.exists(model_backup_folder):
  136. os.makedirs(model_backup_folder)
  137. # add of callback models
  138. filepath = os.path.join(cfg.backup_model_folder, p_output, p_output + "-{accuracy:02f}-{val_accuracy:02f}__{epoch:02d}.hdf5")
  139. checkpoint = ModelCheckpoint(filepath, monitor='val_accuracy', verbose=1, save_best_only=True, mode='max')
  140. callbacks_list = [checkpoint]
  141. # check if backup already exists
  142. weights_filepath = None
  143. backups = sorted(os.listdir(model_backup_folder))
  144. if len(backups) > 0:
  145. # retrieve last backup epoch of model
  146. last_model_backup = None
  147. max_last_epoch = 0
  148. for backup in backups:
  149. last_epoch = int(backup.split('__')[1].replace('.h5', ''))
  150. if last_epoch > max_last_epoch and last_epoch < p_epochs:
  151. max_last_epoch = last_epoch
  152. last_model_backup = backup
  153. if last_model_backup is None:
  154. print("Epochs asked is already computer. Noee")
  155. sys.exit(1)
  156. initial_epoch = max_last_epoch
  157. print("-------------------------------------------------")
  158. print("Previous backup model found", last_model_backup, "with already", initial_epoch, " epoch(s) done...")
  159. print("Resuming from epoch", str(initial_epoch + 1))
  160. print("-------------------------------------------------")
  161. # load weights
  162. weights_filepath = os.path.join(model_backup_folder, last_model_backup)
  163. print(n_chanels)
  164. model = models.get_model(n_chanels, input_shape, p_tl, weights_filepath)
  165. model.summary()
  166. # prepare train and validation dataset
  167. X_train, X_val, y_train, y_val = train_test_split(x_data_train, y_dataset_train, test_size=p_val_size, shuffle=False)
  168. y_train = to_categorical(y_train)
  169. y_val = to_categorical(y_val)
  170. y_test = to_categorical(y_dataset_test)
  171. # validation split parameter will use the last `%` data, so here, data will really validate our model
  172. model.fit(X_train, y_train, validation_data=(X_val, y_val), initial_epoch=initial_epoch, epochs=p_epochs, batch_size=p_batch_size, callbacks=callbacks_list)
  173. score = model.evaluate(X_val, y_val, batch_size=p_batch_size)
  174. print("Accuracy score on val dataset ", score)
  175. if not os.path.exists(cfg.output_models):
  176. os.makedirs(cfg.output_models)
  177. # save the model into HDF5 file
  178. model_output_path = os.path.join(cfg.output_models, p_output + '.h5')
  179. model.save(model_output_path)
  180. # Get results obtained from model
  181. y_train_prediction = model.predict(X_train)
  182. y_val_prediction = model.predict(X_val)
  183. y_test_prediction = model.predict(x_dataset_test)
  184. # y_train_prediction = [1 if x > 0.5 else 0 for x in y_train_prediction]
  185. # y_val_prediction = [1 if x > 0.5 else 0 for x in y_val_prediction]
  186. y_train_prediction = np.argmax(y_train_prediction, axis=1)
  187. y_val_prediction = np.argmax(y_val_prediction, axis=1)
  188. acc_train_score = accuracy_score(y_train, y_train_prediction)
  189. acc_val_score = accuracy_score(y_val, y_val_prediction)
  190. acc_test_score = accuracy_score(y_test, y_test_prediction)
  191. roc_train_score = roc_auc_score(y_train, y_train_prediction)
  192. roc_val_score = roc_auc_score(y_val, y_val_prediction)
  193. roc_test_score = roc_auc_score(y_test, y_val_prediction)
  194. # save model performance
  195. if not os.path.exists(cfg.output_results_folder):
  196. os.makedirs(cfg.output_results_folder)
  197. perf_file_path = os.path.join(cfg.output_results_folder, cfg.csv_model_comparisons_filename)
  198. # write header if necessary
  199. if not os.path.exists(perf_file_path):
  200. with open(perf_file_path, 'w') as f:
  201. f.write('name;train_acc;val_acc;test_acc;train_auc;val_auc;test_auc;\n')
  202. # add information into file
  203. with open(perf_file_path, 'a') as f:
  204. line = p_output + ';' + str(acc_train_score) + ';' + str(acc_val_score) + ';' \
  205. + str(acc_test_score) + ';' + str(roc_train_score) + ';' \
  206. + str(roc_val_score) + ';' + str(roc_test_score) + '\n'
  207. f.write(line)
  208. print("You can now run your model with your own `test` dataset")
  209. if __name__== "__main__":
  210. main()