Evaluating the Potential of Low-Cost BCI Devices for Online Classification of Four-Class Motor Imagery States

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Author listSuparach Intarasopa, Bawornsak Sakulkueakulsuk, Thitaporn Chaisilprungraung

Publication year2025

Start page414

End page425

Number of pages12

URLhttps://link.springer.com/chapter/10.1007/978-981-96-3294-7_32


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Abstract

Brain-ComputerInterface(BCI)systemsenabledirectcommunication between the human brain and external devices by utilizing neural signals to control machines or computers. Among the various BCI paradigms, motor imagery (MI) BCI has garnered significant attention due to its potential in real-world appli- cations, such as assistive technologies and smart home control. However, most existing studies on consumer-grade real-time MI-BCI systems have been lim- ited to two-class discrimination tasks (e.g., left vs. right hand movement), which constrains their applicability to more complex, real-world scenarios. In this pilot study, we explore the feasibility of a real-time MI-BCI system capable of dis- tinguishing among four MI classes (left hand, right hand, feet, and idle) using a dry-electrode, 8-channel EEG device (Unicorn Hybrid Black). A hybrid CNN- LSTM deep learning model was employed for classification analysis. Our results revealed a modest above-chance classification performance of 40.9% for the offline session and 35.9% for the online session, with significant variability across sub- jects. Further analysis indicated that the strength and clarity of Event-Related Desynchronization (ERD) patterns associated with motor imagery were critical factors influencing performance. These findings suggest that while the proposed system shows significant promise, addressing the challenges of consistent and reliable performance, especially among new users, is essential for its real-world application.


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Last updated on 2025-18-04 at 00:00