Attention-based Single Image Dehazing Using Improved CycleGAN

R. S. Jaisurya, Snehasis Mukherjee
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引用次数: 1

Abstract

Single image dehazing is a popular research topic among the researchers in computer vision, machine learning, image processing, and graphics. Most of the recent methods for single image dehazing are based upon supervised learning set up. However, supervised methods require annotation of the data, which often makes the dehazing methods biased towards the manual annotation errors. Unsupervised methods are more likely to produce realistic, clear images. However, fewer efforts are found in the literature for single image dehazing in unsupervised set up. We propose an enhanced CycleGAN architecture for Unpaired single image dehazing, with an attention-based transformer architecture embedded in the generator. The proposed transformer comprises three components: 1) A Feature Attention (FA) block combining channel attention and pixel attention mechanism, 2) A Dynamic feature enhancement block for dynamically capturing the spatial structured features and 3) An adaptive mix-up module to preserve the flow of shallow features from downsampling. Experiments on the benchmark datasets show the efficacy of the proposed method. Codes for this work are available in the link: https://github.com/rsjai47/Attention-Based-CycleDehaze.
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基于注意力的改进CycleGAN单幅图像去雾
单幅图像去雾是计算机视觉、机器学习、图像处理和图形学等领域的热门研究课题。目前大多数单幅图像去雾的方法都是基于监督学习建立的。然而,有监督的方法需要对数据进行标注,这往往使除雾方法偏向于人工标注的错误。无监督的方法更有可能产生逼真、清晰的图像。然而,文献中对无监督环境下的单幅图像去雾的研究较少。我们提出了一种用于非配对单幅图像去雾的增强CycleGAN架构,在生成器中嵌入了一个基于注意力的变压器架构。该变压器由三个部分组成:1)结合通道注意和像素注意机制的特征注意(FA)块,2)动态捕获空间结构特征的动态特征增强块,3)自适应混合模块,以保持下采样时浅层特征的流动。在基准数据集上的实验表明了该方法的有效性。这项工作的代码可在链接:https://github.com/rsjai47/Attention-Based-CycleDehaze。
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