A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control

Interferences in the form of white Gaussian noise (WGN) are inevitable during long-term electromyogram (EMG) recordings. Even with the aid of advanced signal denoising techniques, such an intermittent interference is hardly detected and attenuated in the practical use of EMG-driven control systems....

Full description

Bibliographic Details
Main Authors: Yanjuan Geng, Yatao Ouyang, Oluwarotimi Williams Samuel, Shixiong Chen, Xiaoqiang Lu, Chuang Lin, Guanglin Li
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8399806/
id doaj-f62fd3f9ba7d4bf19f0e54d965906f20
record_format Article
spelling doaj-f62fd3f9ba7d4bf19f0e54d965906f202021-03-29T20:42:42ZengIEEEIEEE Access2169-35362018-01-016383263833510.1109/ACCESS.2018.28512828399806A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric ControlYanjuan Geng0https://orcid.org/0000-0002-0735-7665Yatao Ouyang1Oluwarotimi Williams Samuel2https://orcid.org/0000-0003-1945-1402Shixiong Chen3Xiaoqiang Lu4Chuang Lin5Guanglin Li6Chinese Academy of Sciences, Shenzhen Institutes of Advanced Technology, Shenzhen, ChinaGuangdong Provincial Work Injury Rehabilitation Center, Guangzhou, ChinaChinese Academy of Sciences, Shenzhen Institutes of Advanced Technology, Shenzhen, ChinaChinese Academy of Sciences, Shenzhen Institutes of Advanced Technology, Shenzhen, ChinaChinese Academy of Sciences, Xi’an Institute of Optics and Precision Mechanics, Xi’an, ChinaChinese Academy of Sciences, Shenzhen Institutes of Advanced Technology, Shenzhen, ChinaChinese Academy of Sciences, Shenzhen Institutes of Advanced Technology, Shenzhen, ChinaInterferences in the form of white Gaussian noise (WGN) are inevitable during long-term electromyogram (EMG) recordings. Even with the aid of advanced signal denoising techniques, such an intermittent interference is hardly detected and attenuated in the practical use of EMG-driven control systems. Hence, a robust pattern recognition scheme that is invariant to noise contamination would potentially aid the realization of an efficient EMG-based pattern recognition (EMG-PR) control system. To this end, an EMG-PR scheme driven by sparse representation-based classification (SRC) algorithm and root mean square (rms) descriptor (RMS-SRC) is proposed in this paper. The accuracy and the robustness of the proposed scheme were investigated using the high-density surface EMG recordings from 12 traumatic braininjured patients and 5 post-stroke survivors. For benchmark comparison, another three different feature sets and four pattern recognition algorithms were considered. The optimal pattern recognition schemes with respect to each feature-classifier combination were first selected in the absence of WGN contamination. Then, six levels of WGN with a signal-to-noise ratio (SNR) ranging from 5 to 30 dB were added into the EMG recordings, respectively, to mimic the different WGN interferences. Our result showed that the proposed RMS-SRC scheme could achieve a similar accuracy with the benchmark schemes in the presence of limited noise contamination (0-15 dB), and significantly outperformed the other schemes when the SNR of WGN increased (20-30 dB). More notably, the RMS-SRC scheme significantly outperformed the other pattern recognition schemes when the WGN existed in either training set or testing set only. The findings proved the comparative advantage of the proposed RMS-SRC pattern recognition scheme over the other currently used schemes in the myoelectric control. Thus, the proposed scheme would potentially facilitate the development of EMG-driven rehabilitation robots for accurate and dexterous assistive training for patients with neurological disorders.https://ieeexplore.ieee.org/document/8399806/Electromyogrampattern recognitionsparse representation classifierrobustnesswhite Gaussian noise
collection DOAJ
language English
format Article
sources DOAJ
author Yanjuan Geng
Yatao Ouyang
Oluwarotimi Williams Samuel
Shixiong Chen
Xiaoqiang Lu
Chuang Lin
Guanglin Li
spellingShingle Yanjuan Geng
Yatao Ouyang
Oluwarotimi Williams Samuel
Shixiong Chen
Xiaoqiang Lu
Chuang Lin
Guanglin Li
A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control
IEEE Access
Electromyogram
pattern recognition
sparse representation classifier
robustness
white Gaussian noise
author_facet Yanjuan Geng
Yatao Ouyang
Oluwarotimi Williams Samuel
Shixiong Chen
Xiaoqiang Lu
Chuang Lin
Guanglin Li
author_sort Yanjuan Geng
title A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control
title_short A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control
title_full A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control
title_fullStr A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control
title_full_unstemmed A Robust Sparse Representation Based Pattern Recognition Approach for Myoelectric Control
title_sort robust sparse representation based pattern recognition approach for myoelectric control
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Interferences in the form of white Gaussian noise (WGN) are inevitable during long-term electromyogram (EMG) recordings. Even with the aid of advanced signal denoising techniques, such an intermittent interference is hardly detected and attenuated in the practical use of EMG-driven control systems. Hence, a robust pattern recognition scheme that is invariant to noise contamination would potentially aid the realization of an efficient EMG-based pattern recognition (EMG-PR) control system. To this end, an EMG-PR scheme driven by sparse representation-based classification (SRC) algorithm and root mean square (rms) descriptor (RMS-SRC) is proposed in this paper. The accuracy and the robustness of the proposed scheme were investigated using the high-density surface EMG recordings from 12 traumatic braininjured patients and 5 post-stroke survivors. For benchmark comparison, another three different feature sets and four pattern recognition algorithms were considered. The optimal pattern recognition schemes with respect to each feature-classifier combination were first selected in the absence of WGN contamination. Then, six levels of WGN with a signal-to-noise ratio (SNR) ranging from 5 to 30 dB were added into the EMG recordings, respectively, to mimic the different WGN interferences. Our result showed that the proposed RMS-SRC scheme could achieve a similar accuracy with the benchmark schemes in the presence of limited noise contamination (0-15 dB), and significantly outperformed the other schemes when the SNR of WGN increased (20-30 dB). More notably, the RMS-SRC scheme significantly outperformed the other pattern recognition schemes when the WGN existed in either training set or testing set only. The findings proved the comparative advantage of the proposed RMS-SRC pattern recognition scheme over the other currently used schemes in the myoelectric control. Thus, the proposed scheme would potentially facilitate the development of EMG-driven rehabilitation robots for accurate and dexterous assistive training for patients with neurological disorders.
topic Electromyogram
pattern recognition
sparse representation classifier
robustness
white Gaussian noise
url https://ieeexplore.ieee.org/document/8399806/
work_keys_str_mv AT yanjuangeng arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT yataoouyang arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT oluwarotimiwilliamssamuel arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT shixiongchen arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT xiaoqianglu arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT chuanglin arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT guanglinli arobustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT yanjuangeng robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT yataoouyang robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT oluwarotimiwilliamssamuel robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT shixiongchen robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT xiaoqianglu robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT chuanglin robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
AT guanglinli robustsparserepresentationbasedpatternrecognitionapproachformyoelectriccontrol
_version_ 1724194313216196608