学习曝光校正的样本关系

Jie Huang, Fengmei Zhao, Man Zhou, Jie Xiao, Naishan Zheng, Kai Zheng, Zhiwei Xiong
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引用次数: 12

摘要

曝光校正任务的目的是在单个网络中,将曝光不足和过度曝光的不良图像校正为正常曝光。众所周知,优化流程是相反的。现有的曝光校正方法虽然有很大的进步,但通常都是用一小批曝光不足和曝光过度的混合样本进行训练,并没有探索它们之间的关系来解决优化不一致问题。在本文中,我们引入了一种新的视角,通过关联和约束小批量中修正过程的关系来结合它们的优化过程。我们的框架的核心设计包括两个步骤:1)通过上下文无关的借口任务在批次维度上制定样本的暴露关系。2)将上述样本关系设计作为损失函数内的正则化项,促进优化一致性。所提出的样本关系设计作为一个通用术语,可以很容易地集成到现有的曝光校正方法中,而不会增加推理时间的计算负担。通过引入我们的样本关系设计,在多个代表性曝光校正基准上进行了广泛的实验,证明了一致的性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Sample Relationship for Exposure Correction
Exposure correction task aims to correct the underexposure and its adverse overexposure images to the normal exposure in a single network. As well recognized, the optimization flow is the opposite. Despite great advancement, existing exposure correction methods are usually trained with a mini-batch of both underexposure and overexposure mixed samples and have not explored the relationship between them to solve the optimization inconsistency. In this paper, we introduce a new perspective to conjunct their optimization processes by correlating and constraining the relationship of correction procedure in a mini-batch. The core designs of our framework consist of two steps: 1) formulating the exposure relationship of samples across the batch dimension via a context-irrelevant pretext task. 2) delivering the above sample relationship design as the regularization term within the loss function to promote optimization consistency. The proposed sample relationship design as a general term can be easily integrated into existing exposure correction methods without any computational burden in inference time. Extensive experiments over multiple representative exposure correction benchmarks demonstrate consistent performance gains by introducing our sample relationship design.
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