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Auxiliary Loss Adaption for Image Inpainting

2021-11-14 08:45:49
Siqi Hui, Sanping Zhou, Xingyu Wan, Jixin Wang, Ye Deng, Yang Wu, Zhenghao Gong, Jinjun Wang

Abstract

Auxiliary losses commonly used in image inpainting lead to better reconstruction performance by incorporating prior knowledge of missing regions. However, it usually takes a lot of effort to fully exploit the potential of auxiliary losses, since improperly weighted auxiliary losses would distract the model from the inpainting task, and the effectiveness of an auxiliary loss might vary during the training process. Furthermore, the design of auxiliary losses takes domain expertise. In this work, we introduce the Auxiliary Loss Adaption (Adaption) algorithm to dynamically adjust the parameters of the auxiliary loss, to better assist the primary task. Our algorithm is based on the principle that better auxiliary loss is the one that helps increase the performance of the main loss through several steps of gradient descent. We then examined two commonly used auxiliary losses in inpainting and use \ac{ALA} to adapt their parameters. Experimental results show that ALA induces more competitive inpainting results than fixed auxiliary losses. In particular, simply combining auxiliary loss with \ac{ALA}, existing inpainting methods can achieve increased performances without explicitly incorporating delicate network design or structure knowledge prior.

Abstract (translated)

URL

https://arxiv.org/abs/2111.07279

PDF

https://arxiv.org/pdf/2111.07279.pdf


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