context-encoder - [CVPR 2016] Unsupervised Feature Learning by Image Inpainting using GANs

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If you could successfully run the above demo, run following steps to train your own context encoder model for image inpainting. Features for context encoder trained with reconstruction loss.

https://people.eecs.berkeley.edu/~pathak/context_encoder/
https://github.com/pathak22/context-encoder

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