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Exposure-Consistency Representation Learning for Exposure Correction

Jie Huang, Man Zhou, Yajing Liu, Mingde Yao, Feng Zhao, Zhiwei Xiong

2022Proceedings of the 30th ACM International Conference on Multimedia34 citationsDOI

Abstract

Images captured under improper exposures including underexposure and overexposure often suffer from unsatisfactory visual effects. Since their correction procedures are quite different, it is challenging for a single network to correct various exposures. The key to addressing this issue is consistently learning underexposure and overexposure corrections. To achieve this goal, we propose an Exposure-Consistency Processing (ECP) module to consistently learn the representation of both underexposure and overexposure in the feature space. Specifically, the ECP module employs the bilateral activation mechanism that derives both underexposure and overexposure property features for exposure-consistency representation modeling, which is followed by two shared-weight branches to process these features. Based on the ECP module, we build the whole network by utilizing it as the basic unit. Additionally, to further assist the exposure-consistency learning, we develop an Exposure-Consistency Constraining (ECC) strategy that augments the various local region exposures and then constrains the feature representation change between the exposure augmented image and the original one. Our proposed network is lightweight and outperforms existing methods remarkably, while the ECP module can also be extended to other baselines, demonstrating its superiority and scalability. code: https://github.com/KevinJ-Huang/ECLNet.

Topics & Concepts

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