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Learning Geometrically-Constrained Hidden Markov Models for Robot Navigation: Bridging the Topological-Geometrical Gap

Hagit Shatkay, Leslie Pack Kaelbling

Year
2002
Citations
27
Access
Open access

Abstract

Hidden Markov models (HMMs) and partially observable Markov decision processes (POMDPs) provide useful tools for modeling dynamical systems. They are particularly useful for representing the topology of environments such as road networks and office buildings, which are typical for robot navigation and planning. The work presented here describes a formal framework for incorporating readily available odometric information and geometrical constraints into both the models and the algorithm that learns them. By taking advantage of such information, learning HMMs/POMDPs can be made to generate better solutions and require fewer iterations, while being robust in the face of data reduction. Experimental results, obtained from both simulated and real robot data, demonstrate the effectiveness of the approach.

Keywords

Bridging (networking)Computer scienceHidden Markov modelRobotObservableMarkov decision processMarkov chainArtificial intelligenceTopology (electrical circuits)Partially observable Markov decision process

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