Novel Learning From Demonstration Approach for Repetitive Teleoperation Tasks

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While teleoperation provides a possibility for a robot to operate at extreme conditions instead of a human, teleoperating a robot still demands a heavy mental workload from a human operator. Learning from demonstrations can reduce the human operator's burden by learning repetitive teleoperation tasks. However, one of challenging issues is that demonstrations via teleoperation are less consistent compared to other modalities of human demonstrations. In order to solve this problem, we propose a learning scheme based on Dynamic Movement Primitives (DMPs) which can handle less consistent, asynchronized and incomplete demonstrations. In particular we proposed a new Expectation Maximization (EM) algorithm which can synchronize and encode demonstrations with temporal and spatial variances, different initial and final conditions and partial executions. The proposed algorithm is tested and validated with three different experiments of a peg-in-hole task conducted on 3-Degree of freedom (DOF) masterslave teleoperation system.
Publisher
IEEE
Issue Date
2017-06-06
Language
English
Citation

2017 IEEE World Haptics Conference (WHC), pp.60 - 65

DOI
10.1109/WHC.2017.7989877
URI
http://hdl.handle.net/10203/279868
Appears in Collection
CE-Conference Papers(학술회의논문)
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