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基于激光雷达点云最优向量场的平面分割

Plane Segmentation Based on the Optimal-Vector-Field in LiDAR Point Clouds.

作者信息

Xu Sheng, Wang Ruisheng, Wang Hao, Yang Ruigang

出版信息

IEEE Trans Pattern Anal Mach Intell. 2021 Nov;43(11):3991-4007. doi: 10.1109/TPAMI.2020.2994935. Epub 2021 Oct 1.

Abstract

One key challenge in the point cloud segmentation is the detection and split of overlapping regions between different planes. The existing methods depend on the similarity and the dissimilarity in neighbor regions without a global constraint, which brings the 'over-' and 'under-' segmentation in the results. Hence, this paper presents a pipeline of the accurate plane segmentation for point clouds to address the shortcoming in the local optimization. There are two phases included in the proposed segmentation process. One is a local phase to calculate connectivity scores between different planes based on local variations of surface normals. In this phase, a new optimal-vector-field is formulated to detect the plane intersections. The optimal-vector-field is large in magnitude at plane intersections and vanishing at other regions. The other one is a global phase to smooth local segmentation cues to mimic leading eigenvector computation in the graph-cut. Evaluation of two datasets shows that the achieved precision and recall is 94.50 percent and 90.81 percent on the collected mobile LiDAR data and obtains an average accuracy of 75.4 percent on an open benchmark, which outperforms the state-of-the-art methods in terms of completeness and correctness.

摘要

点云分割中的一个关键挑战是检测和分割不同平面之间的重叠区域。现有方法依赖于邻域区域的相似性和相异性,缺乏全局约束,这导致结果中出现“过度分割”和“分割不足”的情况。因此,本文提出了一种用于点云的精确平面分割流程,以解决局部优化中的缺点。所提出的分割过程包括两个阶段。一个是局部阶段,基于表面法线的局部变化计算不同平面之间的连通性得分。在这个阶段,构建了一个新的最优向量场来检测平面相交处。最优向量场在平面相交处幅度较大,在其他区域消失。另一个是全局阶段,对局部分割线索进行平滑处理,以模拟图割中的主导特征向量计算。对两个数据集的评估表明,在收集的移动激光雷达数据上,实现的精度和召回率分别为94.50%和90.81%,在一个公开基准测试中平均准确率为75.4%,在完整性和正确性方面优于现有方法。

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