Comparison of Machine Learning Techniques for Activities of Daily Living Classification with Electromyographic Data

Sergio A. Salinas, Mohamed Ahmed T.A. Elgalhud, Luke Tambakis, Sanket V. Salunke, Kshitija Patel, Hamada Ghenniwa, Abdelkader Ouda, Kenneth McIsaac, Katarina Grolinger, Ana Luisa Trejos

Producción científica: Capítulo del libro/informe/acta de congresoPonencia publicada en las memorias del evento con ISBNrevisión exhaustiva

3 Citas (Scopus)

Resumen

Advances in data science and wearable robotic devices present an opportunity to improve rehabilitation outcomes. Some of these devices incorporate electromyography (EMG) electrodes that sense physiological patient activity, making it possible to develop rehabilitation systems able to assess the patient's progress when performing activities of daily living (ADLs). However, additional research is needed to improve the ability to interpret EMG signals. To address this issue, an off-line classification approach for the 26 upper-limb ADLs included in the KIN-MUS UJI dataset is presented in this paper. The ADLs were performed by 22 subjects, while seven EMG signals were recorded from their forearms. From variable-length EMG time windows, 18 features were computed, and 13 features more were extracted from frequency domain windows. The classification performance of five different machine learning techniques, including Support Vector Machines (SVM), Convolutional Neural Networks (CNN), Gated Recurrent Unit (GRU) network, XGBoost, and Random Forests, were compared. CNN performed best amongst individual models, with an accuracy above 80%, compared to SVM with 77%, GRU with 73.9%, and the tree-based models below 64%. Ensemble learning with four CNN models achieved an even higher accuracy of 86%. These results suggest that the CNN ensemble model is capable of classifying EMG signals for most ADLs, which could be used in off-line quantitative assessment of robotic rehabilitation outcomes.

Idioma originalInglés
Título de la publicación alojada2022 International Conference on Rehabilitation Robotics, ICORR 2022
EditorialIEEE Computer Society
ISBN (versión digital)9781665488297
DOI
EstadoPublicada - 2022
Publicado de forma externa
Evento2022 International Conference on Rehabilitation Robotics, ICORR 2022 - Rotterdam, Países Bajos
Duración: 25 jul. 202229 jul. 2022

Serie de la publicación

NombreIEEE International Conference on Rehabilitation Robotics
Volumen2022-July
ISSN (versión impresa)1945-7898
ISSN (versión digital)1945-7901

Conferencia

Conferencia2022 International Conference on Rehabilitation Robotics, ICORR 2022
País/TerritorioPaíses Bajos
CiudadRotterdam
Período25/07/2229/07/22

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