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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Estimation of 2-D Clutter Maps in Complex Under-Canopy Environments From Airborne Discrete-Return Lidar
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Estimation of 2-D Clutter Maps in Complex Under-Canopy Environments From Airborne Discrete-Return Lidar

机译:机载离散返回激光雷达在复杂下罩环境中的二维杂波图估计

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摘要

Detection of near-ground objects occluded by above-ground vegetation from airborne light detection and ranging (lidar) measurements remains challenging. Our hypothesis is that the probability of obstruction due to objects above ground at any location in the forest environment can be reasonably characterized solely from airborne lidar data. The essence of our approach is to develop a data-driven learning scheme that creates high-resolution two-dimensional (2-D) probability maps for obstruction in the under-canopy environment. These maps contain information about the probabilities of obstruction (clutter map) and lidar undersampling (uncertainty map) in the near-ground space. Airborne and terrestrial lidar data and field survey data collected within the forested mountainous environment of Shenandoah National Park, Virginia, USA are utilized to test and evaluate the proposed approach in this work. A newly developed individual tree detection algorithm is implemented to estimate the undersampled stem contributions to the probability of obstruction. Results show the effectiveness of the tree detection algorithm with an accuracy index (AI) of between 61.5% and 80.7% (tested using field surveys). The estimated clutter maps are compared to the maps created from terrestrial scans (i.e., ground truth) and the results show the root-mean-square error (RMSE) of 0.28, 0.32, and 0.34 at three study sites. The overall framework in deriving near-ground clutter and uncertainty maps from airborne lidar data would be useful information for the prediction of line-of-sight visibility, mobility, and above-ground forest biomass.
机译:从机载光检测和测距(激光)测量中检测地上植被遮挡的近地物体仍然具有挑战性。我们的假设是,仅通过机载激光雷达数据就可以合理地描述在森林环境中任何位置由于地面以上物体造成的阻塞的可能性。我们方法的本质是开发一种数据驱动的学习方案,该方案可创建高分辨率二维(2-D)概率图,用于遮盖不足的环境。这些地图包含有关近地面空间中的障碍物(杂波图)和激光雷达欠采样(不确定性图)的概率的信息。在美国弗吉尼亚州谢南多厄国家公园的森林山区环境中收集的机载和地面激光雷达数据以及野外调查数据被用于测试和评估这项工作中提出的方法。实施了新开发的个体树检测算法,以估计采样不足的茎对阻塞概率的影响。结果表明,树状检测算法的有效性指数(AI)在61.5%至80.7%之间(使用现场调查进行测试),是有效的。将估计的杂波图与通过地面扫描创建的图(即地面真相)进行比较,结果显示三个研究地点的均方根误差(RMSE)为0.28、0.32和0.34。从机载激光雷达数据得出近地杂波图和不确定性图的总体框架,对于预测视线可见度,流动性和地上森林生物量将是有用的信息。

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