实现移动机器人的室内导航

N. Ko, S. Noh, Yongseon Moon
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引用次数: 7

摘要

本文介绍了一种室内移动机器人自主导航的实现方法。实现包括地图构建、路径规划、本地化、局部路径规划和避障以及路径跟踪。采用迭代最近点法(ICP),利用扫描距离数据构建网格地图。Dijkstra算法规划从初始位置到目标位置的路径。粒子滤波利用扫描的距离数据估计机器人的位置和方向。利用弹性力进行局部路径规划和避障。这些算法结合在一起,在一个工作区域100m×40m进行自主导航,该区域包括房间、走廊、行人等障碍物、许多家具和展览区域。机器人以1.0 m/sec的最高速度奔跑,255秒内通过全长165m的路径通过所有的路点到达目标位置,平均速度为0.65m/sec。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing indoor navigation of a mobile robot
This paper describes an implementation of autonomous navigation of a mobile robot indoors. The implementation includes map building, path planning, localization, local path planning and obstacle avoidance, and path tracking. ICP(Iterative closest point) is employed to build grid based map using scanned range data. Dijkstra algorithm plans path from an initial location to a goal position. Particle filter estimates the robot position and orientation using the scanned range data. Elastic force is used for local path planning and obstacle avoidance towards a goal position. The algorithms are combined for autonomous navigation in a work area of 100m×40m, which comprises rooms, corridors, obstacles like passers-by, and many furniture and exhibition area. The robot ran at the maximum speed of 1.0 m/sec, and passed all the way points and reached to goal location through the path of the length 165m in 255 seconds, with the average speed of 0.65m/sec.
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