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Cloud Detection in High-Resolution Remote Sensing Images Using Multi-features of Ground Objects

机译:在高分辨率遥感云检测图像使用地面对象的性质

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摘要

The existence of clouds in high-resolution remote sensing images influences target recognition and feature classification. Therefore, finding areas covered with clouds is an important preprocessing step in remote sensing image applications. This paper proposes a cloud detection method for satellite images with high resolution using ground objects' multi-features, such as color, texture, and shape. First, the highly reflective areas are extracted from the image using the minimum cross entropy threshold method. Second, the multi-scale image decomposition based on domain transform filter extracts the texture features of ground objects. Finally, based on the shape features, regular-shaped artificial ground objects are removed to further improve cloud detection accuracy. The experimental results show that the proposed method not only improves the overall accuracy rate but also reduces the false positive rate compared to the classical traditional cloud detection methods. The method is suitable for cloud detection in high-resolution remote sensing images with complex ground objects.
机译:云在高分辨率偏远的存在遥感图像目标识别和影响功能分类。满云是一个重要的预处理遥感图像的应用程序。提出了一种云检测方法使用卫星图像与高分辨率地面对象的性质,如颜色、纹理和形状。区域从图像中提取使用最小交叉熵阈值法。基于多尺度的图像分解域转换滤波器提取纹理地面对象的特性。形状特征,regular-shaped人工地面对象是进一步提高云删除检测精度。该方法不仅提高了总体准确率也减少了假的积极率比经典传统的云检测方法。适用于云检测高分辨率遥感图像复杂的对象。

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