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Acting under uncertainty: discrete Bayesian models for mobile-robot navigation

Anthony R. Cassandra, Leslie Pack Kaelbling, James Kurien

Year
2002
Citations
468

Abstract

Discrete Bayesian models have been used to model uncertainty for mobile-robot navigation, but the question of how actions should be chosen remains largely unexplored. This paper presents the optimal solution to the problem, formulated as a partially observable Markov decision process. Since solving for the optimal control policy is intractable, in general, it goes on to explore a variety of heuristic control strategies. The control strategies are compared experimentally, both in simulation and in runs on a robot.

Keywords

Partially observable Markov decision processMobile robotHeuristicMarkov decision processComputer scienceVariety (cybernetics)Bayesian probabilityRobotMarkov processArtificial intelligence

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