2017-02-24 102 views
3

我有一個包含圖像子文件夾(根據標籤)的目錄。我想在Keras中使用ImageDataGenerator時將這些數據分解爲火車和測試集。儘管keras中的model.fit()具有用於指定拆分的參數validation_split,但我無法在model.fit_generator()中找到相同的結果。怎麼做 ?使用ImageDataGenerator時Keras分離火車測試集

train_datagen = ImageDataGenerator(rescale=1./255, 
    shear_range=0.2, 
    zoom_range=0.2, 
    horizontal_flip=True) 

train_generator = train_datagen.flow_from_directory(
    train_data_dir, 
    target_size=(img_width, img_height), 
    batch_size=32, 
    class_mode='binary') 

model.fit_generator(
    train_generator, 
    samples_per_epoch=nb_train_samples, 
    nb_epoch=nb_epoch, 
    validation_data=??, 
    nb_val_samples=nb_validation_samples) 

我沒有進行驗證數據單獨的目錄,需要

+0

你將不得不重新整理自己的目錄,我相信。例如,將您的數據放入您的classes_directories內部的sub_subdirectories「train」和「test」中。 –

+0

這就是問題所在,我不想創建單獨的目錄。在keras中有沒有辦法在運行時處理/分割它,就像它與fit()函數 – Nitin

+0

不一樣。 Keras無法處理存儲數據集的各種可能方式。你必須適應它。函數編程是輸入 - >黑盒 - >輸出。而黑匣子的界面不能100%靈活。爲什麼你不能創建單獨的目錄btw? –

回答

4

我有這方面的將其從訓練數據分割。一種方法是散列文件名並進行變體分配。

例子:

# -*- coding: utf-8 -*- 
"""Train model using transfer learning.""" 
import os 
import re 
import glob 
import hashlib 
import argparse 
import warnings 

import six 
import numpy as np 
import tensorflow as tf 
from tensorflow.python.platform import gfile 
from keras.models import Model 
from keras import backend as K 
from keras.optimizers import SGD 
from keras.layers import Dense, GlobalAveragePooling2D, Input 
from keras.applications.inception_v3 import InceptionV3 
from keras.preprocessing.image import (ImageDataGenerator, Iterator, 
             array_to_img, img_to_array, load_img) 
from keras.callbacks import ModelCheckpoint, TensorBoard, EarlyStopping 

RANDOM_SEED = 0 
MAX_NUM_IMAGES_PER_CLASS = 2 ** 27 - 1 # ~134M 
VALID_IMAGE_FORMATS = frozenset(['jpg', 'jpeg', 'JPG', 'JPEG']) 
# we chose to train the top 2 inception blocks 
BATCH_SIZE = 100 
TRAINABLE_LAYERS = 172 
INCEPTIONV3_BASE_LAYERS = len(InceptionV3(weights=None, include_top=False).layers) 

STEPS_PER_EPOCH = 625 
VALIDATION_STEPS = 100 
MODEL_INPUT_WIDTH = 299 
MODEL_INPUT_HEIGHT = 299 
MODEL_INPUT_DEPTH = 3 
FC_LAYER_SIZE = 1024 

# Helper: Save the model. 
checkpointer = ModelCheckpoint(
    filepath='./output/checkpoints/inception.{epoch:03d}-{val_loss:.2f}.hdf5', 
    verbose=1, 
    save_best_only=True) 

# Helper: Stop when we stop learning. 
early_stopper = EarlyStopping(patience=10) 

# Helper: TensorBoard 
tensorboard = TensorBoard(log_dir='./output/') 


def as_bytes(bytes_or_text, encoding='utf-8'): 
    """Converts bytes or unicode to `bytes`, using utf-8 encoding for text. 

    # Arguments 
     bytes_or_text: A `bytes`, `str`, or `unicode` object. 
     encoding: A string indicating the charset for encoding unicode. 

    # Returns 
     A `bytes` object. 

    # Raises 
     TypeError: If `bytes_or_text` is not a binary or unicode string. 
    """ 
    if isinstance(bytes_or_text, six.text_type): 
     return bytes_or_text.encode(encoding) 
    elif isinstance(bytes_or_text, bytes): 
     return bytes_or_text 
    else: 
     raise TypeError('Expected binary or unicode string, got %r' % 
         (bytes_or_text,)) 


class CustomImageDataGenerator(ImageDataGenerator): 
    def flow_from_image_lists(self, image_lists, 
           category, image_dir, 
           target_size=(256, 256), color_mode='rgb', 
           class_mode='categorical', 
           batch_size=32, shuffle=True, seed=None, 
           save_to_dir=None, 
           save_prefix='', 
           save_format='jpeg'): 
     return ImageListIterator(
      image_lists, self, 
      category, image_dir, 
      target_size=target_size, color_mode=color_mode, 
      class_mode=class_mode, 
      data_format=self.data_format, 
      batch_size=batch_size, shuffle=shuffle, seed=seed, 
      save_to_dir=save_to_dir, 
      save_prefix=save_prefix, 
      save_format=save_format) 


class ImageListIterator(Iterator): 
    """Iterator capable of reading images from a directory on disk. 

