Comments (1)
Different to conventional practice for the MSE loss, we didn't use average between two gram matrices as shown here. From my experience, this gives better stylization results. This is why the style loss weight is smaller.
As to the specific value of the style weight, it is empirically decided.
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Related Issues (20)
- out of memory HOT 3
- RuntimeError for photorealistic style transfer HOT 2
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- 请教consult HOT 2
- reproduce the results HOT 2
- ModuleNotFoundError: No module named 'torchvision' HOT 2
- A tiny question about file 'real-time-demo.py' HOT 2
- something about the codes of pytorch-spn HOT 3
- Update for Pytorch 1.0+? HOT 1
- code about encoder and decoder pretrain HOT 1
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