Cloud detection is a fundamental yet challenging topic in remote-sensing image processing. The authors propose a method for multi-dimensional feature extraction and superpixel segmentation, and use a voting-based clustering ensemble to capture the whole target shape. In order to further identify clouds, snow-covered lands, and bright buildings on remote-sensing images, they first implement an Ostu threshold to get high grey-level sub-regions, and then extract the descriptors of these sub-regions and put them into the softmax regression classifier. Regarding these methods, the authors conduct experiments using GF-1 remote-sensing images. The results demonstrate the effectiveness and excellency of their proposed method.
CITATION STYLE
Shi, Y., Wang, W., Gong, Q., & Li, D. (2019). Superpixel segmentation and machine learning classification algorithm for cloud detection in remote‐sensing images. The Journal of Engineering, 2019(20), 6675–6679. https://doi.org/10.1049/joe.2019.0240
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