首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >A CLOUD BOUNDARY DETECTION SCHEME COMBINED WITH ASLIC AND CNN USING ZY-3, GF-1/2 SATELLITE IMAGERY
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A CLOUD BOUNDARY DETECTION SCHEME COMBINED WITH ASLIC AND CNN USING ZY-3, GF-1/2 SATELLITE IMAGERY

机译:ZY-3,GF-1 / 2卫星影像结合Aslic和CNN的云边界检测方案

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Remote sensing optical image cloud detection is one of the most important problems in remote sensing data processing. Aiming at the information loss caused by cloud cover, a cloud detection method based on convolution neural network (CNN) is presented in this paper. Firstly, a deep CNN network is used to extract the multi-level feature generation model of cloud from the training samples. Secondly, the adaptive simple linear iterative clustering (ASLIC) method is used to divide the detected images into superpixels. Finally, the probability of each superpixel belonging to the cloud region is predicted by the trained network model, thereby generating a cloud probability map. The typical region of GF-1/2 and ZY-3 were selected to carry out the cloud detection test, and compared with the traditional SLIC method. The experiment results show that the average accuracy of cloud detection is increased by more than 5?%, and it can detected thin-thick cloud and the whole cloud boundary well on different imaging platforms.
机译:遥感光学图像云检测是遥感数据处理中最重要的问题之一。针对云量覆盖造成的信息丢失,提出了一种基于卷积神经网络的云检测方法。首先,使用深度CNN网络从训练样本中提取云的多级特征生成模型。其次,采用自适应简单线性迭代聚类(ASLIC)方法将检测到的图像分为超像素。最终,通过训练后的网络模型来预测属于云区域的每个超像素的概率,从而生成云概率图。选择了GF-1 / 2和ZY-3的典型区域进行云检测测试,并与传统的SLIC方法进行了比较。实验结果表明,云检测的平均准确率提高了5个百分点以上,可以在不同的成像平台上很好地检测到薄云和整个云的边界。

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