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Cloud Detection for High-Resolution Satellite Imagery Using Machine Learning and Multi-Feature Fusion

机译:使用机器学习和多特征融合的高分辨率卫星图像云检测

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The accurate location of clouds in images is prerequisite for many high-resolution satellite imagery applications such as atmospheric correction, land cover classifications, and target recognition. Thus, we propose a novel approach for cloud detection using machine learning and multi-feature fusion based on a comparative analysis of typical spectral, textural, and other feature differences between clouds and backgrounds. To validate this method, we tested it on 102 Gao Fen-1(GF-1) and Gao Fen-2(GF-2) satellite images. The overall accuracy of our multi-feature fusion method for cloud detection was more than 91.45%, and the Kappa coefficient for all the tested images was greater than 80%. The producer and user accuracy were also higher at 93.67% and 95.67%, respectively; both of these values were higher than the values for the other tested feature fusion methods. Our results show that this novel multi-feature approach yields better accuracy than other feature fusion methods. In post-processing, we applied an object-oriented method to remove the influence of highly reflective ground objects and further improved the accuracy. Compared to traditional methods, our new method for cloud detection is accurate, exhibits good scalability, and produces consistent results when mapping clouds of different types and sizes over various land surfaces that contain natural vegetation, agriculture land, built-up areas, and water bodies.
机译:图像中云的准确位置是许多高分辨率卫星图像应用(例如大气校正,土地覆盖分类和目标识别)的先决条件。因此,我们基于对云与背景之间典型的光谱,纹理以及其他特征差异的比较分析,提出了一种使用机器学习和多特征融合进行云检测的新方法。为了验证该方法,我们在102个高分1(GF-1)和高分2(GF-2)卫星图像上对其进行了测试。我们用于云检测的多特征融合方法的整体准确性超过91.45%,并且所有测试图像的Kappa系数均大于80%。生产者和用户准确性也分别更高,分别为93.67%和95.67%;这两个值均高于其他测试特征融合方法的值。我们的结果表明,这种新颖的多特征方法比其他特征融合方法具有更高的准确性。在后处理中,我们应用了一种面向对象的方法来消除高反射地面对象的影响,并进一步提高了精度。与传统方法相比,我们的新云检测方法准确,具有良好的可扩展性,并且在包含自然植被,农业用地,人为建成区和水体的各种陆地表面绘制不同类型和大小的云时,其结果一致。

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