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Coastal Navigation with Mobile Robots

Nicholas Roy, Sebastian Thrun

发表年份
1999
引用次数
146

摘要

The problem that we address in this paper is how a mobile robot can plan in order to arrive at its goal with minimum uncertainty. Traditional motion planning algorithms often assume that a mobile robot can track its position reliably, however, in real world situations, reliable localization may not always be feasible. Partially Observable Markov Decision Processes (POMDPs) provide one way to maximize the certainty of reaching the goal state, but at the cost of computational intractability for large state spaces. The method we propose explicitly models the uncertainty of the robot's position as a state variable, and generates trajectories through the augmented pose-uncertainty space. By minimizing the positional uncertainty at the goal, the robot reduces the likelihood it becomes lost. We demonstrate experimentally that coastal navigation reduces the uncertainty at the goal, especially with degraded localization. 1 Introduction For an operational mobile robot, it is essential to preven...

关键词

Mobile robotComputer scienceRobotPosition (finance)Markov decision processState spaceMotion planningArtificial intelligenceMobile robot navigationState (computer science)

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