In a Keras model with the Functional API I need to call fit_generator to train on augmented images data using an ImageDataGenerator. The problem is my model has two outputs: the mask I'm trying to predict and a binary value I obviously only want to augment the input and the mask output and not the binary value. How can I achieve this?
The example below might be selfexplanatory! The 'dummy' model takes 1 input (image) and it outputs 2 values. The model computes the MSE for each output.
x = Convolution2D(8, 5, 5, subsample=(1, 1))(image_input)
x = Activation('relu')(x)
x = Flatten()(x)
x = Dense(50, W_regularizer=l2(0.0001))(x)
x = Activation('relu')(x)
output1 = Dense(1, activation='linear', name='output1')(x)
output2 = Dense(1, activation='linear', name='output2')(x)
model = Model(input=image_input, output=[output1, output2])
model.compile(optimizer='adam', loss={'output1': 'mean_squared_error', 'output2': 'mean_squared_error'})
The function below generates batches to feed the model during training. It takes the training data x
and the label y
where y=[y1, y2]
batch_generator(x, y, batch_size, is_train):
sample_idx = 0
while True:
X = np.zeros((batch_size, input_height, input_width, n_channels), dtype='float32')
y1 = np.zeros((batch_size, mask_height, mask_width), dtype='float32')
y2 = np.zeros((batch_size, 1), dtype='float32')
# fill up the batch
for row in range(batch_sz):
image = x[sample_idx]
mask = y[0][sample_idx]
binary_value = y[1][sample_idx]
# transform/preprocess image
image = cv2.resize(image, (input_width, input_height))
if is_train:
image, mask = my_data_augmentation_function(image, mask)
X_batch[row, ;, :, :] = image
y1_batch[row, :, :] = mask
y2_batch[row, 0] = binary_value
sample_idx += 1
# Normalize inputs
X_batch = X_batch/255.
yield(X_batch, {'output1': y1_batch, 'output2': y2_batch} ))
Finally, we call the fit_generator()
model.fit_generator(batch_generator(X_train, y_train, batch_size, is_train=1))

what goes in ....transform images ....generate batch batch of size: batch_size . in your answer? – hearse May 31 '19 at 1:26

1

@JMarc how can you merge this generator with the
ImageDataGenerator
so that it does all the preprocessing on the Rank4 image matrix but the out from this is fed into anew_generator()
to map value of image to they=[y1,y2]
to use for training and validtion? – Deshwal Jan 7 at 3:05
If you have separated both mask and binary value you can try something like this:
generator = ImageDataGenerator(rotation_range=5.,
width_shift_range=0.1,
height_shift_range=0.1,
horizontal_flip=True,
vertical_flip=True)
def generate_data_generator(generator, X, Y1, Y2):
genX = generator.flow(X, seed=7)
genY1 = generator.flow(Y1, seed=7)
while True:
Xi = genX.next()
Yi1 = genY1.next()
Yi2 = function(Y2)
yield Xi, [Yi1, Yi2]
So, you use the same generator for both input and mask with the same seed to define the same operation. You may change the binary value or not depending on your needs (Y2). Then, you call the fit_generator():
model.fit_generator(generate_data_generator(generator, X, Y1, Y2),
epochs=epochs)


@Jose I have a similar problem and I have
Y1=df[:,'label_1'].values
andy2=df[:,label_2'].values
. Can I use your generator in that case? Plus my images are in the form of Rank4 matrices. ie a matrix of shape(rows,weight,height,1)
for grayscale images and use the minflow()
method. – Deshwal Jan 7 at 2:45
The best way to achieve this seems to be to create a new generator class expanding the one provided by Keras that parses the data augmenting only the images and yielding all the outputs.

can you pleae share a code with the docstring? I have the code but I am unable to understand the workings. – Deshwal Jan 7 at 3:09
