Shadow Removal Based on 2Cycles-GAN

Haijia Chen, Dongliang Guan
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Abstract

Shadow removal and restoration of the image content in the shadowed regions by using shadow removal has become more and more popular in computer vision. But almost all current shadow-removal approaches use shadow-free images for training. Recently, an innovative approach that trains samples without this requirement due to this method crops patches with and without shadows from shadow images. However, it is insufficient to directly learn the essential relationships between shadow and shadow-free domains using adversarial learning and cycle-consistency constraints. Moreover, constructing many of these unpaired patches is still time-consuming and laborious. In our paper, we propose a new method named 2Cycles-G2R-ShadowNet. A shadow mask is used in our framework. We use the mask to guide the shadow generation to reformulate cycle-consistency constraints. To weakly-supervised shadow removal, we train shadow images and corresponding masks to leverage shadow generation. In our 2Cycles-G2R-ShadowNet, three subnetworks are used for shadow generation, shadow removal, and image post-processing, and we jointly train and test them end-to-end. Our method can optimize the performance by simultaneously learning to produce shadow masks and remove shadows. Extensive experiments on the ISTD dataset show that 2Cycles-G2R-ShadowNet achieves competitive performances and outperforms the current state of arts and patch-based shadow-removal method.
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基于2Cycles-GAN的阴影去除
在计算机视觉中,利用去阴影技术对阴影区域的图像内容进行去阴影和恢复已经成为一种越来越流行的方法。但目前几乎所有的去影方法都是使用无影图像进行训练。最近,一种创新的方法可以在没有这种要求的情况下训练样本,因为这种方法可以从阴影图像中提取有阴影和没有阴影的斑块。然而,使用对抗学习和循环一致性约束来直接学习阴影域和无阴影域之间的本质关系是不够的。此外,构建许多这些未配对的补丁仍然是费时费力的。在本文中,我们提出了一种名为2Cycles-G2R-ShadowNet的新方法。在我们的框架中使用了阴影蒙版。我们使用遮罩来指导阴影生成,以重新制定循环一致性约束。为了弱监督阴影去除,我们训练阴影图像和相应的蒙版来利用阴影生成。在我们的2Cycles-G2R-ShadowNet中,我们使用三个子网进行阴影生成、阴影去除和图像后处理,并对它们进行端到端联合训练和测试。我们的方法可以通过同时学习生成阴影遮罩和去除阴影来优化性能。在ISTD数据集上的大量实验表明,2Cycles-G2R-ShadowNet达到了具有竞争力的性能,并且优于当前的基于补丁的阴影去除方法。
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