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Quadruped robot obstacle negotiation via reinforcement learning

Honglak Lee, Yirong Shen, Chih-Han Yu, Gurpreet Singh, A.Y. Ng

Year
2006
Citations
42

Abstract

Legged robots can, in principle, traverse a large variety of obstacles and terrains. In this paper, we describe a successful application of reinforcement learning to the problem of negotiating obstacles with a quadruped robot. Our algorithm is based on a two-level hierarchical decomposition of the task, in which the high-level controller selects the sequence of foot-placement positions, and the low-level controller generates the continuous motions to move each foot to the specified positions. The high-level controller uses an estimate of the value function to guide its search; this estimate is learned partially from supervised data. The low-level controller is obtained via policy search. We demonstrate that our robot can successfully climb over a variety of obstacles which were not seen at training time

Keywords

Reinforcement learningTraverseRobotController (irrigation)ObstacleComputer scienceTerrainQ-learningArtificial intelligenceVariety (cybernetics)

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