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Remote Sensing Images Dehazing Algorithm based on Cascade Generative Adversarial Networks

机译:基于级联生成对抗网络的遥感影像去雾算法

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The existing remote sensing image dehazing methods based on deep learning networks usually use pairs of clear images and corresponding haze images to train the model. However, pairs of clear images and their haze counterparts are extremely lacking, and synthetically haze images could not accurately simulate the real haze generation process in real-world scenarios. To address this problem, a cascade method combining two GANs (generative adversarial networks) is proposed. It contains a learning-to-haze GAN (UGAN) and learning-to-dehaze GAN (PAGAN). UGAN learns how to haze remote sensing images with unpaired clear and haze images sets, and then guides the PAGAN to learn how to correctly dehaze such images. To reduce the discrepancy between real haze and synthetic haze images, we added self-attention mechanism to PAGAN. The details can be generated using cues from all feature locations. Moreover, the discriminator could check that highly detailed features in distant portions of the images that are consistent with each other. Compared with other dehazing methods, this algorithm does not require numerous pairs of images to train the network repeatedly. And the results show that the cascaded generative adversarial networks has visual and quantitative effectiveness for the removal of haze, thin clouds.
机译:现有的基于深度学习网络的遥感图像去雾方法通常使用成对的清晰图像和相应的雾度图像来训练模型。但是,极其缺乏成对的清晰图像及其对应的雾度,并且合成雾度图像无法准确模拟真实场景中的真实雾度生成过程。为了解决这个问题,提出了一种结合两个GAN(生成对抗网络)的级联方法。它包含一个学习模糊GAN(UGAN)和学习去雾GAN(PAGAN)。 UGAN学习如何雾化具有未配对的清晰和雾化图像集的遥感图像,然后指导PAGAN学习如何正确地对此类图像进行雾化。为了减少真实雾度和合成雾度图像之间的差异,我们在PAGAN中添加了自注意力机制。可以使用来自所有特征位置的提示来生成细节。此外,鉴别器可以检查在图像的远处部分中彼此一致的高度详细的特征。与其他除雾方法相比,该算法不需要大量的图像对来重复训练网络。结果表明,级联生成对抗网络具有去除薄雾和薄雾的视觉和定量效果。

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