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Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture

The classification of surface myoelectric signals (sEMG) remains a great challenge when focused on its implementation in an electromechanical hand prosthesis, due to its nonlinear and stochastic nature, as well as the great difference between models applied offline and online. In this work, the sele...

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Autores principales: Sandoval-Espino, Jorge Arturo, Zamudio-Lara, Alvaro, Marbán-Salgado, José Antonio, Escobedo-Alatorre, J. Jesús, Palillero-Sandoval, Omar, Velásquez-Aguilar, J. Guadalupe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9269838/
https://www.ncbi.nlm.nih.gov/pubmed/35808467
http://dx.doi.org/10.3390/s22134972
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author Sandoval-Espino, Jorge Arturo
Zamudio-Lara, Alvaro
Marbán-Salgado, José Antonio
Escobedo-Alatorre, J. Jesús
Palillero-Sandoval, Omar
Velásquez-Aguilar, J. Guadalupe
author_facet Sandoval-Espino, Jorge Arturo
Zamudio-Lara, Alvaro
Marbán-Salgado, José Antonio
Escobedo-Alatorre, J. Jesús
Palillero-Sandoval, Omar
Velásquez-Aguilar, J. Guadalupe
author_sort Sandoval-Espino, Jorge Arturo
collection PubMed
description The classification of surface myoelectric signals (sEMG) remains a great challenge when focused on its implementation in an electromechanical hand prosthesis, due to its nonlinear and stochastic nature, as well as the great difference between models applied offline and online. In this work, the selection of the set of the features that allowed us to obtain the best results for the classification of this type of signals is presented. In order to compare the results obtained, the Nina PRO DB2 and DB3 databases were used, which contain information on 50 different movements of 40 healthy subjects and 11 amputated subjects, respectively. The sEMG of each subject was acquired through 12 channels in a bipolar configuration. To carry out the classification, a convolutional neural network (CNN) was used and a comparison of four sets of features extracted in the time domain was made, three of which have shown good performance in previous works and one more that was used for the first time to train this type of network. Set one is composed of six features in the time domain (TD1), Set two has 10 features also in the time domain (TD2) including the autoregression model (AR), the third set has two features in the time domain derived from spectral moments (TD-PSD1), and finally, a set of five features also has information on the power spectrum of the signal obtained in the time domain (TD-PSD2). The selected features in each set were organized in four different ways for the formation of the training images. The results obtained show that the set of features TD-PSD2 obtained the best performance for all cases. With the set of features and the formation of images proposed, an increase in the accuracies of the models of 8.16% and 8.56% was obtained for the DB2 and DB3 databases, respectively, compared to the current state of the art that has used these databases.
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spelling pubmed-92698382022-07-09 Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture Sandoval-Espino, Jorge Arturo Zamudio-Lara, Alvaro Marbán-Salgado, José Antonio Escobedo-Alatorre, J. Jesús Palillero-Sandoval, Omar Velásquez-Aguilar, J. Guadalupe Sensors (Basel) Article The classification of surface myoelectric signals (sEMG) remains a great challenge when focused on its implementation in an electromechanical hand prosthesis, due to its nonlinear and stochastic nature, as well as the great difference between models applied offline and online. In this work, the selection of the set of the features that allowed us to obtain the best results for the classification of this type of signals is presented. In order to compare the results obtained, the Nina PRO DB2 and DB3 databases were used, which contain information on 50 different movements of 40 healthy subjects and 11 amputated subjects, respectively. The sEMG of each subject was acquired through 12 channels in a bipolar configuration. To carry out the classification, a convolutional neural network (CNN) was used and a comparison of four sets of features extracted in the time domain was made, three of which have shown good performance in previous works and one more that was used for the first time to train this type of network. Set one is composed of six features in the time domain (TD1), Set two has 10 features also in the time domain (TD2) including the autoregression model (AR), the third set has two features in the time domain derived from spectral moments (TD-PSD1), and finally, a set of five features also has information on the power spectrum of the signal obtained in the time domain (TD-PSD2). The selected features in each set were organized in four different ways for the formation of the training images. The results obtained show that the set of features TD-PSD2 obtained the best performance for all cases. With the set of features and the formation of images proposed, an increase in the accuracies of the models of 8.16% and 8.56% was obtained for the DB2 and DB3 databases, respectively, compared to the current state of the art that has used these databases. MDPI 2022-06-30 /pmc/articles/PMC9269838/ /pubmed/35808467 http://dx.doi.org/10.3390/s22134972 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sandoval-Espino, Jorge Arturo
Zamudio-Lara, Alvaro
Marbán-Salgado, José Antonio
Escobedo-Alatorre, J. Jesús
Palillero-Sandoval, Omar
Velásquez-Aguilar, J. Guadalupe
Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture
title Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture
title_full Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture
title_fullStr Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture
title_full_unstemmed Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture
title_short Selection of the Best Set of Features for sEMG-Based Hand Gesture Recognition Applying a CNN Architecture
title_sort selection of the best set of features for semg-based hand gesture recognition applying a cnn architecture
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9269838/
https://www.ncbi.nlm.nih.gov/pubmed/35808467
http://dx.doi.org/10.3390/s22134972
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