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Exploiting Qualitative Spatial Constraints for Multi-hypothesis Topological Map Learning

机译:利用质性空间约束进行多假设拓扑图学习

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Topological maps are graph-based representations of space and have been considered as an alternative to metric representations in the context of robot navigation. In this work, we seek to improve on the lack of robustness of current topological mapping systems against ambiguity in the available information about the environment. For this purpose, we develop a topological mapping system that tracks multiple graph hypotheses simultaneously. The feasibility of the overall approach depends on a reduction of the search space by exploiting spatial constraints. We here consider qualitative direction information and the assumption that the map has to be planar. Qualitative spatial reasoning techniques are used to check the satisfiability of individual hypotheses. We evaluate the effects of absolute and relative direction information using relations from two different qualitative spatial calculi and combine the approach with a topological mapping system based on Voronoi graphs realized on a real robot.
机译:拓扑图是基于图形的空间表示,在机器人导航的背景下,拓扑图已被视为度量表示的替代方法。在这项工作中,我们试图改善当前拓扑映射系统缺乏的鲁棒性,以防止有关环境的可用信息中的歧义。为此,我们开发了可同时跟踪多个图假设的拓扑映射系统。整体方法的可行性取决于通过利用空间约束来减少搜索空间。我们在这里考虑定性方向信息以及地图必须是平面的假设。定性空间推理技术用于检查各个假设的可满足性。我们使用来自两个不同定性空间计算的关系来评估绝对方向信息和相对方向信息的效果,并将该方法与基于在真实机器人上实现的Voronoi图的拓扑映射系统相结合。

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