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Keras Wide Residual Networks CIFAR-10
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from __future__ import print_function | |
from keras.datasets import cifar10 | |
from keras.layers import merge, Input | |
from keras.layers.convolutional import Convolution2D, ZeroPadding2D, AveragePooling2D | |
from keras.layers.core import Dense, Activation, Flatten, Dropout | |
from keras.layers.normalization import BatchNormalization | |
from keras.models import Model | |
from keras.preprocessing.image import ImageDataGenerator | |
from keras.utils import np_utils | |
batch_size = 128 | |
nb_classes = 10 | |
nb_epoch = 200 | |
data_augmentation = False | |
n = 4 # depth = 6*n + 4 | |
k = 4 # widen factor | |
# the CIFAR10 images are 32x32 RGB with 10 labels | |
img_rows, img_cols = 32, 32 | |
img_channels = 3 | |
def bottleneck(incoming, count, nb_in_filters, nb_out_filters, dropout=None, subsample=(2, 2)): | |
outgoing = wide_basic(incoming, nb_in_filters, nb_out_filters, dropout, subsample) | |
for i in range(1, count): | |
outgoing = wide_basic(outgoing, nb_out_filters, nb_out_filters, dropout, subsample=(1, 1)) | |
return outgoing | |
def wide_basic(incoming, nb_in_filters, nb_out_filters, dropout=None, subsample=(2, 2)): | |
nb_bottleneck_filter = nb_out_filters | |
if nb_in_filters == nb_out_filters: | |
# conv3x3 | |
y = BatchNormalization(mode=0, axis=1)(incoming) | |
y = Activation('relu')(y) | |
y = ZeroPadding2D((1, 1))(y) | |
y = Convolution2D(nb_bottleneck_filter, nb_row=3, nb_col=3, | |
subsample=subsample, init='he_normal', border_mode='valid')(y) | |
# conv3x3 | |
y = BatchNormalization(mode=0, axis=1)(y) | |
y = Activation('relu')(y) | |
if dropout is not None: | |
y = Dropout(dropout)(y) | |
y = ZeroPadding2D((1, 1))(y) | |
y = Convolution2D(nb_bottleneck_filter, nb_row=3, nb_col=3, | |
subsample=(1, 1), init='he_normal', border_mode='valid')(y) | |
return merge([incoming, y], mode='sum') | |
else: # Residual Units for increasing dimensions | |
# common BN, ReLU | |
shortcut = BatchNormalization(mode=0, axis=1)(incoming) | |
shortcut = Activation('relu')(shortcut) | |
# conv3x3 | |
y = ZeroPadding2D((1, 1))(shortcut) | |
y = Convolution2D(nb_bottleneck_filter, nb_row=3, nb_col=3, | |
subsample=subsample, init='he_normal', border_mode='valid')(y) | |
# conv3x3 | |
y = BatchNormalization(mode=0, axis=1)(y) | |
y = Activation('relu')(y) | |
if dropout is not None: | |
y = Dropout(dropout)(y) | |
y = ZeroPadding2D((1, 1))(y) | |
y = Convolution2D(nb_out_filters, nb_row=3, nb_col=3, | |
subsample=(1, 1), init='he_normal', border_mode='valid')(y) | |
# shortcut | |
shortcut = Convolution2D(nb_out_filters, nb_row=1, nb_col=1, | |
subsample=subsample, init='he_normal', border_mode='same')(shortcut) | |
return merge([shortcut, y], mode='sum') | |
# the data, shuffled and split between train and test sets | |
(X_train, y_train), (X_test, y_test) = cifar10.load_data() | |
print('X_train shape:', X_train.shape) | |
print(X_train.shape[0], 'train samples') | |
print(X_test.shape[0], 'test samples') | |
# convert class vectors to binary class matrices | |
Y_train = np_utils.to_categorical(y_train, nb_classes) | |
Y_test = np_utils.to_categorical(y_test, nb_classes) | |
img_input = Input(shape=(img_channels, img_rows, img_cols)) | |
# one conv at the beginning (spatial size: 32x32) | |
x = ZeroPadding2D((1, 1))(img_input) | |
x = Convolution2D(16, nb_row=3, nb_col=3)(x) | |
# Stage 1 (spatial size: 32x32) | |
x = bottleneck(x, n, 16, 16 * k, dropout=0.3, subsample=(1, 1)) | |
# Stage 2 (spatial size: 16x16) | |
x = bottleneck(x, n, 16 * k, 32 * k, dropout=0.3, subsample=(2, 2)) | |
# Stage 3 (spatial size: 8x8) | |
x = bottleneck(x, n, 32 * k, 64 * k, dropout=0.3, subsample=(2, 2)) | |
x = BatchNormalization(mode=0, axis=1)(x) | |
x = Activation('relu')(x) | |
x = AveragePooling2D((8, 8), strides=(1, 1))(x) | |
x = Flatten()(x) | |
preds = Dense(nb_classes, activation='softmax')(x) | |
model = Model(input=img_input, output=preds) | |
model.compile(optimizer='adam', loss='categorical_crossentropy', | |
metrics=['accuracy']) | |
X_train = X_train.astype('float32') | |
X_test = X_test.astype('float32') | |
X_train /= 255 | |
X_test /= 255 | |
if not data_augmentation: | |
print('Not using data augmentation.') | |
model.fit(X_train, Y_train, | |
batch_size=batch_size, | |
nb_epoch=nb_epoch, | |
validation_data=(X_test, Y_test), | |
shuffle=True) | |
else: | |
print('Using real-time data augmentation.') | |
# this will do preprocessing and realtime data augmentation | |
datagen = ImageDataGenerator( | |
featurewise_center=False, # set input mean to 0 over the dataset | |
samplewise_center=False, # set each sample mean to 0 | |
featurewise_std_normalization=False, # divide inputs by std of the dataset | |
samplewise_std_normalization=False, # divide each input by its std | |
zca_whitening=False, # apply ZCA whitening | |
rotation_range=0, # randomly rotate images in the range (degrees, 0 to 180) | |
width_shift_range=0.1, # randomly shift images horizontally (fraction of total width) | |
height_shift_range=0.1, # randomly shift images vertically (fraction of total height) | |
horizontal_flip=True, # randomly flip images | |
vertical_flip=False) # randomly flip images | |
# compute quantities required for featurewise normalization | |
# (std, mean, and principal components if ZCA whitening is applied) | |
datagen.fit(X_train) | |
# fit the model on the batches generated by datagen.flow() | |
model.fit_generator(datagen.flow(X_train, Y_train, | |
batch_size=batch_size), | |
samples_per_epoch=X_train.shape[0], | |
nb_epoch=nb_epoch, | |
validation_data=(X_test, Y_test)) |
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Do you have a trained version of that online? Could you put that in a repository? (I would like to compare some models for a publication.)