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pretrained vgg_f #2

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zyfsa opened this issue Oct 14, 2018 · 3 comments
Open

pretrained vgg_f #2

zyfsa opened this issue Oct 14, 2018 · 3 comments

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@zyfsa
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zyfsa commented Oct 14, 2018

hi, your work is great. Although there are some differences with the original paper.
can I get your pretrained vgg16.mat?thanks
Besides, your tensorflow version is ?

@cheer00
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cheer00 commented Oct 16, 2018

Hi, have you found the right imagenet-vgg-f.mat?
I have tried this one--http://www.vlfeat.org/matconvnet/models/imagenet-vgg-f.mat
but there is a problem "mean = data['normalization'][0][0][0] KeyError: 'normalization'"
Then I tried this http://www.vlfeat.org/matconvnet/models/imagenet-vgg-verydeep-19.mat as anishathalye/neural-style#4 advised.
The problem--KeyError: 'normalization-- solved, but there are still erros, as the layers written in code of SSAH are not the same in the imagenet-vgg-verydeep-19.mat

so, I want to know where to get the imagenet-vgg-f.mat used in this paper.

@cheer00
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cheer00 commented Oct 16, 2018

hi, your work is great. Although there are some differences with the original paper.
can I get your pretrained vgg16.mat?thanks
Besides, your tensorflow version is ?

have you got the vgg16.mat?

@zyfsa
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zyfsa commented Oct 16, 2018

@cheer00 hello, I advise you load the imagenet-vgg-f.mat in matlab, and analyze it. If you also are puzzled,you can my watch my repository (cvpr2108-SSAH). I follow this work and have little modification

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