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A robot learning method with physiological interface for teleoperation systems

Luo, Jing; Yang, Chenguang; Su, Hang; Liu, Chao

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Authors

Jing Luo

Hang Su

Chao Liu



Abstract

The human operator largely relies on the perception of remote environmental conditions to make timely and correct decisions in a prescribed task when the robot is teleoperated in a remote place. However, due to the unknown and dynamic working environments, the manipulator's performance and efficiency of the human-robot interaction in the tasks may degrade significantly. In this study, a novel method of human-centric interaction, through a physiological interface was presented to capture the information details of the remote operation environments. Simultaneously, in order to relieve workload of the human operator and to improve efficiency of the teleoperation system, an updated regression method was proposed to build up a nonlinear model of demonstration for the prescribed task. Considering that the demonstration data were of various lengths, dynamic time warping algorithm was employed first to synchronize the data over time before proceeding with other steps. The novelty of this method lies in the fact that both the task-specific information and the muscle parameters from the human operator have been taken into account in a single task; therefore, a more natural and safer interaction between the human and the robot could be achieved. The feasibility of the proposed method was demonstrated by experimental results.

Citation

Luo, J., Yang, C., Su, H., & Liu, C. (2019). A robot learning method with physiological interface for teleoperation systems. Applied Sciences, 9(10), Article 2099. https://doi.org/10.3390/app9102099

Journal Article Type Article
Acceptance Date May 10, 2019
Online Publication Date May 22, 2019
Publication Date May 22, 2019
Deposit Date Jun 8, 2020
Publicly Available Date Jun 9, 2020
Journal Applied Sciences
Electronic ISSN 2076-3417
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 9
Issue 10
Article Number 2099
DOI https://doi.org/10.3390/app9102099
Keywords bioinformatics interface; locally weighted regression; human muscle stiffness; learning from demonstration; human-robot interaction
Public URL https://uwe-repository.worktribe.com/output/6015584

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