Artificial Bee Colony Optimization for EEG Channel Selection in Subject Independent Motor Imagery BCI
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Publication Details
Author list: Sorawit Therdkiattikoon, Suthathip Maneewongvatan
Publication year: 2025
Title of series: CCIS: Communications in Computer and Information Science
Start page: 529
Languages: English-United States (EN-US)
Abstract
Motor Imagery-based Brain-Computer Interfaces (MI-BCIs) enable control of external devices through imagined movements, showing promise for assistive technologies. However, the use of numerous EEG sensors poses practical challenges. This research proposes a method to reduce EEG electrodes in MI-BCIs using the Artificial Bee Colony (ABC) algorithm for channel selection, cupled with Common Spatial Pattern (CSP) for feature extraction. Experiments were conducted on a public BCI Competition dataset featuring four movement classes recorded via 22 EEG and 3 EOG channels. Our ABC-based channel selection method, combined with CSP and Support Vector Machine classification, achieved 70.22% accuracy using only 12 channels, compared to 65.51% with all channels on subject-independent BCI. These findings demonstrate the feasibility of developing more practical MI-BCIs with fewer EEG electrodes, potentially enhancing assistive technology usability for individuals with motor disabilities.
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