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孙子正, 宋慧慧, 樊佳庆, 刘青山. 基于全局-局部生成对抗学习的无监督弱光图像增强[J]. 计算机辅助设计与图形学学报, 2022, 34(10): 1550-1558. DOI: 10.3724/SP.J.1089.2022.19719
引用本文: 孙子正, 宋慧慧, 樊佳庆, 刘青山. 基于全局-局部生成对抗学习的无监督弱光图像增强[J]. 计算机辅助设计与图形学学报, 2022, 34(10): 1550-1558. DOI: 10.3724/SP.J.1089.2022.19719
Sun Zizheng, Song Huihui, Fan Jiaqing, Liu Qingshan. Global-Local Generation Adversarial Learning Based Low-Light Image Enhancement[J]. Journal of Computer-Aided Design & Computer Graphics, 2022, 34(10): 1550-1558. DOI: 10.3724/SP.J.1089.2022.19719
Citation: Sun Zizheng, Song Huihui, Fan Jiaqing, Liu Qingshan. Global-Local Generation Adversarial Learning Based Low-Light Image Enhancement[J]. Journal of Computer-Aided Design & Computer Graphics, 2022, 34(10): 1550-1558. DOI: 10.3724/SP.J.1089.2022.19719

基于全局-局部生成对抗学习的无监督弱光图像增强

Global-Local Generation Adversarial Learning Based Low-Light Image Enhancement

  • 摘要: 在弱光图像增强中,现有的无监督方法仍存在着真实性不足以及对于极暗条件的图像增强效果不明显等问题.为此,提出了一种无监督的弱光图像增强方法,通过设计一种高效循环生成对抗网络,直接从弱光图像中恢复出正常光照图像.首先,为解决大尺寸输入导致的内存不足的问题,设计了全局-局部生成器;其次,判别器设计为自适应二阶段分类器,通过判别全局区域来自适应定位需再次判别的局部区域;最后,采用了焦点频域损失函数,使模型自适应地聚焦于分类难以合成的频率波段,以避免生成图像失真.文中方法在NPE,LIME,MEF,DICM和VV数据集上的感知指标(perceptual index,PI)分别达到了2.81,2.78,2.40,3.15和3.69,在LOL数据集上PSNR和SSIM指标分别达到了19.89 dB和0.7823,具有良好的鲁棒性.

     

    Abstract: In the field of low-light image enhancement,the existing unsupervised methods still have some problems,such as the lack of authenticity and the unclear effect of image enhancement in extremely dark conditions.To address this issue,we propose a highly-effective unsupervised approach to directly recover normal light image from low-light image by designing an effective cyclic generation adversarial network,Firstly,in order to solve the problem of insufficient memory caused by large-size input,a global and local generator has been designed.Secondly,we develop an adaptive two-stage discriminator.Among it,by discriminating the whole image,the local region that needs to be discriminated again is obtained adaptively.Finally,the loss in frequency domain is employed to avoid image distortion.We employ the focal frequency loss which allows the model to adaptively focus on frequency components that are hard to synthesize.The PIindex of the method in this paper reaches on NPE,LIME,MEF,DICM and VV datasets respectively 2.81,2.78,2.40,3.15,3.69.On LOL datasets,PSNR and SSIM index reached 19.89 dB,0.7823,with good robustness.

     

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