基于双注意单元的弱光图像增强生成对抗网络

Tian Ma, Chenhui Fu, Ming Guo, Jiayi Yang, Jia Liu
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引用次数: 0

摘要

在弱光条件下拍摄的图像会出现光强不足和高噪点。许多现有的方法在低光环境下不能很好地工作,例如在黑暗条件下增强后噪声和伪影会更加明显。因此,弱光图像增强是计算机视觉中的一项具有挑战性的任务。为了解决这一问题,本文提出了一种具有双注意单元的轻量级生成对抗网络来增强曝光不足的照片。发生器部分只有一个简单的两层卷积,在两层卷积之间增加了一个双注意单元,以抑制增强过程中产生的噪声和色彩还原的偏差。然后,在空间注意模块中利用图像的非局部相关性进行去噪。我们的低光图像增强网络由通道注意模块引导,以优化冗余的颜色特征。此外,在判别器部分结合了PatchGAN和Relativistic GAN的思想,使判别器更好地衡量从绝对真或假到相对真或假的变化概率。实验结果表明,该方法可以在低照度图像数据集上获得较好的增强效果,具有更自然的色彩、更好的曝光、更少的噪点和伪影。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual attention unit-based generative adversarial networks for low-light image enhancement
Images taken in low-light conditions would have insufficient light intensity and high noise. Many existing methods could not work very well in low-light environments, such as the noise and artifacts in dark conditions will be more obvious when enhanced. Therefore, low-light image enhancement is a challenging task in computer vision. To solve this problem, this paper proposes a lightweight generative adversarial network with dual-attention units to enhance underexposed photos. There is only a simple two-layer convolution in the generator section, and a dual-attention unit is added between the two convolutions to suppress the noise generated during the enhancement process and the deviation of color reduction. Then, non-local correlations of the image are used in the spatial attention module for denoising. Ours low-light image enhancement network is guided by the channel attention module to optimize redundant color features. In addition, the ideas of PatchGAN and Relativistic GAN are combined in the discriminator section to make the discriminator a better measure of the probability of changing from absolute true or false to relative true or false. The experiment results show that, our method could get better enhancement effects on low-illumination image datasets, which has more natural color, better exposure, and less noise and artifacts.
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