Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency

Abstract A novel hybrid approach combining neighborhood component analysis (NCA) and metaheuristic optimization algorithms is proposed to improve the classification accuracy of electromyography (EMG) signals while reducing the feature set size and computational time. EMG signals were collected from...

Full description

Saved in:
Bibliographic Details
Main Authors: X. Little Flower, S. Poonguzhali
Format: Article
Language:English
Published: SpringerOpen 2025-05-01
Series:Journal of Electrical Systems and Information Technology
Subjects:
Online Access:https://doi.org/10.1186/s43067-025-00205-0
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850140407000727552
author X. Little Flower
S. Poonguzhali
author_facet X. Little Flower
S. Poonguzhali
author_sort X. Little Flower
collection DOAJ
description Abstract A novel hybrid approach combining neighborhood component analysis (NCA) and metaheuristic optimization algorithms is proposed to improve the classification accuracy of electromyography (EMG) signals while reducing the feature set size and computational time. EMG signals were collected from six neck and shoulder muscles, and a total of 23 features were extracted, including 17 time domain and 6 frequency domain features. The extracted features underwent pre-processing and selection using both filter-based and wrapper-based techniques. Among the evaluated metaheuristic algorithms, gray wolf optimization (GWO) and equilibrium optimization (EO) showed the best performance. The proposed hybrid approaches, NCA-GWO and NCA-EO, combined the strengths of NCA for feature ranking with the search efficiency of GWO and EO. These hybrid methods achieved high classification accuracy, reduced feature subsets, and improved computational efficiency compared to individual methods. Statistical validation using Wilcoxon signed-rank tests confirmed that the performance of NCA-GWO and NCA-EO was statistically comparable. Evaluation metrics such as accuracy, mean squared error (MSE), kappa coefficient, and Fisher’s score (F-score) demonstrated the robustness and reliability of the proposed methods. The results suggest that NCA-GWO and NCA-EO have significant potential for real-time EMG classification applications.
format Article
id doaj-art-acff11a49b0b4af48e1a6ee1de0d32db
institution OA Journals
issn 2314-7172
language English
publishDate 2025-05-01
publisher SpringerOpen
record_format Article
series Journal of Electrical Systems and Information Technology
spelling doaj-art-acff11a49b0b4af48e1a6ee1de0d32db2025-08-20T02:29:50ZengSpringerOpenJournal of Electrical Systems and Information Technology2314-71722025-05-0112111810.1186/s43067-025-00205-0Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiencyX. Little Flower0S. Poonguzhali1Centre for Medical Electronics, Department of Biomedical Engineering, College of Engineering (CEG), Anna University, GuindyCentre for Medical Electronics, Department of Biomedical Engineering, College of Engineering (CEG), Anna University, GuindyAbstract A novel hybrid approach combining neighborhood component analysis (NCA) and metaheuristic optimization algorithms is proposed to improve the classification accuracy of electromyography (EMG) signals while reducing the feature set size and computational time. EMG signals were collected from six neck and shoulder muscles, and a total of 23 features were extracted, including 17 time domain and 6 frequency domain features. The extracted features underwent pre-processing and selection using both filter-based and wrapper-based techniques. Among the evaluated metaheuristic algorithms, gray wolf optimization (GWO) and equilibrium optimization (EO) showed the best performance. The proposed hybrid approaches, NCA-GWO and NCA-EO, combined the strengths of NCA for feature ranking with the search efficiency of GWO and EO. These hybrid methods achieved high classification accuracy, reduced feature subsets, and improved computational efficiency compared to individual methods. Statistical validation using Wilcoxon signed-rank tests confirmed that the performance of NCA-GWO and NCA-EO was statistically comparable. Evaluation metrics such as accuracy, mean squared error (MSE), kappa coefficient, and Fisher’s score (F-score) demonstrated the robustness and reliability of the proposed methods. The results suggest that NCA-GWO and NCA-EO have significant potential for real-time EMG classification applications.https://doi.org/10.1186/s43067-025-00205-0Gray wolf optimizationEquilibrium optimizationNeighborhood component analysisK-nearest neighborMetaheuristic algorithm
spellingShingle X. Little Flower
S. Poonguzhali
Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency
Journal of Electrical Systems and Information Technology
Gray wolf optimization
Equilibrium optimization
Neighborhood component analysis
K-nearest neighbor
Metaheuristic algorithm
title Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency
title_full Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency
title_fullStr Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency
title_full_unstemmed Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency
title_short Boosting EMG classification: a hybrid NCA-driven evolutionary optimization approach for high accuracy and efficiency
title_sort boosting emg classification a hybrid nca driven evolutionary optimization approach for high accuracy and efficiency
topic Gray wolf optimization
Equilibrium optimization
Neighborhood component analysis
K-nearest neighbor
Metaheuristic algorithm
url https://doi.org/10.1186/s43067-025-00205-0
work_keys_str_mv AT xlittleflower boostingemgclassificationahybridncadrivenevolutionaryoptimizationapproachforhighaccuracyandefficiency
AT spoonguzhali boostingemgclassificationahybridncadrivenevolutionaryoptimizationapproachforhighaccuracyandefficiency