通过法向量和最大主曲率聚类增强基于 RANSAC 的平面点云分割功能

Yibo Ling, Yuli Wang, Ting On Chan
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引用次数: 0

摘要

摘要平面特征分割是三维点云处理的一项基本任务,在机器人和计算机视觉等多个领域都有广泛应用。随机抽样共识算法(RANSAC)是最常用的分割算法之一,但由于使用单一阈值以及相似的平面特征彼此靠近而被中断,其性能(如原始形式所示)通常受到限制。为了解决这些问题,我们提出了一种新颖的点云处理工作流程,其目的是在执行基本的 RANSAC 之前开发一个初始分割阶段。首先,对给定点云中每个点的法向量和最大主曲率进行分析和整合。随后,利用法向量和曲率的子集,根据区域生长算法对几何形状相似的平面进行聚类,作为一个粗略但快速的分割过程。因此,利用 RANSAC 算法对分割进行细化,由于减少了干扰,现在可以以更高的精度和速度进行分割。应用 RANSAC 算法后,通过基于几何约束的点聚合过程,从稀疏点云中生成平面点云。我们使用了四个数据集(三个真实数据集和一个模拟数据集)来验证该方法。与传统的分割方法相比,我们的方法获得了更高的精确度,拟合的 RMSE 等于 0.0521 m,召回率高达 93.31%,F1 分数高达 95.38%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RANSAC-Based Planar Point Cloud Segmentation Enhanced by Normal Vector and Maximum Principal Curvature Clustering
Abstract. Planar feature segmentation is an essential task for 3D point cloud processing, finding many applications in various fields such as robotics and computer vision. The Random Sample Consensus (RANSAC) is one of the most common algorithms for the segmentation, but its performance, as given by the original form, is usually limited due to the use of a single threshold and interruption of similar planar features presented close to each other. To address these issues, we present a novel point cloud processing workflow which aims at developing an initial segmentation stage before the basic RANSAC is performed. Initially, normal vectors and maximum principal curvatures for each point of a given point cloud are analyzed and integrated. Subsequently, a subset of normal vectors and curvature is utilized to cluster planes with similar geometry based on the region growing algorithm, serving as a coarse but fast segmentation process. The segmentation is therefore refined with the RANSAC algorithm which can be now performed with higher accuracy and speed due to the reduced interference. After the RANSAC process is applied, resultant planar point clouds are built from the sparse ones via a point aggregation process based on geometric constraints. Four datasets (three real and one simulated) were used to verify the method. Compared to the classic segmentation method, our method achieves higher accuracy, with an RMSE from fitting equal to 0.0521 m, along with a higher recall of 93.31% and a higher F1-score of 95.38%.
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