    # Arguments 
     image_lists: Dictionary of training images for each label. 
     image_data_generator: Instance of `ImageDataGenerator` 
      to use for random transformations and normalization. 
     target_size: tuple of integers, dimensions to resize input images to. 
     color_mode: One of `"rgb"`, `"grayscale"`. Color mode to read images. 
     classes: Optional list of strings, names of sudirectories 
      containing images from each class (e.g. `["dogs", "cats"]`). 
      It will be computed automatically if not set. 
     class_mode: Mode for yielding the targets: 
      `"binary"`: binary targets (if there are only two classes), 
      `"categorical"`: categorical targets, 
      `"sparse"`: integer targets, 
      `None`: no targets get yielded (only input images are yielded). 
     batch_size: Integer, size of a batch. 
     shuffle: Boolean, whether to shuffle the data between epochs. 
     seed: Random seed for data shuffling. 
     data_format: String, one of `channels_first`, `channels_last`. 
     save_to_dir: Optional directory where to save the pictures 
      being yielded, in a viewable format. This is useful 
      for visualizing the random transformations being 
      applied, for debugging purposes. 
     save_prefix: String prefix to use for saving sample 
      images (if `save_to_dir` is set). 
     save_format: Format to use for saving sample images 
      (if `save_to_dir` is set). 
    """ 

    def __init__(self, image_lists, image_data_generator, 
       category, image_dir, 
       target_size=(256, 256), color_mode='rgb', 
       class_mode='categorical', 
       batch_size=32, shuffle=True, seed=None, 
       data_format=None, 
       save_to_dir=None, save_prefix='', save_format='jpeg'): 
     if data_format is None: 
      data_format = K.image_data_format() 

     classes = list(image_lists.keys()) 
     self.category = category 
     self.num_class = len(classes) 
     self.image_lists = image_lists 
     self.image_dir = image_dir 

     how_many_files = 0 
     for label_name in classes: 
      for _ in self.image_lists[label_name][category]: 
       how_many_files += 1 

     self.samples = how_many_files 
     self.class2id = dict(zip(classes, range(len(classes)))) 
     self.id2class = dict((v, k) for k, v in self.class2id.items()) 
     self.classes = np.zeros((self.samples,), dtype='int32') 

     self.image_data_generator = image_data_generator 
     self.target_size = tuple(target_size) 
     if color_mode not in {'rgb', 'grayscale'}: 
      raise ValueError('Invalid color mode:', color_mode, 
          '; expected "rgb" or "grayscale".') 
     self.color_mode = color_mode 
     self.data_format = data_format 
     if self.color_mode == 'rgb': 
      if self.data_format == 'channels_last': 
       self.image_shape = self.target_size + (3,) 
      else: 
       self.image_shape = (3,) + self.target_size 
     else: 
      if self.data_format == 'channels_last': 
       self.image_shape = self.target_size + (1,) 
      else: 
       self.image_shape = (1,) + self.target_size 

     if class_mode not in {'categorical', 'binary', 'sparse', None}: 
      raise ValueError('Invalid class_mode:', class_mode, 
          '; expected one of "categorical", ' 
          '"binary", "sparse", or None.') 
     self.class_mode = class_mode 
     self.save_to_dir = save_to_dir 
     self.save_prefix = save_prefix 
     self.save_format = save_format 

     i = 0 
     self.filenames = [] 
     for label_name in classes: 
      for j, _ in enumerate(self.image_lists[label_name][category]): 
       self.classes[i] = self.class2id[label_name] 
       img_path = get_image_path(self.image_lists, 
              label_name, 
              j, 
              self.image_dir, 
              self.category) 
       self.filenames.append(img_path) 
       i += 1 

     print("Found {} {} files".format(len(self.filenames), category)) 
     super(ImageListIterator, self).__init__(self.samples, batch_size, shuffle, 
               seed) 

    def next(self): 
     """For python 2.x. 

