Cognitively adequate topological robot localization and mapping

P. Corcoran, M. Bertolotto, J. Leonard
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Abstract

Simultaneous Localization and Mapping (SLAM) is a fundamental problem in the field of robotics which concerns mapping an environment or space while simultaneously localizing within this map. Given that one of the major goals of robotics is to perform tasks commonly performed by humans, we argue that SLAM methods should be cognitively adequate; that is, they should model the same properties of a space as the human cognition models. Topological properties are considered the most fundamental of those modelled by the human cognition. Therefore in order to achieve cognitive adequacy such properties must be modelled explicitly. Research in the domain of spatial cognition has demonstrated that the topological properties modelled by the human cognition can be quantified using the Egenhofer Nine-Intersection Model (9-IM). In this work we propose a conceptual SLAM method which models the same properties as the 9-IM. Relative to existing topological SLAM methods, which model a single topological property of connectivity between locations, this method achieves a stronger degree of cognitive adequacy.
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认知上足够的拓扑机器人定位和映射
同时定位和映射(SLAM)是机器人领域的一个基本问题,它涉及映射环境或空间,同时在该地图内进行定位。鉴于机器人的主要目标之一是执行通常由人类执行的任务,我们认为SLAM方法应该在认知上是足够的;也就是说,它们应该模拟与人类认知模型相同的空间属性。拓扑属性被认为是人类认知模型中最基本的属性。因此,为了实现认知充分性,这些属性必须明确建模。空间认知领域的研究表明,人类认知建模的拓扑属性可以用Egenhofer九交模型(9-IM)来量化。在这项工作中,我们提出了一个概念性SLAM方法,该方法模拟了与9-IM相同的属性。相对于现有的拓扑SLAM方法,该方法实现了更强的认知充分性。
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