Sensors, Volume 26, Issue 7 , 01/04/2026

Electroencephalography-Based Brain–Computer Interface System Using Tongue Movement Imagery for Wheelchair Control

Theerat Saichoo, Nannaphat Siribunyaphat, Bukhoree Sahoh, M. Arif Efendi, Yunyong Punsawad

Abstract

Brain–computer interfaces (BCIs) are essential in assistive technologies to restore mobility in individuals with motor impairments. Although electroencephalography (EEG)-based brain-controlled wheelchairs have been extensively studied, most tongue-controlled systems rely on physical tongue movements, intraoral devices, or limited offline commands, which reduces the usability and comfort. This study introduces an EEG-based tongue motor imagery (MI) BCI for intuitive and entirely mental wheelchair control. By leveraging preserved motor function and the cortical representation of the tongue, the system enables natural four-directional control through imagined tongue movements. Six imagined tongue actions—touching the left and right mouth corners, the upper and lower lips, and producing left and right cheek bulges—were designed to elicit alpha-band event-related desynchronization (ERD) patterns over the tongue motor cortex. EEG data were collected from 15 healthy participants using a 14-channel consumer-grade EMOTIV EPOC X headset. Alpha-band ERD features were extracted and classified using linear discriminant analysis, support vector machine, naïve Bayes, and artificial neural networks (ANNs). Simpler command sets yielded the highest accuracy: two-class tasks achieved 76.19%, while the performance decreased with increasing task complexity. The ANN achieved superior results in multi-class scenarios. The proposed tongue MI method offers initial support for developing a BCI control strategy for assistive technology; however, further improvements in classification techniques, user training, and real-time validation are needed to improve the robustness and practical usability.

Document Type

Article

Source Type

Journal

Keywords

brain-controlled wheelchairbrain–computer interfaceelectroencephalographymachine learningmotor imagerytongue movements

ASJC Subject Area

Engineering : Electrical and Electronic EngineeringPhysics and Astronomy : Atomic and Molecular Physics, and OpticsChemistry : Analytical ChemistryComputer Science : Information SystemsPhysics and Astronomy : InstrumentationBiochemistry, Genetics and Molecular Biology : Biochemistry



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Citations (Scopus)

Bibliography


Saichoo, T., Siribunyaphat, N., Sahoh, B., Efendi, M., & Punsawad, Y. (2026). Electroencephalography-Based Brain–Computer Interface System Using Tongue Movement Imagery for Wheelchair Control. Sensors, 26(7) doi:10.3390/s26072211

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