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Multi-Scale Deep Residual Learning-Based Single Image Haze Removal via Image Decomposition

机译:基于多尺度的深度剩余学习的单图像雾霾通过图像分解去除

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Images/videos captured from outdoor visual devices are usually degraded by turbid media, such as haze, smoke, fog, rain, and snow. Haze is the most common one in outdoor scenes due to the atmosphere conditions. In this paper, a novel deep learning-based architecture (denoted by MSRL-DehazeNet) for single image haze removal relying on multi-scale residual learning (MSRL) and image decomposition is proposed. Instead of learning an end-to-end mapping between each pair of hazy image and its corresponding haze-free one adopted by most existing learning-based approaches, we reformulate the problem as restoration of the image base component. Based on the decomposition of a hazy image into the base and the detail components, haze removal (or dehazing) can be achieved by both of our multi-scale deep residual learning and our simplified U-Net learning only for mapping between hazy and haze-free base components, while the detail component is further enhanced via the other learned convolutional neural network (CNN). Moreover, benefited by the basic building block of our deep residual CNN architecture and our simplified U-Net structure, the feature maps (produced by extracting structural and statistical features), and each previous layer can be fully preserved and fed into the next layer. Therefore, possible color distortion in the recovered image would be avoided. As a result, the final haze-removed (or dehazed) image is obtained by integrating the haze-removed base and the enhanced detail image components. Experimental results have demonstrated good effectiveness of the proposed framework, compared with state-of-the-art approaches.
机译:从户外可视设备捕获的图像/视频通常由浊度介质降级,例如雾度,烟雾,雾,雨和雪。由于大气条件,阴霾是室外场景中最常见的。在本文中,提出了一种用于依赖于多尺度残差学习(MSRL)和图像分解的单个图像雾霾去除的新型深度学习的架构(由MSRL-Dehazeenet表示)。不是在每对大多数基于学习的方法采用的每对朦胧图像之间的每对朦胧图像之间的端到端映射,而不是学习一个基于学习的方法所采用的相应的雾化,而是作为恢复图像基本组件的问题。基于朦胧图像的分解到基础和细节组件中,通过我们的多规模深度剩余学习和我们的简化U-Net学习可以实现雾度去除(或脱皮),仅用于在朦胧和阴霾之间映射 - 通过其他学习的卷积神经网络(CNN)进一步增强了免费基础组件,而细节组件进一步增强。此外,由我们的深度残余CNN架构和简化U-Net结构的基本构建块受益,特征映射(通过提取结构和统计特征产生),并且每个先前的层都可以完全保留并馈送到下一个层中。因此,将避免恢复图像中可能的颜色失真。结果,通过积分雾化基部和增强的细节图像组分来获得最终的雾霾除去(或去除盖)图像。与最先进的方法相比,实验结果表明了拟议框架的良好效果。

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