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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Thin cloud removal with residual symmetrical concatenation network
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Thin cloud removal with residual symmetrical concatenation network

机译:残留对称串联网络去除薄云

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摘要

Thin cloud removal is important for enhancing the utilization of optical remote sensing imagery. Different from thick cloud removal, the pixels contaminated by thin clouds still preserve some surface information. Therefore, thin cloud removal methods usually focus on suppressing the cloud influence instead of replacing the cloudy pixels. In this paper, we proposed a deep residual symmetrical concatenation network (RSC-Net) to make end-to-end thin cloud removal. The RSC-Net is based on the encoding-decoding framework consisting of multiple residual convolutional layers and residual deconvolutional layers. The feature maps of each convolutional layer are copied and concatenated to the symmetrical deconvolutional layer. We used real cloud-contaminated and cloud-free Landsat-8 data very close in time for both training and testing. The RSC-Net is trained to take cloudy images as input and directly produce corresponding cloud-free images as output with all the bands together except the cirrus band and the panchromatic band. Compared with other traditional and state-of-the-art deep learning based methods, the experimental results show that our method has significant advantages in removing thin cloud contaminations in different bands.
机译:去除薄云对于提高光学遥感影像的利用率很重要。与去除厚云不同,被薄云污染的像素仍保留一些表面信息。因此,薄云去除方法通常侧重于抑制云影响而不是替换浑浊像素。在本文中,我们提出了一个深度残差对称串联网络(RSC-Net),以进行端到端的薄云去除。 RSC-Net基于由多个残差卷积层和残差反卷积层组成的编码-解码框架。将每个卷积层的特征图复制并连接到对称反卷积层。我们非常及时地使用了受云污染和无云的真实Landsat-8数据进行培训和测试。对RSC-Net进行了训练,以获取多云图像作为输入,并直接生成相应的无云图像作为输出,除了卷云带和全色带之外的所有其他带。与其他基于传统和最新技术的深度学习方法相比,实验结果表明,我们的方法在去除不同频段的薄云污染方面具有显着优势。

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