PoU based sharp features extraction from point cloud

Cao Juming, Wushour Slam, Liang Jin, Liang Xinhe, Zhang Dehai, L. Jianwei, Yao Xinhui
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引用次数: 0

Abstract

Sharp features of 3D point clouds play an important role in many geometric computations and modeling application. In this paper, a novel modified Partition of Unity (PoU) Based Sharp feature extraction algorithm is proposed, which is directly operated on discrete point clouds. For every point in target point cloud, spherical neighborhood with radius δ is acquired with the help of KD-Tree and weighted average position of points within the δ -neighborhood is computed using modified PoU method. Distance which is the projection of the displace between original point and its Weighted average position along normal direction is defined as the criteria for a point belong to sharp feature or crease line. Experiments on both synthetic data and practical scanner point clouds indicate that our algorithm are both efficient and effective to the task of sharp feature extraction from point clouds. Our method is easy to be implemented and more sensitive to sharp features as well as its low computational complexity.
基于PoU的点云尖锐特征提取
三维点云的鲜明特征在许多几何计算和建模应用中起着重要作用。本文提出了一种改进的基于统一分割(PoU)的尖锐特征提取算法,该算法直接对离散点云进行操作。对于目标点云中的每个点,利用KD-Tree获得半径为δ的球面邻域,并利用改进的PoU方法计算δ邻域内点的加权平均位置。距离是原始点与其加权平均位置在法线方向上的位移的投影,它被定义为一个点属于尖锐特征或折痕线的标准。在合成数据和实际扫描点云上的实验表明,该算法对点云的尖锐特征提取是有效的。该方法易于实现,对尖锐特征更敏感,且计算复杂度低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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