A Task Learning Mechanism For The Telerobots

INTERNATIONAL JOURNAL OF HUMANOID ROBOTICS(2019)

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摘要
Telerobotic systems have attracted growing attention because of their superiority in the dangerous or unknown interaction tasks. It is very challenging to exploit such systems to implement complex tasks in an autonomous way. In this paper, we propose a task learning framework to represent the manipulation skill demonstrated by a remotely controlled robot. Gaussian mixture model is utilized to encode and parametrize the smooth task trajectory according to the observations from the demonstrations. After encoding the demonstrated trajectory, a new task trajectory is generated based on the variability information of the learned model. Experimental results have demonstrated the feasibility of the proposed method.
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关键词
Telerobotic systems, Gaussian mixture model, Gaussian mixture regression, task model, human-robot interaction
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