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I use two convolutional layers tf.layers.conv2d which share a kernel. The layers differ only by the kernel constraint as follows: 1. layer does not use any constraint, 2. layer uses tf.abs as the constraint. The constraint is not registered in the graph. Additionaly an output of the 2. convolution conv2 should have only positive values since it is convolved with tf.abs(kernel), which is not the case.

code:

conv1 = tf.layers.conv2d(inputs=input_im,
                           filters=num_filters, 
                           kernel_size=filter_size,
                           use_bias=False,
                           kernel_initializer=kernel_initializer,
                           kernel_constraint=None,
                           trainable=True,
                           name=name,
                           reuse=None)

conv2 = tf.layers.conv2d(inputs=input_im,
                           filters=num_filters, 
                           kernel_size=filter_size,
                           use_bias=False,
                           kernel_initializer=kernel_initializer,
                           kernel_constraint=tf.abs,
                           trainable=True,
                           name=name,
                           reuse=True)

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