if input_shape[2] == 1:
    grayscale = True
images_path = '../datasets/imdb_crop/'
log_file_path = '../trained_models/gender_models/gender_training.log'
trained_models_path = '../trained_models/gender_models/gender_mini_XCEPTION'

# data loader
data_loader = DataManager(dataset_name)
ground_truth_data = data_loader.get_data()
train_keys, val_keys = split_imdb_data(ground_truth_data, validation_split)
print('Number of training samples:', len(train_keys))
print('Number of validation samples:', len(val_keys))
image_generator = ImageGenerator(ground_truth_data, batch_size,
                                 input_shape[:2],
                                 train_keys, val_keys, None,
                                 path_prefix=images_path,
                                 vertical_flip_probability=0,
                                 grayscale=grayscale,
                                 do_random_crop=do_random_crop)

# model parameters/compilation
model = mini_XCEPTION(input_shape, num_classes)
model.compile(optimizer='adam',
              loss='categorical_crossentropy',
              metrics=['accuracy'])
model.summary()

# model callbacks
early_stop = EarlyStopping('val_loss', patience=patience)
reduce_lr = ReduceLROnPlateau('val_loss', factor=0.1,
                              patience=int(patience/2), verbose=1)
def main():
    # parameters
    param = args()
    batch_size = param.batch_size
    num_epochs = param.num_epochs
    validation_split = param.val_ratio
    do_random_crop = False
    patience = param.patience
    dataset_name = param.dataset_name
    grayscale = param.graymode
    mode = param.mode
    anno_file = param.anno_file
    if mode == "gender":
        num_classes = 2
    elif mode == "age":
        num_classes = 101
    elif mode == "emotion":
        num_classes = 7
    else:
        num_classes = 5
    if grayscale:
        input_shape = (64, 64, 1)
    else:
        input_shape = (64, 64, 3)
    images_path = param.img_dir
    log_file_path = '../trained_models/%s_models/%s_model/raining.log' % (
        mode, dataset_name)
    trained_models_path = '../trained_models/%s_models/%s_model/%s_mini_XCEPTION' % (
        mode, dataset_name, mode)
    pretrained_model = param.load_model
    print("-------begin to load data------", input_shape)
    # data loader
    data_loader = DataManager(dataset_name, anno_file)
    ground_truth_data = data_loader.get_data()
    train_keys, val_keys = split_imdb_data(ground_truth_data, validation_split)
    print('Number of training samples:', len(train_keys))
    print('Number of validation samples:', len(val_keys))
    train_image_generator = ImageGenerator(ground_truth_data,
                                           batch_size,
                                           input_shape[:2],
                                           train_keys,
                                           path_prefix=images_path,
                                           grayscale=grayscale)
    val_image_generator = ImageGenerator(ground_truth_data,
                                         batch_size,
                                         input_shape[:2],
                                         val_keys,
                                         path_prefix=images_path,
                                         grayscale=grayscale)

    # model parameters/compilation
    if pretrained_model != None:
        model = load_model(pretrained_model, compile=False)
        print("pretrained model:", model.input_shape)
    else:
        model = mini_XCEPTION(input_shape, num_classes)
    model.compile(optimizer='adam',
                  loss='categorical_crossentropy',
                  metrics=['accuracy'])
    model.summary()

    # model callbacks
    early_stop = EarlyStopping('val_acc', patience=patience)
    reduce_lr = ReduceLROnPlateau('val_acc',
                                  factor=0.1,
                                  patience=int(patience),
                                  verbose=1,
                                  min_lr=0.0000001)
    csv_logger = CSVLogger(log_file_path, append=False)
    model_names = trained_models_path + '.{epoch:02d}-{val_acc:.2f}.hdf5'
    model_checkpoint = ModelCheckpoint(model_names,
                                       monitor='val_acc',
                                       verbose=1,
                                       save_best_only=True,
                                       save_weights_only=False)
    callbacks = [model_checkpoint, csv_logger, early_stop, reduce_lr]

    # training model
    print("-----begin to train model----")
    model.fit_generator(
        train_image_generator.flow(),
        steps_per_epoch=int(np.ceil(len(train_keys) / batch_size)),
        epochs=num_epochs,
        verbose=1,
        callbacks=callbacks,
        validation_data=val_image_generator.flow(),
        validation_steps=int(np.ceil(len(val_keys) / batch_size)))
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    grayscale = True
images_path = '../datasets/imdb_crop/'
log_file_path = '../trained_models/gender_models/gender_training.log'
trained_models_path = '../trained_models/gender_models/gender_mini_XCEPTION'

# data loader
data_loader = DataManager(dataset_name)
ground_truth_data = data_loader.get_data()
train_keys, val_keys = split_imdb_data(ground_truth_data, validation_split)
print('Number of training samples:', len(train_keys))
print('Number of validation samples:', len(val_keys))
image_generator = ImageGenerator(ground_truth_data,
                                 batch_size,
                                 input_shape[:2],
                                 train_keys,
                                 val_keys,
                                 None,
                                 path_prefix=images_path,
                                 vertical_flip_probability=0,
                                 grayscale=grayscale,
                                 do_random_crop=do_random_crop)

# model parameters/compilation
model = mini_XCEPTION(input_shape, num_classes)
model.compile(optimizer='adam',
              loss='categorical_crossentropy',
              metrics=['accuracy'])
model.summary()

# model callbacks
early_stop = EarlyStopping('val_loss', patience=patience)
reduce_lr = ReduceLROnPlateau('val_loss',
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image_array = load_image(image_path, input_shape)
plot_box_data(unregressed_positive_boxes, image_array,
              arg_to_class, colors=colors)
plt.imshow(image_array)
plt.show()


# data augmentations
# ------------------------------------------------------------------
data_manager = DataManager(dataset_name, 'train')
train_data = data_manager.load_data()
arg_to_class = data_manager.arg_to_class
colors = get_colors(25)
val_data = DataManager(dataset_name, 'val').load_data()
# image_prefix = dataset_manager.images_path
generator = ImageGenerator(train_data, val_data, prior_boxes,
                           batch_size=21)
# , path_prefix=image_prefix)
generated_data = next(generator.flow('train'))
transformed_image_batch = generated_data[0]['input_1']
generated_output = generated_data[1]['predictions']
for batch_arg, transformed_image in enumerate(transformed_image_batch):
    positive_mask = generated_output[batch_arg, :, 4] != 1
    regressed_boxes = generated_output[batch_arg]
    unregressed_boxes = unregress_boxes(regressed_boxes, prior_boxes)
    unregressed_positive_boxes = unregressed_boxes[positive_mask]
    plot_box_data(unregressed_positive_boxes, transformed_image,
                  arg_to_class, colors=colors)
    plt.imshow(transformed_image.astype('uint8'))
    plt.show()