EMG-based Robot Control Interfaces: Beyond Decoding

abstract: Electromyogram (EMG)-based control interfaces are increasingly used in robot teleoperation, prosthetic devices control and also in controlling robotic exoskeletons. Over the last two decades researchers have come up with a plethora of decoding functions to map myoelectric signals to robot...

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Other Authors: Antuvan, Chris Wilson (Author)
Format: Dissertation
Language:English
Published: 2013
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.17962
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spelling ndltd-asu.edu-item-179622018-06-22T03:03:59Z EMG-based Robot Control Interfaces: Beyond Decoding abstract: Electromyogram (EMG)-based control interfaces are increasingly used in robot teleoperation, prosthetic devices control and also in controlling robotic exoskeletons. Over the last two decades researchers have come up with a plethora of decoding functions to map myoelectric signals to robot motions. However, this requires a lot of training and validation data sets, while the parameters of the decoding function are specific for each subject. In this thesis we propose a new methodology that doesn't require training and is not user-specific. The main idea is to supplement the decoding functional error with the human ability to learn inverse model of an arbitrary mapping function. We have shown that the subjects gradually learned the control strategy and their learning rates improved. We also worked on identifying an optimized control scheme that would be even more effective and easy to learn for the subjects. Optimization was done by taking into account that muscles act in synergies while performing a motion task. The low-dimensional representation of the neural activity was used to control a two-dimensional task. Results showed that in the case of reduced dimensionality mapping, the subjects were able to learn to control the device in a slower pace, however they were able to reach and retain the same level of controllability. To summarize, we were able to build an EMG-based controller for robot devices that would work for any subject, without any training or decoding function, suggesting human-embedded controllers for robotic devices. Dissertation/Thesis Antuvan, Chris Wilson (Author) Artemiadis, Panagiotis (Advisor) Muthuswamy, Jitendran (Committee member) Santos, Veronica J (Committee member) Arizona State University (Publisher) Mechanical engineering Robotics eng 88 pages M.S. Mechanical Engineering 2013 Masters Thesis http://hdl.handle.net/2286/R.I.17962 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2013
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Mechanical engineering
Robotics
spellingShingle Mechanical engineering
Robotics
EMG-based Robot Control Interfaces: Beyond Decoding
description abstract: Electromyogram (EMG)-based control interfaces are increasingly used in robot teleoperation, prosthetic devices control and also in controlling robotic exoskeletons. Over the last two decades researchers have come up with a plethora of decoding functions to map myoelectric signals to robot motions. However, this requires a lot of training and validation data sets, while the parameters of the decoding function are specific for each subject. In this thesis we propose a new methodology that doesn't require training and is not user-specific. The main idea is to supplement the decoding functional error with the human ability to learn inverse model of an arbitrary mapping function. We have shown that the subjects gradually learned the control strategy and their learning rates improved. We also worked on identifying an optimized control scheme that would be even more effective and easy to learn for the subjects. Optimization was done by taking into account that muscles act in synergies while performing a motion task. The low-dimensional representation of the neural activity was used to control a two-dimensional task. Results showed that in the case of reduced dimensionality mapping, the subjects were able to learn to control the device in a slower pace, however they were able to reach and retain the same level of controllability. To summarize, we were able to build an EMG-based controller for robot devices that would work for any subject, without any training or decoding function, suggesting human-embedded controllers for robotic devices. === Dissertation/Thesis === M.S. Mechanical Engineering 2013
author2 Antuvan, Chris Wilson (Author)
author_facet Antuvan, Chris Wilson (Author)
title EMG-based Robot Control Interfaces: Beyond Decoding
title_short EMG-based Robot Control Interfaces: Beyond Decoding
title_full EMG-based Robot Control Interfaces: Beyond Decoding
title_fullStr EMG-based Robot Control Interfaces: Beyond Decoding
title_full_unstemmed EMG-based Robot Control Interfaces: Beyond Decoding
title_sort emg-based robot control interfaces: beyond decoding
publishDate 2013
url http://hdl.handle.net/2286/R.I.17962
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