I am using this script from the Keras-Team to visualize conv filters of the VGG16 model:


For most filters, this works. However, if I try to generate the image for filter 11 in layer "block5_conv1", the algorithm gives me no output, because "some filters get stuck to 0" (line 156 ff):

# some filters get stuck to 0, we can skip them
if loss_value <= K.epsilon():
    return None

This is the only thing I changed in the script (last line):

visualize_layer(vgg, "block5_conv1", output_dim=(112, 112), filter_range=(11, 12))

Running exactly the same code again a couple of times finally resulted in an image (I guess because the randomly generated starting image changed):

Filter 11 in block5_conv1

However, for many other filters, e.g. block5_conv3, filter 1, I had no luck:

visualize_layer(vgg, block5_conv3, output_dim=(112, 112), filter_range=(1, 2))

I also changed the output_dim, step, epochs, upscaling_steps, upscaling_factor but wasn't able to produce an image.

So my question is: Is there a way, to generate a visualization of each filter reliably (based on the script provided)?

  • I'd say this is a common issue with the neural networks - it is related to either too small amount of data, wrong weights initialization or lack of proper regularization – Colonder Jan 16 at 9:46
  • but all these points shouldn't be an issue with the VGG16 which was trained on the imagenet data (huge data set, correct weight init, proper regularization) – ala Jan 16 at 11:28
  • 1
    To me this sounds more like a research problem/question than a programming one. – Matias Valdenegro Jan 17 at 23:45
  • My first attempt was to recreate the model without 'relu' because of it's zero zones. Curiously, other activations produce even more zero filters.... – Daniel Möller Jan 20 at 13:48
  • Curiosity: I never understood the point of getting gradients and losses for visualizing filters.... Not a complain, just an honest question: what is this code supposed to show? – Daniel Möller Jan 20 at 13:52

While applying filter sometimes the value gets negative which is like residue for visualization that is why

if loss_value <= K.epsilon():
return None

is written to ignore them.

You should try with decreasing the epoch value and upscaling steps to minimize those neglected points

Slowly upscaling towards the original size prevents a dominating high-frequency of the to visualized structure as it would occur if we directly compute the 412d-image.

It also behaves as a better starting point for each following dimension and therefore avoids poor local minima.

  • I am sorry, this doesn't really help me. The comments you made are just copies from the comments in the source code of the script which I already know. As I mentioned, I already tried varying epochs and upscaling steps but I had no success with that. Could you provide a working example for block5_conv3, filter 1? – ala yesterday

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