Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand

The myoelectric prosthetic hand is a powerful tool developed to help people with upper limb loss restore the functions of a biological hand. Recognizing multiple hand motions from only a few electromyography (EMG) sensors is one of the requirements for the development of prosthetic hands with high l...

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Main Authors: Trongmun Jiralerspong, Emi Nakanishi, Chao Liu, Jun Ishikawa
Format: Article
Language:English
Published: MDPI AG 2017-11-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/7/11/1163
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spelling doaj-3b239f05275d4e41baa89699b58674652020-11-24T21:52:54ZengMDPI AGApplied Sciences2076-34172017-11-01711116310.3390/app7111163app7111163Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic HandTrongmun Jiralerspong0Emi Nakanishi1Chao Liu2Jun Ishikawa3Department of Robotics and Mechatronics, Tokyo Denki University, Tokyo 120-8551, JapanDepartment of Robotics and Mechatronics, Tokyo Denki University, Tokyo 120-8551, JapanDepartment of Robotics and Mechatronics, Tokyo Denki University, Tokyo 120-8551, JapanDepartment of Robotics and Mechatronics, Tokyo Denki University, Tokyo 120-8551, JapanThe myoelectric prosthetic hand is a powerful tool developed to help people with upper limb loss restore the functions of a biological hand. Recognizing multiple hand motions from only a few electromyography (EMG) sensors is one of the requirements for the development of prosthetic hands with high level of usability. This task is highly challenging because both classification rate and misclassification rate worsen with additional hand motions. This paper presents a signal processing technique that uses spectral features and an artificial neural network to classify 17 voluntary movements from EMG signals. The main highlight will be on the use of a small set of low-cost EMG sensor for classification of a reasonably large number of hand movements. The aim of this work is to extend the capabilities to recognize and produce multiple movements beyond what is currently feasible. This work will also show and discuss about how tailoring the number of hand motions for a specific task can help develop a more reliable prosthetic hand system. Online classification experiments have been conducted on seven male and five female participants to evaluate the validity of the proposed method. The proposed algorithm achieves an overall correct classification rate of up to 83%, thus, demonstrating the potential to classify 17 movements from 6 EMG sensors. Furthermore, classifying 9 motions using this method could achieve an accuracy of up to 92%. These results show that if the prosthetic hand is intended for a specific task, limiting the number of motions can significantly increase the performance and usability.https://www.mdpi.com/2076-3417/7/11/1163artificial neural networkbrain machine interface (BMI)electromyogram (EMG)prosthetic handspectral analysis
collection DOAJ
language English
format Article
sources DOAJ
author Trongmun Jiralerspong
Emi Nakanishi
Chao Liu
Jun Ishikawa
spellingShingle Trongmun Jiralerspong
Emi Nakanishi
Chao Liu
Jun Ishikawa
Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand
Applied Sciences
artificial neural network
brain machine interface (BMI)
electromyogram (EMG)
prosthetic hand
spectral analysis
author_facet Trongmun Jiralerspong
Emi Nakanishi
Chao Liu
Jun Ishikawa
author_sort Trongmun Jiralerspong
title Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand
title_short Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand
title_full Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand
title_fullStr Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand
title_full_unstemmed Experimental Study of Real-Time Classification of 17 Voluntary Movements for Multi-Degree Myoelectric Prosthetic Hand
title_sort experimental study of real-time classification of 17 voluntary movements for multi-degree myoelectric prosthetic hand
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2017-11-01
description The myoelectric prosthetic hand is a powerful tool developed to help people with upper limb loss restore the functions of a biological hand. Recognizing multiple hand motions from only a few electromyography (EMG) sensors is one of the requirements for the development of prosthetic hands with high level of usability. This task is highly challenging because both classification rate and misclassification rate worsen with additional hand motions. This paper presents a signal processing technique that uses spectral features and an artificial neural network to classify 17 voluntary movements from EMG signals. The main highlight will be on the use of a small set of low-cost EMG sensor for classification of a reasonably large number of hand movements. The aim of this work is to extend the capabilities to recognize and produce multiple movements beyond what is currently feasible. This work will also show and discuss about how tailoring the number of hand motions for a specific task can help develop a more reliable prosthetic hand system. Online classification experiments have been conducted on seven male and five female participants to evaluate the validity of the proposed method. The proposed algorithm achieves an overall correct classification rate of up to 83%, thus, demonstrating the potential to classify 17 movements from 6 EMG sensors. Furthermore, classifying 9 motions using this method could achieve an accuracy of up to 92%. These results show that if the prosthetic hand is intended for a specific task, limiting the number of motions can significantly increase the performance and usability.
topic artificial neural network
brain machine interface (BMI)
electromyogram (EMG)
prosthetic hand
spectral analysis
url https://www.mdpi.com/2076-3417/7/11/1163
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