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Multi-Level Interpolation-Based Filter for Airborne LiDAR Point Clouds in Forested Areas

机译:基于多级插值的森林区域空气激光雷达云滤波器

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摘要

Over the past decades, plenty of filtering algorithms have been presented to distinguish ground and non-ground points from airborne LiDAR point clouds. However, with the existing methods, it is difficult to derive satisfactory filtering results on rugged terrains with dense vegetation due to the low-level penetration ability of laser pulses. Therefore, a multi-level interpolation-based filter is developed in this paper. The novelty of the algorithm lies within its usage of multi-scale morphological operations and robust z-score to correctly select ground seeds as more as possible, and a terrain-adaptive residual threshold to adapt to various terrain characteristics. Rural samples provided by International Society for Photogrammetry and Remote Sensing (ISPRS) were employed to assess the performance of the proposed method and its results were compared with 15 filtering algorithms developed in recent 5 years (2015-2019). Results show that the proposed method with the optimized parameters produces the best accuracy with the average total error and kappa coefficient of 1.89 & x0025; and 87.88 & x0025;, respectively. We further filtered high-density point clouds in six forested areas with different vegetation covers and terrain slopes. Results demonstrate that the proposed algorithm is more accurate than the well-known filtering methods including morphological-based filter, progressive TIN densification filter (PTD), improved PTD and cloth simulation filter, with the average total error decreased by 26.2 & x0025;, 19.9 & x0025;, 3.8 & x0025; and 40.4 & x0025;, respectively. Moreover, the DEMs of the proposed method have lower average root mean square errors than the four classical filters. Therefore, the proposed method can be considered as an effective ground filtering algorithm for airborne LiDAR point clouds in forested areas.
机译:在过去的几十年中,已经提出了大量的过滤算法,以区分从机载激光脉云的地面和非接地点。然而,通过现有方法,由于激光脉冲的低水平渗透能力,难以导出具有浓密植被的崎岖地形的令人满意的过滤结果。因此,本文开发了一种基于多级内插的滤波器。该算法的新颖性在于其使用多尺度形态操作和鲁棒Z分数,以便更努力地选择地面种子,以及适应各种地形特性的地形自适应残余阈值。采用国际摄影和遥感协会(ISPRS)提供的农村样本来评估所提出的方法的性能,其结果与最近5年(2015-2019)开发的15个过滤算法进行了比较。结果表明,具有优化参数的提出方法产生最佳精度,平均总误差和κ系数为1.89&x0025;分别为87.88&x0025;我们进一步过滤了六个森林区域的高密度点云,不同的植被盖和地形斜坡。结果表明,所提出的算法比众所周知的过滤方法更准确,包括基于形态学的滤波器,渐进式锡致密滤波器(PTD),改进的PTD和布模拟过滤器,平均误差下降26.2&x0025; 19.9 &x0025 ;,3.8和x0025;和40.4&x0025;分别。此外,所提出的方法的DEM具有比四种经典过滤器更低的平均均方根误差。因此,所提出的方法可以被认为是用于森林区域中的机载LIDAR点云的有效地面过滤算法。

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