     # Returns 
      The next batch. 
     """ 
     with self.lock: 
      index_array, current_index, current_batch_size = next(
       self.index_generator) 
     # The transformation of images is not under thread lock 
     # so it can be done in parallel 
     batch_x = np.zeros((current_batch_size,) + self.image_shape, 
          dtype=K.floatx()) 
     grayscale = self.color_mode == 'grayscale' 
     # build batch of image data 
     for i, j in enumerate(index_array): 
      img = load_img(self.filenames[j], 
          grayscale=grayscale, 
          target_size=self.target_size) 
      x = img_to_array(img, data_format=self.data_format) 
      x = self.image_data_generator.random_transform(x) 
      x = self.image_data_generator.standardize(x) 
      batch_x[i] = x 
     # optionally save augmented images to disk for debugging purposes 
     if self.save_to_dir: 
      for i in range(current_batch_size): 
       img = array_to_img(batch_x[i], self.data_format, scale=True) 
       fname = '{prefix}_{index}_{hash}.{format}'.format(
        prefix=self.save_prefix, 
        index=current_index + i, 
        hash=np.random.randint(10000), 
        format=self.save_format) 
       img.save(os.path.join(self.save_to_dir, fname)) 
     # build batch of labels 
     if self.class_mode == 'sparse': 
      batch_y = self.classes[index_array] 
     elif self.class_mode == 'binary': 
      batch_y = self.classes[index_array].astype(K.floatx()) 
     elif self.class_mode == 'categorical': 
      batch_y = np.zeros((len(batch_x), self.num_class), 
           dtype=K.floatx()) 
      for i, label in enumerate(self.classes[index_array]): 
       batch_y[i, label] = 1. 
     else: 
      return batch_x 
     return batch_x, batch_y 


# https://github.com/tensorflow/tensorflow/blob/master/tensorflow/examples/image_retraining/retrain.py 
def create_image_lists(image_dir, validation_pct=10): 
    """Builds a list of training images from the file system. 

    Analyzes the sub folders in the image directory, splits them into stable 
    training, testing, and validation sets, and returns a data structure 
    describing the lists of images for each label and their paths. 

    # Arguments 
     image_dir: string path to a folder containing subfolders of images. 
     validation_pct: integer percentage of images reserved for validation. 

    # Returns 
     dictionary of label subfolder, with images split into training 
     and validation sets within each label. 
    """ 
    if not os.path.isdir(image_dir): 
     raise ValueError("Image directory {} not found.".format(image_dir)) 
    image_lists = {} 
    sub_dirs = [x[0] for x in os.walk(image_dir)] 
    sub_dirs_without_root = sub_dirs[1:] # first element is root directory 
    for sub_dir in sub_dirs_without_root: 
     file_list = [] 
     dir_name = os.path.basename(sub_dir) 
     if dir_name == image_dir: 
      continue 
     print("Looking for images in '{}'".format(dir_name)) 
     for extension in VALID_IMAGE_FORMATS: 
      file_glob = os.path.join(image_dir, dir_name, '*.' + extension) 
      file_list.extend(glob.glob(file_glob)) 
     if not file_list: 
      warnings.warn('No files found') 
      continue 
     if len(file_list) < 20: 
      warnings.warn('Folder has less than 20 images, which may cause ' 
          'issues.') 
     elif len(file_list) > MAX_NUM_IMAGES_PER_CLASS: 
      warnings.warn('WARNING: Folder {} has more than {} images. Some ' 
          'images will never be selected.' 
          .format(dir_name, MAX_NUM_IMAGES_PER_CLASS)) 
     label_name = re.sub(r'[^a-z0-9]+', ' ', dir_name.lower()) 
     training_images = [] 
     validation_images = [] 
     for file_name in file_list: 
      base_name = os.path.basename(file_name) 
      # Get the hash of the file name and perform variant assignment. 
      hash_name = hashlib.sha1(as_bytes(base_name)).hexdigest() 
      hash_pct = ((int(hash_name, 16) % (MAX_NUM_IMAGES_PER_CLASS + 1)) * 
         (100.0/MAX_NUM_IMAGES_PER_CLASS)) 
      if hash_pct < validation_pct: 
       validation_images.append(base_name) 
      else: 
       training_images.append(base_name) 
     image_lists[label_name] = { 
      'dir': dir_name, 
      'training': training_images, 
      'validation': validation_images, 
     } 
    return image_lists 


# https://github.com/tensorflow/tensorflow/blob/master/tensorflow/examples/image_retraining/retrain.py 
def get_image_path(image_lists, label_name, index, image_dir, category): 
    """"Returns a path to an image for a label at the given index. 

    # Arguments 
     image_lists: Dictionary of training images for each label. 
     label_name: Label string we want to get an image for. 
     index: Int offset of the image we want. This will be moduloed by the 
     available number of images for the label, so it can be arbitrarily large. 
     image_dir: Root folder string of the subfolders containing the training 
     images. 
     category: Name string of set to pull images from - training, testing, or 
     validation. 

