According to MobileNet Ver2. API provided by Keras, we observe output dimension of width and height of ZeroPadding2D increases only by 1 as the picture shown below. enter image description here

However, zero-padding increases the output dimension by 2 times of zero-padding integer for CNN calculation mechanism. The experiment shown below by ZeroPadding2D() also proves the idea. Thus, how can dimension output of ZeroPadding2D() by MobileNetV2 API increase only by 1 since padding=0.5 is not legal for setting, too?

x_in = Input(input_shape)
x = ZeroPadding2D(padding=(1,0), data_format='channels_last')(x_in)
x = Flatten()(x)
x = Dense(4, activation='softmax')(x)
test_model = Model(inputs=x_in, outputs=x)

enter image description here


1 Answer 1


In ZeroPadding2D, padding can be int, or tuple of 2 ints, or tuple of 2 tuples of 2 ints. According to the docs:

  • If int: the same symmetric padding is applied to height and width.
  • If tuple of 2 ints: interpreted as two different symmetric padding values for height and width: (symmetric_height_pad, symmetric_width_pad).
  • If tuple of 2 tuples of 2 ints: interpreted as ((top_pad, bottom_pad), (left_pad, right_pad)).

MobileNet uses a padding of ((0, 1), (0, 1)) (see the source code). As a result, the width and height are increased by 1 (top_pad=0, bottom_pad=1, left_pad=0, right_pad=1).

  • Hello Soroush, thanks so much for the reply! I learn from it!
    – Hiro
    Apr 12, 2019 at 2:51

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