Inertial Aided 3D LiDAR SLAM with Hybrid Geometric Primitives in Large-scale Environments

Wen Chen, Hongchao Zhao, Qihui Shen, Chao Xiong, Shunbo Zhou, Yunhui Liu
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引用次数: 2

Abstract

This paper presents a comprehensive inertial aided 3D LiDAR SLAM system with hybrid geometric primitives in large-scale environments, including a tightly-coupled LiDAR-Inertial-Odometry (LIO), a global mapping module supported by learning-based loop closure detection and a sub-maps matching algorithm. An efficient method is developed to simultaneously extract explicit plane features and point features from each raw point cloud. To make full use of the structural information of the surroundings, plane features and point features (ground and edge) are tracked across a fix-sized group of LiDAR keyframes in the local map. For effective loop closure detection in large-scale environments, we integrate the learning-based point cloud network and a keyframe sequence matching method to detect loops. Finally, a novel, deterministic and near real-time plane-driven sub-maps matching algorithm is proposed to close the loops. The proposed SLAM system is validated with experiments on different types of environments.
大尺度环境下混合几何基元的惯性辅助三维激光雷达SLAM
本文提出了一种基于混合几何基元的大规模环境下综合惯性辅助3D LiDAR SLAM系统,包括LiDAR- inertial - odometry (LIO)紧密耦合、基于学习的闭环检测支持的全局映射模块和子地图匹配算法。提出了一种从原始点云中同时提取显式平面特征和点特征的有效方法。为了充分利用周围环境的结构信息,在局部地图的一组固定大小的LiDAR关键帧中跟踪平面特征和点特征(地面和边缘)。为了在大规模环境中有效地检测环路,我们将基于学习的点云网络与关键帧序列匹配方法相结合来检测环路。最后,提出了一种新颖的、确定性的、近实时的平面驱动子地图匹配算法来实现闭环。通过不同环境下的实验对所提出的SLAM系统进行了验证。
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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