Chainer implementation for Learning to Simplify: Fully Convolutional Networks for Rough Sketch Cleanup#38
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ishanrai05 wants to merge 10 commits intochainer:masterfrom
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Chainer implementation for Learning to Simplify: Fully Convolutional Networks for Rough Sketch Cleanup#38ishanrai05 wants to merge 10 commits intochainer:masterfrom
ishanrai05 wants to merge 10 commits intochainer:masterfrom
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Thank you! The code works in my environment with your uploaded images. |
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@soskek Hi. Thanks for review. For Chainer Adam seems to do better work than AdaDelta. I have included the default settings as close to those mentioned in the paper. I'll change it to produce good results. |
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Code of the paper Learning to Simplify: Fully Convolutional Networks for Rough Sketch Cleanup which is tested and trained on custom datasets based on Chainer.