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Deep Encoder-Decoder Network Based on the Up and Down Blocks Using Wavelet Transform for Cloud Detection

机译:基于使用小波变换进行云检测的深度编码器 - 解码器网络

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Cloud detection is a challenging task but plays a major role for remote sensing image processing. Due to the diversity of cloud and the complexity of underlying surfaces, most of the current cloud detection methods still face great challenges, especially in detecting the thin cloud. Therefore, we propose a method to detect cloud pixels in GaoFen-1 WFV images. In our method, the deep encoder-decoder network is used to learn the multi-scale global features. So that the high-level semantic information obtained in the process of feature learning is integrated with low-level spatial information to classify images into cloud and non-cloud regions. In addition, Up and Down blocks using Harr wavelet transform are designed to fully exploit the structural information of images, and especially the texture information of the cloud can be learned targetedly. The experimental results indicate that the network using Up and Down blocks performs well under different scenes.
机译:云检测是一个具有挑战性的任务,但对遥感图像处理发挥着重要作用。由于云的多样性和底层表面的复杂性,大多数当前的云检测方法仍然面临巨大的挑战,特别是在检测到薄云时。因此,我们提出了一种检测高芬-1 WFV图像中的云像素的方法。在我们的方法中,深度编码器 - 解码器网络用于学习多尺度全局功能。因此,在特征学习过程中获得的高电平语义信息与低级空间信息集成,以将图像分类为云和非云区域。另外,使用HARR小波变换的上下块被设计为充分利用图像的结构信息,尤其可以终止地学习云的纹理信息。实验结果表明,使用上下块的网络在不同的场景下执行良好。

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