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Forest signal detection for photon counting LiDAR using Random Forest

机译:使用随机森林的光子计数LiDAR的森林信号检测

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摘要

ICESat (The Ice, Cloud, and Land Elevation Satellite)-2, as the new generation of NASA (National Aeronautics and Space Administration)?s ICESat mission, had been successfully launched in September 2018. The sensor onboard the satellite is a newly designed photon counting LiDAR (Light Detection And Ranging) system for the first time used in space. From the currently?released airborne simulation data, it can be seen that there exist numerous noise photons scattering from the atmosphere to even below the ground, especially for the vegetation areas. Therefore, relevant research on methods to distinguish the signal photons effectively?is crucial for further forestry applications. In this paper, a machine learning based approach was proposed to detect the potential signal photons from 14 MATLAS datasets across 3 sites in the USA. We found that k-NN (k-Nearest Neighbour) distance and the reachability of the photon towards the nearby signal centre showed good stability and contributed to a robust model establishment. The relevant quantitative assessment demonstrated that the machine learning approach could achieve high detection accuracy over 85% based on a very limited number of samples even in rough terrain conditions. Further analysis proved the potential of model transferability across different sites.
机译:作为新一代NASA(美国国家航空航天局)的ICESat任务,ICESat(冰,云和陆地高程卫星)-2已于2018年9月成功发射。卫星上的传感器是新设计的光子计数LiDAR(光探测与测距)系统首次在太空中使用。从目前发布的机载模拟数据可以看出,存在大量的噪声光子从大气散射到地面甚至地下,特别是对于植被区域。因此,有关有效区分信号光子的方法的相关研究对于进一步的林业应用至关重要。在本文中,提出了一种基于机器学习的方法来检测来自美国3个站点的14个MATLAS数据集的潜在信号光子。我们发现k-NN(k最近邻)距离和光子对附近信号中心的可达性显示出良好的稳定性,并为建立稳健的模型做出了贡献。相关的定量评估表明,即使在崎terrain的地形条件下,基于数量非常有限的样本,机器学习方法也可以实现超过85%的高检测精度。进一步的分析证明了模型在不同站点之间的可移植性的潜力。

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    《Remote sensing letters》 |2020年第3期|37-46|共10页
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    Chinese Acad Sci Inst Remote Sensing & Digital Earth Key Lab Digital Earth Sci Beijing Peoples R China|Chinese Acad Forestry Inst Forest Resource Informat Tech Beijing Peoples R China;

    Chinese Acad Forestry Inst Forest Resource Informat Tech Beijing Peoples R China;

    Beijing Forestry Univ Sch Informat Sci & Technol Beijing Peoples R China;

    Swansea Univ Dept Geog GEMEO Swansea W Glam Wales;

    Chinese Acad Sci Inst Remote Sensing & Digital Earth Key Lab Digital Earth Sci Beijing Peoples R China;

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