Attention-based Deep Pyramidal Network for Low-light Image Enhancement

Xiaodong Zhang, Yifei Wang
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Abstract

Various images taken under complex lighting conditions often suffer from degraded image quality. Such poor quality not only fails to meet user expectations but also leads to significant performance degradation in many applications. In this paper, we propose a new low-light image enhancement method that exploits the feature validity of the attention mechanism and the spatial validity of the pyramidal structure. Specifically, the proposed method is able to recover image details from the original input and enhance the lighting and combine them at the end of the network. Moreover, the pyramid structure defined in the feature space based on the rich connection of higher-order residuals in the multi-scale structure makes the recovery process more efficient. This decomposition-based scheme is quite ideal for learning the highly nonlinear relationship between degraded images and their enhancement results. Experimental results on different datasets show that the proposed ADPN outperforms existing methods. The code and model are publicly available at: https://github.com/zhangxueshi0717/Attention-based-Deep-Pyramid-Network-for-Low-Light-Image-Enhancement.
基于注意力的低光图像增强深度金字塔网络
在复杂光照条件下拍摄的各种图像往往会出现图像质量下降的问题。这种糟糕的质量不仅不能满足用户的期望,而且在许多应用程序中还会导致显著的性能下降。本文提出了一种利用注意机制的特征有效性和金字塔结构的空间有效性的弱光图像增强新方法。具体而言,该方法能够从原始输入中恢复图像细节并增强光照,并在网络末端将它们组合起来。此外,基于多尺度结构中高阶残差的丰富联系,在特征空间中定义的金字塔结构使得恢复过程更加高效。这种基于分解的方法对于学习退化图像与其增强结果之间的高度非线性关系是非常理想的。在不同数据集上的实验结果表明,所提出的ADPN优于现有的方法。代码和模型可以在https://github.com/zhangxueshi0717/Attention-based-Deep-Pyramid-Network-for-Low-Light-Image-Enhancement上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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