使用非配对对抗训练的单幅图像去雾化

Akshay Dudhane, S. Murala
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引用次数: 48

摘要

在雾霾、雾和烟等气溶胶颗粒存在的情况下,室外场景图像的能见度一般会下降。这是因为气溶胶粒子将物体表面反射的光线散射,从而导致光强衰减。雾霾的效果与场景点的透射系数成反比。因此,准确透射图(TrMap)的估计是重建无雾场景的关键步骤。以前的方法使用各种假设/先验来估计场景TrMap。此外,可用的端到端去雾方法利用监督训练来预测合成生成的成对模糊图像上的TrMap。尽管之前的方法取得了成功,但由于无法获得真实世界的模糊图像对来训练网络,它们在现实世界的极端模糊条件下失败了。因此,本文提出了一种循环一致的单幅图像去雾生成对抗网络CDNet,该网络在真实模糊图像数据集上以非配对方式进行训练。CDNet的生成器网络由编码器-解码器架构组成,该架构旨在估计目标层TrMap,然后是光学模型,以恢复无雾场景。我们在D-HAZY[1]、Imagenet[5]、SOTS[20]和真实图像四个数据集上进行实验。采用结构相似度指标、峰值信噪比和CIEDE2000度量来评价所提出的CDNet的性能。在基准数据集上的实验表明,所提出的CDNet在单幅图像雾霾去除方面优于现有的最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CDNet: Single Image De-Hazing Using Unpaired Adversarial Training
Outdoor scene images generally undergo visibility degradation in presence of aerosol particles such as haze, fog and smoke. The reason behind this is, aerosol particles scatter the light rays reflected from the object surface and thus results in attenuation of light intensity. Effect of haze is inversely proportional to the transmission coefficient of the scene point. Thus, estimation of accurate transmission map (TrMap) is a key step to reconstruct the haze-free scene. Previous methods used various assumptions/priors to estimate the scene TrMap. Also, available end-to-end dehazing approaches make use of supervised training to anticipate the TrMap on synthetically generated paired hazy images. Despite the success of previous approaches, they fail in real-world extreme vague conditions due to unavailability of the real-world hazy image pairs for training the network. Thus, in this paper, Cycle-consistent generative adversarial network for single image De-hazing named as CDNet is proposed which is trained in an unpaired manner on real-world hazy image dataset. Generator network of CDNet comprises of encoder-decoder architecture which aims to estimate the object level TrMap followed by optical model to recover the haze-free scene. We conduct experiments on four datasets namely: D-HAZY [1], Imagenet [5], SOTS [20] and real-world images. Structural similarity index, peak signal to noise ratio and CIEDE2000 metric are used to evaluate the performance of the proposed CDNet. Experiments on benchmark datasets show that the proposed CDNet outperforms the existing state-of-the-art methods for single image haze removal.
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