Home /Research /A Maximum Likelihood Approach to Extract Finite Planes from 3-D Laser Scans
PERCEPTION

A Maximum Likelihood Approach to Extract Finite Planes from 3-D Laser Scans

Year
2019
Citations
8

Abstract

Whether it is object detection, model reconstruction, laser odometry, or point cloud registration: Plane extraction is a vital component of many robotic systems. In this paper, we propose a strictly probabilistic method to detect finite planes in organized 3-D laser range scans. An agglomerative hierarchical clustering technique, our algorithm builds planes from bottom up, always extending a plane by the point that decreases the measurement likelihood of the scan the least. In contrast to most related methods, which rely on heuristics like orthogonal point-to-plane distance, we leverage the ray path information to compute the measurement likelihood. We evaluate our approach not only on the popular SegComp benchmark, but also provide a challenging synthetic dataset that overcomes SegComp's deficiencies. Both our implementation and the suggested dataset are available at [1].

Keywords

Point cloudLeverage (statistics)Cluster analysisHeuristicsPlane (geometry)Pattern recognition (psychology)Path (computing)Probabilistic logicPoint (geometry)Laser

Related papers

Browse all PERCEPTION papers