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Single Satellite Optical Imagery Dehazing using SAR Image Prior Based on conditional Generative Adversarial Networks

机译:基于条件生成对抗网络的SAR图像先验单卫星光学图像去雾

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Satellite image dehazing aims at precisely retrieving the real situations of the obscured parts from the hazy remote sensing (RS) images, which is a challenging task since the hazy regions contain both ground features and haze components. Many approaches of removing haze focus on processing multi-spectral or RGB images, whereas few of them utilize multi-sensor data. The multi-sensor data fusion is significant to provide auxiliary information since RGB images are sensitive to atmospheric conditions. In this paper, a dataset called SateHaze1k is established and composed of 1200 pairs clear Synthetic Aperture Radar (SAR), hazy RGB, and corresponding ground truth images, which are divided into three degrees of the haze, i.e. thin, moderate, and thick fog. Moreover, we propose a novel fusion dehazing method to directly restore the haze-free RS images by using an end-to-end conditional generative adversarial network(cGAN). The proposed network combines the information of both RGB and SAR images to eliminate the image blurring. Besides, the dilated residual blocks of the generator can also sufficiently improve the dehazing effects. Our experiments demonstrate that the proposed method, which fuses the information of different sensors applied to the cloudy conditions, can achieve more precise results than other baseline models.
机译:卫星图像去雾的目的是从朦胧的遥感(RS)图像中准确地获取被遮挡部分的真实情况,这是一项具有挑战性的任务,因为朦胧的区域既包含地面特征又包含朦胧的成分。许多消除雾度的方法都集中在处理多光谱或RGB图像上,而很少有利用多传感器数据的方法。由于RGB图像对大气条件敏感,因此多传感器数据融合对于提供辅助信息非常重要。本文建立了一个名为SateHaze1k的数据集,该数据集由1200对清晰的合成孔径雷达(SAR),朦胧的RGB和相应的地面真实图像组成,分为三个雾度,即薄雾,中雾和浓雾。此外,我们提出了一种新颖的融合去雾方法,通过使用端到端条件生成对抗网络(cGAN)直接还原无雾的RS图像。所提出的网络结合了RGB和SAR图像的信息,以消除图像模糊。此外,发电机的膨胀残余块也可以充分改善除雾效果。我们的实验表明,所提出的方法融合了适用于多云条件的不同传感器的信息,比其他基准模型可以实现更精确的结果。

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