Infrared and Laser Engineering, Volume. 49, Issue 11, 20200292(2020)
Land cover classification using ICESat-2 data with random forest
ICESat-2 data was considered as a new land cover classification data source, and a method was proposed to classify land cover using ICESat-2 data with random forest, to explore the application potential of the space-borne photon counting lidar in the land cover classification. The method used the photon number, the proportion of horizontal and vertical distribution of different types of photons, signal-to-noise ratio, solar conditions and atmospheric conditions as the input of classification, and was verified by the experiment of multi-category land cover in China's Yangtze River Delta. For four categories of water, forest, low vegetation and urban/barren, the classification results show that the overall accuracy of strong beam and weak beam is better than 85%. For three categories of water, forest, and low vegetation/urban/barren, the classification results show that the overall accuracy of strong beam and weak beam is better than 90%.
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Binbin Li, Huan Xie, Xiaohua Tong, Dan Ye, Kaipeng Sun, Ming Li. Land cover classification using ICESat-2 data with random forest[J]. Infrared and Laser Engineering, 2020, 49(11): 20200292
Category: Issue-Space-borne laser altimetry technology
Received: Jul. 1, 2020
Accepted: --
Published Online: Jan. 4, 2021
The Author Email: Xie Huan (huanxie@tongji.edu.cn)