Global path planning for autonomous qualitative navigation

N. Vlassis, N. Sgouros, G. Efthivoulidis, G. Papakonstantinou, P. Tsanakas
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引用次数: 26

Abstract

We describe a novel global path planning method for autonomous qualitative navigation in indoor environments. Global path planning operates on top of a qualitative map of the environment that describes variations in sensor behavior between adjacent regions in space. The method takes into consideration the global topology of the environment and applies a set of criteria that can minimize the errors in the navigational accuracy of a robotic wheelchair. Our approach uses a modified version of the Dijkstra's shortest path algorithm that takes into consideration the curvature of the trajectory and the off-wall distance of the map points. The algorithm computes in real-time a set of optimal paths for reaching the destination. We have tested our global path planning method in simulation in representative indoor environments with above average complexity. Based on these experiments we have determined empirically a set of values for the parameters of the algorithm that almost always lead to the selection of optimal paths in these environments.
自主定性导航的全局路径规划
提出了一种新的室内自主定性导航全局路径规划方法。全局路径规划在描述空间中相邻区域之间传感器行为变化的环境定性地图上运行。该方法考虑了环境的全局拓扑结构,并应用了一套能使机器人轮椅导航精度误差最小化的准则。我们的方法使用了Dijkstra最短路径算法的改进版本,该算法考虑了轨迹的曲率和地图点的离壁距离。该算法实时计算到达目的地的一组最优路径。我们已经在具有代表性的室内环境中对我们的全局路径规划方法进行了仿真测试。基于这些实验,我们经验地确定了一组算法参数的值,这些参数几乎总是导致在这些环境中选择最优路径。
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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