6

I have a RGB image of shape (256,256,3) and I have a weight mask of shape (256,256). How do I perform the element-wise multiplication between them with Keras? (all channels share the same mask)

9

You need a Reshape so both tensors have the same number of dimensions, and a Multiply layer

mask = Reshape((256,256,1))(mask) 
out = Multiply()([image,mask])

If you have variable shapes, you can use a single Lambda layer like this:

import keras.backend as K 

def multiply(x):
    image,mask = x
    mask = K.expand_dims(mask, axis=-1) #could be K.stack([mask]*3, axis=-1) too 
    return mask*image

out = Lambda(multiply)([image,mask])
  • 1
    I don't think there is a need for reshape. It would be broadcasted, right? – today Dec 19 '18 at 11:04
  • 1
    Sometimes it is, I'm not really sure, so I go for safety :p – Daniel Möller Dec 19 '18 at 11:04
  • Was also typing an answer, you guys are so fast :) – sdcbr Dec 19 '18 at 11:06
  • It will be broadcasted, I think. And it is not sometimes. Broadcasting has rules. Anyways, in this case safety might have a price which is less performance :p – today Dec 19 '18 at 11:08
  • Probably... but isn't broadcasting itself a performance-taking operation? – Daniel Möller Dec 19 '18 at 11:11
3

As an alternative you can do this using a Lambda layer (as in @DanielMöller's answer you need to add a third axis to the mask):

from keras import backend as K

out = Lambda(lambda x: x[0] * K.expand_dims(x[1], axis=-1))([image, mask])

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