A Novel Global Localization Method Using 3D Laser Range Data in Large-Scale and Sparse Environments

Ming Zhao, Jingchuan Wang, Weidong Chen, Hesheng Wang
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引用次数: 1

Abstract

In large-scale and sparse environments, such as farmlands, orchards, mines and electrical substations, global localization based on particle filter framework without any prior knowledge still remains a challenging problem. Some issues such as speeding up the convergence of particles and improving the convergence accuracy in similar scenes need to be addressed. This paper proposes a novel global localization method, which treats the global localization problem as place recognition and pose estimation problem. Specifically, we firstly utilize the random forests algorithm to train a classifier to predict whether two 3D LiDAR observations are from the same place. Then, the classifier is used to match the current observation with the prior map to estimate the possible initial pose of the robot. Finally, a multiple hypotheses particle filter algorithm is proposed to achieve final localization. Experimental scenes are selected in the indoor parking lot with high dynamic characteristics and two electrical substations with the characteristics of sparse and large-scale. The experimental results show that the proposed algorithm has faster convergence speed and higher accuracy.
一种基于三维激光距离数据的大尺度稀疏环境全局定位方法
在农田、果园、矿山、变电站等大规模稀疏环境中,缺乏先验知识的基于粒子滤波框架的全局定位仍然是一个具有挑战性的问题。加快粒子的收敛速度和提高相似场景下的收敛精度等问题需要解决。本文提出了一种新的全局定位方法,将全局定位问题视为位置识别和姿态估计问题。具体来说,我们首先利用随机森林算法训练分类器来预测两个3D LiDAR观测是否来自同一地点。然后,使用分类器将当前观测值与先验地图进行匹配,以估计机器人可能的初始姿态。最后,提出了一种多假设粒子滤波算法来实现最终定位。实验场景选择在具有高动态特性的室内停车场和两个具有稀疏和大规模特征的变电站。实验结果表明,该算法具有更快的收敛速度和更高的精度。
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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