Enhancing Low-Light Light Field Images With a Deep Compensation Unfolding Network

Xianqiang Lyu;Junhui Hou
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Abstract

This paper presents a novel and interpretable end-to-end learning framework, called the deep compensation unfolding network (DCUNet), for restoring light field (LF) images captured under low-light conditions. DCUNet is designed with a multi-stage architecture that mimics the optimization process of solving an inverse imaging problem in a data-driven fashion. The framework uses the intermediate enhanced result to estimate the illumination map, which is then employed in the unfolding process to produce a new enhanced result. Additionally, DCUNet includes a content-associated deep compensation module at each optimization stage to suppress noise and illumination map estimation errors. To properly mine and leverage the unique characteristics of LF images, this paper proposes a pseudo-explicit feature interaction module that comprehensively exploits redundant information in LF images. The experimental results on both simulated and real datasets demonstrate the superiority of our DCUNet over state-of-the-art methods, both qualitatively and quantitatively. Moreover, DCUNet preserves the essential geometric structure of enhanced LF images much better. The code is publicly available at https://github.com/lyuxianqiang/LFLL-DCU .
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利用深度补偿展开网络增强弱光下的光场图像
本文提出了一种新颖的、可解释的端到端学习框架,称为深度补偿展开网络(DCUNet),用于恢复在弱光条件下捕获的光场(LF)图像。DCUNet 采用多阶段架构设计,模仿了以数据驱动方式解决逆成像问题的优化过程。该框架使用中间增强结果来估算光照图,然后在展开过程中使用光照图生成新的增强结果。此外,DCUNet 在每个优化阶段都包含一个与内容相关的深度补偿模块,以抑制噪声和光照图估计误差。为了正确挖掘和利用低频图像的独特性,本文提出了一种伪显式特征交互模块,可全面利用低频图像中的冗余信息。在模拟和真实数据集上的实验结果表明,DCUNet 在质量和数量上都优于最先进的方法。此外,DCUNet 还能更好地保留增强低频图像的基本几何结构。代码可在 https://github.com/lyuxianqiang/LFLL-DCU 公开获取。
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