Abstract
Movement intentions of motor impaired individuals can be detected in laboratory settings via electroencephalography Brain-Computer Interfaces (EEG-BCIs) and used for motor rehabilitation and external system control. The real-world BCI use is limited by the costly, time-consuming, obtrusive, and uncomfortable setup of scalp EEG. Ear-EEG offers a faster, more convenient, and more aesthetic setup for recording EEG, but previous work using expensive amplifiers detected motor intentions at chance level. This study investigates the feasibility of a low-cost ear-EEG BCI for the detection of tongue and hand movements for rehabilitation and control purposes. In this study, ten able-bodied participants performed 100 right wrist extensions and 100 tongue-palate movements while three channels of EEG were recorded around the left ear. Offline movement vs. idle activity classification of ear-EEG was performed using temporal and spectral features classified with Random Forest, Support Vector Machine, K-Nearest Neighbours, and Linear Discriminant Analysis in three scenarios: Hand (rehabilitation purpose), hand (control purpose), and tongue (control purpose). The classification accuracies reached 70%, 73%, and 83%, respectively, which was significantly higher than chance level. These results suggest that a low-cost ear-EEG BCI can detect movement intentions for rehabilitation and control purposes. Future studies should include online BCI use with the intended user group in real-life settings.
Original language | English |
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Article number | 6004 |
Journal | Sensors (Basel, Switzerland) |
Volume | 24 |
Issue number | 18 |
ISSN | 1424-8220 |
DOIs | |
Publication status | Published - 17 Sept 2024 |
Keywords
- Adult
- Brain-Computer Interfaces
- Brain/physiology
- Ear/physiology
- Electroencephalography/methods
- Female
- Hand/physiology
- Humans
- Male
- Movement/physiology
- Support Vector Machine
- Tongue/physiology
- Young Adult