An Active RBSE Framework to Generate Optimal Stimulus Sequences in a BCI for Spelling
Mohammad Moghadamfalahi, Murat Akcakaya, Hooman Nezamfar, Jamshid, Sourati, Deniz Erdogmus

TL;DR
This paper introduces an active-RBSE framework that optimizes stimulus sequences in EEG-based BCIs to improve typing speed and accuracy for users with speech and motor impairments.
Contribution
The paper presents a novel active-RBSE method for adaptive sequence selection in BCI spelling, enhancing performance over standard paradigms.
Findings
Active-RBSE improves typing accuracy.
Active-RBSE increases typing speed.
Performance surpasses traditional paradigms.
Abstract
A class of brain computer interfaces (BCIs) employs noninvasive recordings of electroencephalography (EEG) signals to enable users with severe speech and motor impairments to interact with their environment and social network. For example, EEG based BCIs for typing popularly utilize event related potentials (ERPs) for inference. Presentation paradigm design in current ERP-based letter by letter typing BCIs typically query the user with an arbitrary subset characters. However, the typing accuracy and also typing speed can potentially be enhanced with more informed subset selection and flash assignment. In this manuscript, we introduce the active recursive Bayesian state estimation (active-RBSE) framework for inference and sequence optimization. Prior to presentation in each iteration, rather than showing a subset of randomly selected characters, the developed framework optimally selects…
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