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Overwater Image Dehazing via Cycle-Consistent Generative Adversarial Network

机译:通过循环一致的生成对抗网络过水的潜水图像去吸附

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In contrast to images taken on land scenes, images taken over water are more prone to degradation due to the influence of the haze. However, existing image dehazing methods are mainly developed for land scenes and perform poorly when applied to overwater images. To address this problem, we collect the first overwater image dehazing dataset and propose an OverWater Image Dehazing GAN (OWI-DehazeGAN). Due to the difficulties of collecting paired hazy and clean images, the dataset is composed of unpaired hazy and clean images taken over water. The proposed OWI-DehazeGAN learns the underlying style mapping between hazy and clean images in an encoder-decoder framework, which is supervised by a forward-backward translation consistency loss for self-supervision and a perceptual loss for content preservation. In addition to qualitative evaluation, we design an image quality assessment network to rank the dehazed images. Experimental results on both real and synthetic test data demonstrate that the proposed method performs superiorly against several state-of-the-art land dehazing methods.
机译:与陆地场景拍摄的图像相比,由于雾度的影响,在水中占用的图像更容易降解。然而,现有的图像脱水方法主要为陆地场景开发,并且在应用于过水图像时表现不佳。为了解决这个问题,我们收集了第一个过水图像脱水数据集,并提出了一种潜水图像脱落GaN(Owi-dehazegan)。由于收集配对朦胧和清洁图像的困难,数据集由未配对的朦胧和清洁图像组成。建议的Owi-dehazegan学习编码器解码器框架中的朦胧和清洁图像之间的潜在风格映射,这是由前后转换一致性损失进行自我监督和内容保存的感知损失来监督。除了定性评估外,我们还设计了一种图像质量评估网络,以对Dehazed图像进行排名。实验结果对实际和合成试验数据的实验结果表明,所提出的方法对若干最先进的土地脱水方法进行高度表现。

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