Knowing your place in real world environments

Tom Duckett, U. Nehmzow
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引用次数: 10

Abstract

The topic of mobile robot self-localisation is usually divided into the sub-problems of global localisation and position tracking. Both are now well understood individually, but few mobile robots can deal simultaneously with the two problems in large, complex environments. While efficient solutions have been found for metric maps, topological maps have, by nature of their compactness, the potential for representing environments which are several orders of magnitude larger than those which can be tractably navigated using metric maps. In this paper, we present a unified approach to global localisation and position tracking which is based on a topological map augmented with metric information. The method was validated through a series of experiments conducted in four real-world environments, including its integration into a complete navigating mobile robot. Quantitative performance measures were used to assess localisation quality versus computational efficiency. The results show that our robot can localise and navigate reliably in large, complex environments using only minimal computational resources.
了解自己在现实世界中的位置
移动机器人的自定位问题通常分为全局定位和位置跟踪两个子问题。这两个问题现在都被单独理解了,但是很少有移动机器人能够在大型复杂环境中同时处理这两个问题。虽然已经为度量地图找到了有效的解决方案,但拓扑地图由于其紧凑性的性质,有可能表示比使用度量地图可跟踪导航的环境大几个数量级的环境。在本文中,我们提出了一种统一的全局定位和位置跟踪方法,该方法基于增强了度量信息的拓扑地图。该方法通过在四个现实环境中进行的一系列实验进行了验证,包括将其集成到一个完整的导航移动机器人中。定量性能指标用于评估本地化质量与计算效率。结果表明,我们的机器人可以在大型复杂环境中使用最少的计算资源进行可靠的定位和导航。
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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