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Cycle-Dehaze: Enhanced CycleGAN for Single Image Dehazing

机译:循环消失:增强单图像脱水的Corpygan

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In this paper, we present an end-to-end network, called Cycle-Dehaze, for single image dehazing problem, which does not require pairs of hazy and corresponding ground truth images for training. That is, we train the network by feeding clean and hazy images in an unpaired manner. Moreover, the proposed approach does not rely on estimation of the atmospheric scattering model parameters. Our method enhances CycleGAN formulation by combining cycle-consistency and perceptual losses in order to improve the quality of textural information recovery and generate visually better haze-free images. Typically, deep learning models for dehazing take low resolution images as input and produce low resolution outputs. However, in the NTIRE 2018 challenge on single image dehazing, high resolution images were provided. Therefore, we apply bicubic downscaling. After obtaining low-resolution outputs from the network, we utilize the Laplacian pyramid to upscale the output images to the original resolution. We conduct experiments on NYU-Depth, I-HAZE, and O-HAZE datasets. Extensive experiments demonstrate that the proposed approach improves CycleGAN method both quantitatively and qualitatively.
机译:在本文中,我们介绍了一个端到端的网络,称为循环消失,用于单幅图像去吸收问题,这不需要对朦胧的和相应的地面真理图像进行训练。也就是说,我们通过以未配对的方式喂养清洁和朦胧的图像来训练网络。此外,所提出的方法不依赖于估计大气散射模型参数。我们的方法通过组合循环 - 一致性和感知损失来提高Cyclegan制定,以提高纹理信息恢复的质量并产生视觉上更好的雾度图像。通常,用于去除滤的深度学习模型将降低分辨率图像作为输入并产生低分辨率输出。然而,在2018年对单幅图像脱水的挑战中,提供了高分辨率图像。因此,我们应用双方镇压。在从网络获取低分辨率输出后,我们利用拉普拉斯金字塔将输出图像上升至原始分辨率。我们对Nyu-Deave,I-Haze和O-Haze数据集进行实验。广泛的实验表明,所提出的方法可以定量和定性地改善了CycliCaN方法。

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