An ensemble of long short-term memory networks with an attention mechanism for upper limb electromyography signal classification
Advancing cutting-edge techniques to accurately classify electromyography (EMG) signals are of paramount importance given their extensive implications and uses. While recent studies in the literature present promising findings, a significant potential still exists for substantial enhancement. Motivated by this need, our current paper introduces a novel ensemble neural network approach for time series classification, specifically focusing on the classification of upper limb EMG signals. Our proposed technique integrates long short-term memory networks (LSTM) and attention mechanisms, leveraging their capabilities to achieve accurate classification. We provide a thorough explanation of the architecture and methodology, considering the unique characteristics and challenges posed by EMG signals. Furthermore, we outline the preprocessing steps employed to transform raw EMG signals into a suitable format for classification. To evaluate the effectiveness of our proposed technique, we compare its performance with a baseline LSTM classifier. The obtained numerical results demonstrate the superiority of our method. Remarkably, the method we propose attains an average accuracy of 91.5%, with all motion classifications surpassing the 90% threshold.
| Item Type | Article |
|---|---|
| Copyright holders | © 2023 The Author(s) |
| Departments | LSE > Research Centres > LSE Health |
| DOI | 10.3390/math11184004 |
| Date Deposited | 21 May 2024 |
| Acceptance Date | 19 Sep 2023 |
| URI | https://researchonline.lse.ac.uk/id/eprint/123550 |
Explore Further
- https://www.scopus.com/pages/publications/85176425904 (Scopus publication)
- https://www.mdpi.com/journal/mathematics (Official URL)
