基于核密度估计的机载LiDAR点云离群点检测

Xiangrui Tian, Lijun Xu, Xiaolu Li, Lili Jing, Yan Zhao
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引用次数: 3

摘要

提出了一种基于核密度估计的离群点检测方法,用于去除机载激光雷达点云中的离群点。点云被分成许多块。然后,在每个块中,估计所有点的高度值的核概率密度。根据概率密度值和高程值选择低离群值和高离群值两个高程阈值。该方法不注重对单个点的计算,简化了计算的复杂度。两个数据集被用来测试我们的方法。该方法结合了基于距离的方法和基于密度的方法。实验表明,该方法具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A kernel-density-estimation-based outlier detection for airborne LiDAR point clouds
An outlier detection method is proposed based on the kernel density estimation for removing the outliers in airborne LiDAR point clouds. The point cloud is divided into many blocks. Then, in each block, the kernel probability density of the height values of all points is estimated. Two elevation thresholds, one for low outliers and one for high outliers, are selected based on the values of the probability density and the values of elevation. The computation is simplified in complexity for the method doses not focus on the calculation of individual points. Two datasets were utilized to test our method. This method combines distance-based method with density-based method. Experiments showed that our proposed method had good performance.
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