Cargando…

Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions

The performance of myoelectric control highly depends on the features extracted from surface electromyographic (sEMG) signals. We propose three new sEMG features based on the kernel density estimation. The trimmed mean of density (TMD), the entropy of density, and the trimmed mean absolute value of...

Descripción completa

Detalles Bibliográficos
Autores principales: Ghaderi, Parviz, Nosouhi, Marjan, Jordanic, Mislav, Marateb, Hamid Reza, Mañanas, Miguel Angel, Farina, Dario
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8959430/
https://www.ncbi.nlm.nih.gov/pubmed/35356057
http://dx.doi.org/10.3389/fnins.2022.796711
_version_ 1784677151896764416
author Ghaderi, Parviz
Nosouhi, Marjan
Jordanic, Mislav
Marateb, Hamid Reza
Mañanas, Miguel Angel
Farina, Dario
author_facet Ghaderi, Parviz
Nosouhi, Marjan
Jordanic, Mislav
Marateb, Hamid Reza
Mañanas, Miguel Angel
Farina, Dario
author_sort Ghaderi, Parviz
collection PubMed
description The performance of myoelectric control highly depends on the features extracted from surface electromyographic (sEMG) signals. We propose three new sEMG features based on the kernel density estimation. The trimmed mean of density (TMD), the entropy of density, and the trimmed mean absolute value of derivative density were computed for each sEMG channel. These features were tested for the classification of single tasks as well as of two tasks concurrently performed. For single tasks, correlation-based feature selection was used, and the features were then classified using linear discriminant analysis (LDA), non-linear support vector machines, and multi-layer perceptron. The eXtreme gradient boosting (XGBoost) classifier was used for the classification of two movements simultaneously performed. The second and third versions of the Ninapro dataset (conventional control) and Ameri’s movement dataset (simultaneous control) were used to test the proposed features. For the Ninapro dataset, the overall accuracy of LDA using the TMD feature was 98.99 ± 1.36% and 92.25 ± 9.48% for able-bodied and amputee subjects, respectively. Using ensemble learning of the three classifiers, the average macro and micro-F-score, macro recall, and precision on the validation sets were 98.23 ± 2.02, 98.32 ± 1.93, 98.32 ± 1.93, and 98.88 ± 1.31%, respectively, for the intact subjects. The movement misclassification percentage was 1.75 ± 1.73 and 3.44 ± 2.23 for the intact subjects and amputees. The proposed features were significantly correlated with the movement classes [Generalized Linear Model (GLM); P-value < 0.05]. An accurate online implementation of the proposed algorithm was also presented. For the simultaneous control, the overall accuracy was 99.71 ± 0.08 and 97.85 ± 0.10 for the XGBoost and LDA classifiers, respectively. The proposed features are thus promising for conventional and simultaneous myoelectric control.
format Online
Article
Text
id pubmed-8959430
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-89594302022-03-29 Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions Ghaderi, Parviz Nosouhi, Marjan Jordanic, Mislav Marateb, Hamid Reza Mañanas, Miguel Angel Farina, Dario Front Neurosci Neuroscience The performance of myoelectric control highly depends on the features extracted from surface electromyographic (sEMG) signals. We propose three new sEMG features based on the kernel density estimation. The trimmed mean of density (TMD), the entropy of density, and the trimmed mean absolute value of derivative density were computed for each sEMG channel. These features were tested for the classification of single tasks as well as of two tasks concurrently performed. For single tasks, correlation-based feature selection was used, and the features were then classified using linear discriminant analysis (LDA), non-linear support vector machines, and multi-layer perceptron. The eXtreme gradient boosting (XGBoost) classifier was used for the classification of two movements simultaneously performed. The second and third versions of the Ninapro dataset (conventional control) and Ameri’s movement dataset (simultaneous control) were used to test the proposed features. For the Ninapro dataset, the overall accuracy of LDA using the TMD feature was 98.99 ± 1.36% and 92.25 ± 9.48% for able-bodied and amputee subjects, respectively. Using ensemble learning of the three classifiers, the average macro and micro-F-score, macro recall, and precision on the validation sets were 98.23 ± 2.02, 98.32 ± 1.93, 98.32 ± 1.93, and 98.88 ± 1.31%, respectively, for the intact subjects. The movement misclassification percentage was 1.75 ± 1.73 and 3.44 ± 2.23 for the intact subjects and amputees. The proposed features were significantly correlated with the movement classes [Generalized Linear Model (GLM); P-value < 0.05]. An accurate online implementation of the proposed algorithm was also presented. For the simultaneous control, the overall accuracy was 99.71 ± 0.08 and 97.85 ± 0.10 for the XGBoost and LDA classifiers, respectively. The proposed features are thus promising for conventional and simultaneous myoelectric control. Frontiers Media S.A. 2022-03-09 /pmc/articles/PMC8959430/ /pubmed/35356057 http://dx.doi.org/10.3389/fnins.2022.796711 Text en Copyright © 2022 Ghaderi, Nosouhi, Jordanic, Marateb, Mañanas and Farina. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Ghaderi, Parviz
Nosouhi, Marjan
Jordanic, Mislav
Marateb, Hamid Reza
Mañanas, Miguel Angel
Farina, Dario
Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
title Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
title_full Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
title_fullStr Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
title_full_unstemmed Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
title_short Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
title_sort kernel density estimation of electromyographic signals and ensemble learning for highly accurate classification of a large set of hand/wrist motions
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8959430/
https://www.ncbi.nlm.nih.gov/pubmed/35356057
http://dx.doi.org/10.3389/fnins.2022.796711
work_keys_str_mv AT ghaderiparviz kerneldensityestimationofelectromyographicsignalsandensemblelearningforhighlyaccurateclassificationofalargesetofhandwristmotions
AT nosouhimarjan kerneldensityestimationofelectromyographicsignalsandensemblelearningforhighlyaccurateclassificationofalargesetofhandwristmotions
AT jordanicmislav kerneldensityestimationofelectromyographicsignalsandensemblelearningforhighlyaccurateclassificationofalargesetofhandwristmotions
AT maratebhamidreza kerneldensityestimationofelectromyographicsignalsandensemblelearningforhighlyaccurateclassificationofalargesetofhandwristmotions
AT mananasmiguelangel kerneldensityestimationofelectromyographicsignalsandensemblelearningforhighlyaccurateclassificationofalargesetofhandwristmotions
AT farinadario kerneldensityestimationofelectromyographicsignalsandensemblelearningforhighlyaccurateclassificationofalargesetofhandwristmotions