Lidar Scan matching EKF-SLAM using the differential model of vehicle motion

Daobin Wang, Huawei Liang, Tao Mei, Hui Zhu, Jing Fu, Xiang Tao
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引用次数: 25

Abstract

Simultaneous localization and mapping is a mobile robot positioning themselves and creating the map of the environment at the same time, which is the core problem of the vehicle achieve the authentic intelligent. EKF-SLAM is a widely used SLAM algorithm based on the extended Kaiman Alter. The EKF-SLAM proposed in this paper based on the differential model of vehicle motion, which consider the vehicle trajectory as many small straight Une segments. The algorithm effectively reduce the positioning error compared with the dead reckoning and has more simplified and generic model compared with the EKF-SLAM algorithm based on vehicle kinematics model. Meanwhile, it has a lower requirements on the hardware acquisition system. The algorithm is more robust than the traditional EKF-SLAM So the algorithm will have a certain reference value on the SLAM research and provide a new way on the SLAM research based on the differential model of vehicle motion.
基于车辆运动差分模型的激光雷达扫描匹配EKF-SLAM
同时定位与测绘是移动机器人在对自身进行定位的同时,创建环境地图,这是车辆实现真正智能的核心问题。EKF-SLAM是一种基于扩展Kaiman Alter的广泛应用的SLAM算法。本文提出了基于车辆运动差分模型的EKF-SLAM,该模型将车辆轨迹视为许多小的直线段。与航位推算相比,该算法有效地减小了定位误差,与基于车辆运动学模型的EKF-SLAM算法相比,该算法具有更简化和通用的模型。同时,对硬件采集系统的要求较低。该算法比传统的EKF-SLAM具有更强的鲁棒性,对SLAM研究具有一定的参考价值,为基于车辆运动差分模型的SLAM研究提供了一种新的途径。
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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