基于平面的三维点云配准

Junhao Xiao, B. Adler, Houxiang Zhang
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引用次数: 46

摘要

本文的研究重点是在混乱的城市环境中实现三维点云的快速配准。该流程主要分为三个步骤:首先,采用快速区域增长平面分割算法提取平面;然后利用组织点云的类图像结构计算各平面斑块的面积;最后,将配准定义为一个关联问题,利用几何一致性将启发式搜索与剪枝相结合的搜索算法在SO(3)∪R3的子集中寻找全局最优解,并在找到解后使用加权最小二乘对变换进行细化。由于遍历了所有可能的变换,因此不需要来自其他传感器(如odometry或IMU)的先前姿态估计,使其具有鲁棒性,可以处理大旋转。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D point cloud registration based on planar surfaces
This paper focuses on fast 3D point cloud registration in cluttered urban environments. There are three main steps in the pipeline: Firstly a fast region growing planar segmentation algorithm is employed to extract the planar surfaces. Then the area of each planar patch is calculated using the image-like structure of organized point cloud. In the last step, the registration is defined as a correlation problem, a novel search algorithm which combines heuristic search with pruning using geometry consistency is utilized to find the global optimal solution in a subset of SO(3) ∪ R3, and the transformation is refined using weighted least squares after finding the solution. Since all possible transformations are traversed, no prior pose estimation from other sensors such as odometry or IMU is needed, makeing it robust and can deal with big rotations.
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