    # Returns 
     File system path string to an image that meets the requested parameters. 
    """ 
    if label_name not in image_lists: 
     raise ValueError('Label does not exist ', label_name) 
    label_lists = image_lists[label_name] 
    if category not in label_lists: 
     raise ValueError('Category does not exist ', category) 
    category_list = label_lists[category] 
    if not category_list: 
     raise ValueError('Label %s has no images in the category %s.', 
         label_name, category) 
    mod_index = index % len(category_list) 
    base_name = category_list[mod_index] 
    sub_dir = label_lists['dir'] 
    full_path = os.path.join(image_dir, sub_dir, base_name) 
    return full_path 


def get_generators(image_lists, image_dir): 
    train_datagen = CustomImageDataGenerator(rescale=1./255, 
              horizontal_flip=True) 

    test_datagen = CustomImageDataGenerator(rescale=1./255) 

    train_generator = train_datagen.flow_from_image_lists(
     image_lists=image_lists, 
     category='training', 
     image_dir=image_dir, 
     target_size=(MODEL_INPUT_HEIGHT, MODEL_INPUT_WIDTH), 
     batch_size=BATCH_SIZE, 
     class_mode='categorical', 
     seed=RANDOM_SEED) 

    validation_generator = test_datagen.flow_from_image_lists(
     image_lists=image_lists, 
     category='validation', 
     image_dir=image_dir, 
     target_size=(MODEL_INPUT_HEIGHT, MODEL_INPUT_WIDTH), 
     batch_size=BATCH_SIZE, 
     class_mode='categorical', 
     seed=RANDOM_SEED) 

    return train_generator, validation_generator 


def get_model(num_classes, weights='imagenet'): 
    # create the base pre-trained model 
    # , input_tensor=input_tensor 
    base_model = InceptionV3(weights=weights, include_top=False) 

    # add a global spatial average pooling layer 
    x = base_model.output 
    x = GlobalAveragePooling2D()(x) 
    # let's add a fully-connected layer 
    x = Dense(FC_LAYER_SIZE, activation='relu')(x) 
    # and a logistic layer -- let's say we have 2 classes 
    predictions = Dense(num_classes, activation='softmax')(x) 

    # this is the model we will train 
    model = Model(inputs=[base_model.input], outputs=[predictions]) 
    return model 


def get_top_layer_model(model): 
    """Used to train just the top layers of the model.""" 
    # first: train only the top layers (which were randomly initialized) 
    # i.e. freeze all convolutional InceptionV3 layers 
    for layer in model.layers[:INCEPTIONV3_BASE_LAYERS]: 
     layer.trainable = False 
    for layer in model.layers[INCEPTIONV3_BASE_LAYERS:]: 
     layer.trainable = True 

    # compile the model (should be done after setting layers to non-trainable) 
    model.compile(optimizer='rmsprop', loss='categorical_crossentropy', 
        metrics=['accuracy']) 

    return model 


def get_mid_layer_model(model): 
    """After we fine-tune the dense layers, train deeper.""" 
    # freeze the first TRAINABLE_LAYER_INDEX layers and unfreeze the rest 
    for layer in model.layers[:TRAINABLE_LAYERS]: 
     layer.trainable = False 
    for layer in model.layers[TRAINABLE_LAYERS:]: 
     layer.trainable = True 

    # we need to recompile the model for these modifications to take effect 
    # we use SGD with a low learning rate 
    model.compile(optimizer=SGD(lr=0.0001, momentum=0.9), 
        loss='categorical_crossentropy', 
        metrics=['accuracy']) 

    return model 


def train_model(model, epochs, generators, callbacks=None): 
    train_generator, validation_generator = generators 
    model.fit_generator(
     train_generator, 
     steps_per_epoch=STEPS_PER_EPOCH, 
     validation_data=validation_generator, 
     validation_steps=VALIDATION_STEPS, 
     epochs=epochs, 
     callbacks=callbacks) 
    return model 


def main(image_dir, validation_pct): 
    sub_dirs = [x[0] for x in gfile.Walk(image_dir)] 
    num_classes = len(sub_dirs) - 1 
    print("Number of classes found: {}".format(num_classes)) 

    model = get_model(num_classes) 

    print("Using validation percent of %{}".format(validation_pct)) 
    image_lists = create_image_lists(image_dir, validation_pct) 

    generators = get_generators(image_lists, image_dir) 

    # Get and train the top layers. 
    model = get_top_layer_model(model) 
    model = train_model(model, epochs=10, generators=generators) 

    # Get and train the mid layers. 
    model = get_mid_layer_model(model) 
    _ = train_model(model, epochs=100, generators=generators, 
        callbacks=[checkpointer, early_stopper, tensorboard]) 

    # save model 
    model.save('./output/model.hdf5', overwrite=True) 


if __name__ == '__main__': 
    parser = argparse.ArgumentParser() 
    parser.add_argument('--image-dir', required=True, help='data directory') 
    parser.add_argument('--validation-pct', default=10, help='validation percentage') 
    args = parser.parse_args() 

    os.makedirs('./output/checkpoints/', exist_ok=True) 

    main(**vars(args))