Unsupervised clustering and classification of upper limb EMG signals during functional movements: a data-driven
L. F. Salazar \'Alvarez, D. Escobar-Saltar\'en, M. B. Salazar S\'anchez, and S. C. Henao-Aguirre

TL;DR
This paper introduces a data-driven, multi-stage pipeline for clustering and classifying upper limb EMG signals during functional movements, demonstrating effective feature selection, gesture clustering, and classifier evaluation.
Contribution
It presents a comprehensive, scalable approach combining signal processing, feature extraction, gesture clustering, and classifier evaluation for EMG-based movement recognition.
Findings
Optimal window size identified as 200 ms for segmentation.
Extra Trees and ANN classifiers achieved top performance.
Selected features and gesture clusters improve classification stability.
Abstract
This study presents a comprehensive approach for the clustering and classification of upper-limb surface electromyography (sEMG) signals during functional reach and grasp movements. The methodology was applied to the NINAPRO DB4 dataset, which provides multichannel EMG recordings of 52 gestures. A four-stage pipeline was designed, including signal preprocessing, fea-ture extraction, gesture selection via hierarchical clustering, and comparative model evaluation. Preprocessing involved a fourth-order low-pass filter (0.6 Hz) and Hilbert envelope transformation, effectively reducing noise and enhancing signal clarity. Feature extraction yielded 26 temporal and frequency-domain met-rics, which were later refined using visual analysis, mutual information, principal component analysis, and decision tree importance scores. A final subset of five key features was selected for classification…
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