09b6e009612875dd0a7291d5f4fd8b49-Supplemental-Conference.pdf

Neural Information Processing Systems 

We use the PyTorch toolkit to implement our inpainting network with CICM. The network is optimized by the Adam solver for 400,000 iterations. The initial learning rate is 0.0001, which is linearly decayed during the network training. In our implementation, we use a warm-up strategy to pre-train the backbone network for 50,000 iterations. The encoder of the pre-trained backbone is used to compute the regional features of different images.

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