INTERNATIONAL CONFERENCE on ELECTRICAL and ELECTRONICS ENGINEERING, Bursa, Türkiye, 27 - 29 Kasım 2025, cilt.1, sa.1, ss.1-5, (Tam Metin Bildiri)
This pilot study presents a hybrid EEG–fNIRS framework to
jointly assess speller performance and cognitive fatigue.
Speller paradigms often face a trade-off: increasing stimulus
flash repetitions improves ERP signal-to-noise ratio (SNR)
but prolongs task duration, while fewer flashes reduce
efficiency under fatigue. To address this limitation, EEG and
fNIRS signals were recorded simultaneously during speller
and cognitive task, arithmetic problem-solving blocks.
Behavioral findings showed a decline in performance of the
cognitive task, with fewer correct answers and longer
response times across blocks, suggesting increased fatigue.
ERP analyses revealed overall strong target responses but
with attenuated amplitudes over time, especially in parietal
and occipital channels. Classification confirmed these
patterns: target vs. non-target discrimination reached 98.6%
accuracy with three EEG channels, cognitive block
classification achieved 92.4% using EEG, and 87.4% using
fNIRS. These results demonstrate the feasibility of hybrid
EEG–fNIRS systems for monitoring user states and provide
a foundation for adaptive speller BCIs that dynamically
adjust stimulus repetitions.