论文标题

学习适应光

Learning to Adapt to Light

论文作者

Yang, Kai-Fu, Cheng, Cheng, Zhao, Shi-Xuan, Zhang, Xian-Shi, Li, Yong-Jie

论文摘要

光适应或亮度校正是改善图像的对比度和视觉吸引力的关键步骤。有多个与光相关的任务(例如,低光增强和暴露校正),以前的研究主要研究了这些任务。但是,有趣的是考虑这些与统一的模型是否可以执行这些与这些光相关的任务,尤其是考虑到我们的视觉系统以这种方式适应了外部光线。在这项研究中,我们提出了一种具有生物学启发的方法,以通过统一网络(称为LA-NET)处理与光相关的图像增强任务。首先,一个基于频率的分解模块旨在将与光相关任务的常见和特征性子问题解散为两个途径。然后,建立了一个新模块,灵感来自生物学视觉适应,以在低频途径中实现统一的光适应。此外,无论光水平如何,在高频途径中都可以有效地实现噪声抑制或细节增强。与针对这些单个任务设计的最新方法相比,对三个任务(低光增强,暴露校正和音调映射)进行了大量实验,表明该方法几乎获得了最先进的性能。

Light adaptation or brightness correction is a key step in improving the contrast and visual appeal of an image. There are multiple light-related tasks (for example, low-light enhancement and exposure correction) and previous studies have mainly investigated these tasks individually. However, it is interesting to consider whether these light-related tasks can be executed by a unified model, especially considering that our visual system adapts to external light in such way. In this study, we propose a biologically inspired method to handle light-related image-enhancement tasks with a unified network (called LA-Net). First, a frequency-based decomposition module is designed to decouple the common and characteristic sub-problems of light-related tasks into two pathways. Then, a new module is built inspired by biological visual adaptation to achieve unified light adaptation in the low-frequency pathway. In addition, noise suppression or detail enhancement is achieved effectively in the high-frequency pathway regardless of the light levels. Extensive experiments on three tasks -- low-light enhancement, exposure correction, and tone mapping -- demonstrate that the proposed method almost obtains state-of-the-art performance compared with recent methods designed for these individual tasks.

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