Abstract
The electroencephalogram (EEG) introduced a massive potential for user identification. Several studies have shown that EEG provides unique features in addition to typical strength for spoofing attacks. EEG provides a graphic recording of the brain’s electrical activity that electrodes can capture on the scalp at different places. However, selecting which electrodes should be used is a challenging task. Such a subject is formulated as an electrode selection task that is tackled by optimization methods. In this work, a new approach to select the most representative electrodes is introduced. The proposed algorithm is a hybrid version of the Flower Pollination Algorithm and β-Hill Climbing optimizer called FPAβ-hc. The performance of the FPAβ-hc algorithm is evaluated using a standard EEG motor imagery dataset. The experimental results show that the FPAβ-hc can utilize less than half of the electrode numbers, achieving more accurate results than seven other methods.
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Alyasseri, Z. A. A., Alomari, O. A., Papa, J. P., Al-Betar, M. A., Abdulkareem, K. H., Mohammed, M. A., … Khuwuthyakorn, P. (2022). EEG Channel Selection Based User Identification via Improved Flower Pollination Algorithm. Sensors, 22(6). https://doi.org/10.3390/s22062092
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