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Progressive Domain Translation Defogging Network for Real-World Fog Images

机译:用于真实雾图像的渐进式域平移去雾网络

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摘要

Images captured in bad weather are affected by atmospheric scattering. To remove image degradation caused by scattering, many defogging methods have been proposed. However, due to the lack of consideration of high-frequency signal loss in real-world fog (RF) images, few existing methods are able to enhance RF images that have a large domain distance from mist images or synthetic fog images in the style feature space. Therefore, in this paper, a progressive domain translation defogging network is proposed to achieve the coordination of fog removal and target contour refinement for RF images. Firstly, a fog inversion module is trained with the newly built synthetic foggy images, and the high-frequency signal is truncated to shorten the distance between the training sample and RF images. The module realizes the restoration of fog density of RF images. Secondly, an image translation module is trained by an unsupervised loss to further eliminate fog degradation and enhance the style of defogged images toward clear images. The image style enhanced by the module includes the overall image style related to color, contrast, and the local image style related to target contours. Experimental results show that the proposed network can obtain high-quality RF images, which is beyond state-of-the-art methods in terms of visual quality indices and target detection indices. The code of the proposed network is found at https://github.com/yeyekurong/Guoqiang_PTD-Net/ .
机译:在恶劣天气下拍摄的图像会受到大气散射的影响。为了消除散射引起的图像退化,已经提出了许多去雾方法。然而,由于缺乏对真实世界雾(RF)图像中高频信号损失的考虑,现有的方法很少能够增强样式特征空间中与雾图像或合成雾图像具有较大域距离的RF图像。因此,该文提出一种渐进式域平移去雾网络,以实现射频图像除雾和目标轮廓细化的协调。首先,利用新构建的合成雾图像训练雾反演模块,并对高频信号进行截断,以缩短训练样本与射频图像之间的距离;该模块实现了射频图像雾密度的恢复。其次,通过无监督损失训练图像平移模块,以进一步消除雾退化,并增强雾化图像向清晰图像的风格。模块增强的图像样式包括与颜色、对比度相关的整体图像样式以及与目标轮廓相关的局部图像样式。实验结果表明,所提网络能够获得高质量的射频图像,在视觉质量指标和目标检测指标方面均超越了现有方法。拟议网络的代码可在 https://github.com/yeyekurong/Guoqiang_PTD-Net/ 中找到。

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