István Ketykó, Ferenc Kovács, Krisztián Zsolt Varga
Surface Electromyography (sEMG/EMG) is to record muscles' electrical activity from a restricted area of the skin by using electrodes. The sEMG-based gesture recognition is extremely sensitive of inter-session and inter-subject variances. We propose a model and a deep-learning-based domain adaptation method to approximate the domain shift for recognition accuracy enhancement. Analysis performed on sparse and HighDensity (HD) sEMG public datasets validate that our approach outperforms state-of-the-art methods.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Gesture Recognition | Ninapro DB-1 12 gestures | Accuracy | 84.7 | 2SRNN |
| Gesture Recognition | Ninapro DB-1 8 gestures | Accuracy | 90.7 | 2SRNN |
| Gesture Recognition | CapgMyo DB-c | Accuracy | 96.8 | 2SRNN |
| Gesture Recognition | CapgMyo DB-b | Accuracy | 97.1 | 2SRNN |
| Gesture Recognition | CapgMyo DB-a | Accuracy | 97.1 | 2SRNN |