Robotics: Science and Systems XII
DOI: 10.15607/rss.2016.xii.039
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Representing and Learning Complex Object Interactions

Abstract: We present a framework for representing scenarios with complex object interactions, in which a robot cannot directly interact with the object it wishes to control, but must instead do so via intermediate objects. For example, a robot learning to drive a car can only indirectly change its pose, by rotating the steering wheel. We formalize such complex interactions as chains of Markov decision processes and show how they can be learned and used for control. We describe two systems in which a robot uses learning … Show more

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