期刊
KNOWLEDGE-BASED SYSTEMS
卷 119, 期 -, 页码 257-272出版社
ELSEVIER
DOI: 10.1016/j.knosys.2016.12.016
关键词
Semantic maps; Mobile robots; Symbol grounding; Conditional random fields; Ontologies; Uncertainty handling
资金
- Andalusia Regional Government - European Regional Development's funds (FEDER) [TEP2012-530]
- Spanish Government - European Regional Development's funds (FEDER) [DPI2014-55826-R]
Semantic maps augment metric -topological maps With meta -information, i.e. 1 semantic knowledge aimed at the planning and execution of high-level robotic tasks. Semantic knowledge typically encodes humanlike concepts, like types of objects and rooms, which are connected to sensory data when symbolic representations of percepts from the robot workspace are grounded to those concepts. Such a symbol grounding is usually carried out by algorithms that individually categorize each symbol and provide a crispy outcome a symbol is either a member of a category or not. Such approach is valid for a variety of tasks, but it fails at: (i) dealing with the uncertainty inherent to the grounding process, and (ii) jointly exploiting the contextual relations among concepts (e.g. microwaves are usually in kitchens). This work provides a solution for probabilistic symbol grounding that overcomes these limitations. Concretely, we rely on Conditional Random Fields (CRFs) to model and exploit contextual relations, and to provide measurements about the uncertainty coming from the possible groundings in the font of beliefs (e.g. an object can be categorized (grounded) as a microwave or as a nightstand with beliefs 0.6 and 0.4, respectively). Our solution is integrated into a novel semantic map representation called Multiversal Semantic Map (MvSmap), which keeps the sets of different groundings, or universes, as instances of ontologies annotated with the obtained beliefs for their posterior exploitation. The suitability of our proposal has been proven with the Robot@Home dataset, a repository that contains challenging multi-modal sensory information gathered by a mobile robot in home environments. (C) 2016 Elsevier B.V. All rights reserved.
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