A fast segmentation method of sparse point clouds

Mengjie Li, Dong Yin
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引用次数: 8

Abstract

In this paper, we present a fast segmentation algorithm based on the geometric characteristics of the objects and the attribute of medium. This algorithm is not only suitable for sparse point clouds, but also for dense point clouds. It is built up of three stages: First, the range image is established from the Velodyne VLP-16 laser scanner data, which changes the sparse characteristic of data in the original space and determines the close relationship between the data points. Then, according to the geometric relation of the adjacent data points and point clouds edges distribution analysis, a region growing method is used to complete the fast segmentation of point clouds data, obtaining a series of mutually disjoint subsets. Finally, based on the laser intensity, refined segmentation of the under-segmentation subset is addressed using the K-means clustering method. The point clouds of an indoor corridor scene are used to verify the superiority of our method and compared with three typical algorithms. Experimental results prove that our method can fastly and accurately segment objects in the scene, and is not sensitive to noise and satisfactory in anti-noise performance.
稀疏点云的快速分割方法
本文提出了一种基于物体几何特征和介质属性的快速分割算法。该算法不仅适用于稀疏点云,也适用于密集点云。它由三个阶段组成:首先,从Velodyne VLP-16激光扫描仪数据中建立距离图像,改变了原始空间中数据的稀疏特性,确定了数据点之间的紧密关系。然后,根据相邻数据点的几何关系和点云边缘分布分析,采用区域增长方法完成点云数据的快速分割,得到一系列互不相交的子集;最后,基于激光强度,采用k均值聚类方法对未分割子集进行精细分割。以室内走廊场景的点云为例,验证了该方法的优越性,并与三种典型算法进行了比较。实验结果表明,该方法能够快速准确地分割场景中的目标,并且对噪声不敏感,具有良好的抗噪性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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