Lidar-based Simultaneous Localization and Mapping in Dynamic Environments

Binbin Feng, Chunyun Fu, L. Liao, Yun Zhu
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Abstract

In this paper, we propose a method of simultaneous localization and mapping (SLAM) based on Lidar, which can improve the accuracy of vehicle pose estimation in a dynamic environment. This method is composed of three modules. The first module is a Lidar odometry with static weight, namely Static Weight Normal Distribution Transform (SW-NDT). Static weight describes the probability that a point cloud belongs to a static object. To reduce the adverse effects of point clouds generated by dynamic objects on pose estimation, static weights are added to Normal Distribution Transform (NDT). The second module is back-end optimization. Scan Context is applied to detect whether a closed loop is formed between the current and historical frames. If a closed loop is detected, pose graph optimization is performed to optimize the poses of all key frames in the closed loop. The third module joins point clouds of the key frames to form a global map according to the optimized poses. For validation of the method proposed in this paper, KITTI dataset is utilized. The results show that the method proposed herein outperforms the other three methods in positioning accuracy.
动态环境下基于激光雷达的同步定位与制图
本文提出了一种基于激光雷达的同步定位与测绘方法,提高了动态环境下车辆姿态估计的精度。该方法由三个模块组成。第一个模块是具有静态重量的激光雷达里程计,即静态重量正态分布变换(SW-NDT)。静态权重描述点云属于静态对象的概率。为了减少动态物体产生的点云对姿态估计的不利影响,在正态分布变换(NDT)中加入了静态权值。第二个模块是后端优化。扫描上下文用于检测当前帧和历史帧之间是否形成闭环。如果检测到闭环,则进行位姿图优化,优化闭环中所有关键帧的位姿。第三个模块根据优化后的姿态,将关键帧的点云连接起来,形成全局地图。为了验证本文提出的方法,使用了KITTI数据集。结果表明,该方法在定位精度上优于其他三种方法。
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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