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Encoding Multiple Sensor Data for Robotic Learning Skills from Multimodal Demonstration

Zeng, Chao; Yang, Chenguang; Zhong, Junpei; Zhang, Jianwei

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Authors

Chao Zeng

Junpei Zhong

Jianwei Zhang



Abstract

© 2013 IEEE. Learning a task such as pushing something, where the constraints of both position and force have to be satisfied, is usually difficult for a collaborative robot. In this work, we propose a multimodal teaching-by-demonstration system which can enable the robot to perform this kind of tasks. The basic idea is to transfer the adaptation of multi-modal information from a human tutor to the robot by taking account of multiple sensor signals (i.e., motion trajectories, stiffness, and force profiles). The human tutor's stiffness is estimated based on the limb surface electromyography (EMG) signals obtained from the demonstration phase. The force profiles in Cartesian space are collected from a force/torque sensor mounted between the robot endpoint and the tool. Subsequently, the hidden semi-Markov model (HSMM) is used to encode the multiple signals in a unified manner. The correlations between position and the other three control variables (i.e., velocity, stiffness and force) are encoded with separate HSMM models. Based on the estimated parameters of the HSMM model, the Gaussian mixture regression (GMR) is then utilized to generate the expected control variables. The learned variables are further mapped into an impedance controller in the joint space through inverse kinematics for the reproduction of the task. Comparative tests have been conducted to verify the effectiveness of our approach on a Baxter robot.

Citation

Zeng, C., Yang, C., Zhong, J., & Zhang, J. (2019). Encoding Multiple Sensor Data for Robotic Learning Skills from Multimodal Demonstration. IEEE Access, 7, 145604-145613. https://doi.org/10.1109/ACCESS.2019.2945484

Journal Article Type Article
Acceptance Date Sep 28, 2019
Online Publication Date Oct 3, 2019
Publication Date Jan 1, 2019
Deposit Date Oct 29, 2019
Publicly Available Date Oct 30, 2019
Journal IEEE Access
Electronic ISSN 2169-3536
Publisher Institute of Electrical and Electronics Engineers (IEEE)
Peer Reviewed Peer Reviewed
Volume 7
Pages 145604-145613
DOI https://doi.org/10.1109/ACCESS.2019.2945484
Keywords General Engineering; General Materials Science; General Computer Science
Public URL https://uwe-repository.worktribe.com/output/4191813

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