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안혜민

Ahn, Hyemin
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Vision-Based Approximate Estimation of Muscle Activation Patterns for Tele-Impedance

Author(s)
Ahn, HyeminMichel, YoussefEiband, ThomasLee, Dongheui
Issued Date
2023-08
DOI
10.1109/lra.2023.3293275
URI
https://scholarworks.unist.ac.kr/handle/201301/66338
Citation
IEEE ROBOTICS AND AUTOMATION LETTERS, v.8, no.8, pp.5220 - 5227
Abstract
It lies in human nature to properly adjust the muscle force to perform a given task successfully. While transferring this control ability to robots has been a big concern among researchers, there is no attempt to make a robot learn how to control the impedance solely based on visual observations. Rather, the research on tele-impedance usually relies on special devices such as EMG sensors, which have less accessibility as well as less generalization ability compared to simple RGB webcams. In this letter, we propose a system for a vision-based tele-impedance control of robots, based on the approximately estimated muscle activation patterns. These patterns are obtained from the proposed deep learning-based model, which uses RGB images from an affordable commercial webcam as inputs. It is remarkable that our model does not require humans to apply any visible markers to their muscles. Experimental results show that our model enables a robot to mimic how humans adjust their muscle force to perform a given task successfully. Although our experiments are focused on tele-impedance control, our system can also provide a baseline for improvement of vision-based learning from demonstration, which would also incorporate the information of variable stiffness control for successful task execution.
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISSN
2377-3766
Keyword (Author)
compliance and impedance controlDeep learning for visual perceptiontelerobotics and teleoperation

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