Learning navigation situations using roadmaps

M. Piaggio, R. Zaccaria
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引用次数: 3

Abstract

The roadmap approach to robot path planning is one of the earliest methods. Since then, many different algorithms for building roadmaps have been proposed and widely implemented in mobile robots but their use has always been limited to planning in static, totally known environments. In this paper we combine the use of dynamic analogical representations of the environment with an efficient roadmap extraction method, to guide the robot navigation and to classify and learn the different navigation situation it encounters. The paper presents the general reference architecture for the robotic system and then focuses on the algorithms for the construction of the roadmap, the classification of the regions of space and their use in robot navigation. Experimental results are also discussed.
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使用路线图学习导航情况
机器人路径规划的路线图方法是最早的方法之一。从那时起,许多不同的算法被提出并广泛应用于移动机器人,但它们的使用一直局限于在静态的,完全已知的环境中进行规划。在本文中,我们将环境的动态类比表示与有效的路线图提取方法相结合,引导机器人导航,并对其遇到的不同导航情况进行分类和学习。本文介绍了机器人系统的一般参考体系结构,然后重点介绍了路线图的构建算法、空间区域的分类算法及其在机器人导航中的应用。并对实验结果进行了讨论。
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