基于多特征的多自适应激光雷达里程计

Gao Junjie, Lv Fu, Liu Jun, Chen Jie
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引用次数: 0

摘要

针对当前基于特征的激光雷达测程算法难以实现基于稀疏特征的高精度,且难以同时适应不同类型激光雷达的问题,提出了一种基于多特征的多自适应激光雷达测程算法(MFMA-LOAM)。除了传统的边缘点和平面点外,还提取了强度点和地点作为补充特征。其中,基于激光雷达强度反射信息提取符合要求的强度点特征。改进了地面特征提取方法,利用估计的法向量实现多类型激光雷达的同步自适应。在保证可接受的速度的同时,提高对准精度,采用两阶段对准方法完成定位计算,增加特征权值提高对准精度,采用分类最近邻搜索加快对准速度。最后,分别使用KITTI数据集和自采集数据集进行实验验证;实验结果表明,MFMA-LOAM算法具有较好的实时性,比传统的基于特征的算法更精确,可以同时适用于固态激光雷达和机械激光雷达。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Feature Base Multi-Adaptation Lidar Odometry
To address the problems that the current feature-based lidar odometry algorithms have difficulties in achieving high accuracy based on sparse features and adapting to different kinds of lidar at the same time, a multi-adaptation lidar odometry algorithm based on multi-features (MFMA-LOAM) is proposed. In addition to the traditional edge points and plane points, intensity points and ground points are extracted as supplementary features. Among them, the intensity point features that meet the requirements are extracted based on lidar intensity reflection information. The ground feature extraction method is improved by using the estimated normal vector to achieve simultaneous adaptation of multiple types of lidar. Further, in order to ensure acceptable speed and improve the alignment accuracy at the same time, a two-stage alignment method is applied to complete the positional calculation, in which feature weights are added to improve the alignment accuracy and categorical nearest neighbor search is used to speed up the alignment. Finally, experimental validation is carried out using the KITTI dataset and the self-collected dataset respectively; the experimental results show that the MFMA-LOAM algorithm with satisfactory real-time performance is more accurate than related classical feature-based algorithms and can be adapted to both solid-state lidar and mechanical lidar at the same time.
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