Abstract

in this work, we aim to develop a more efficient visual motion-onset based Brain-computer interface (BCI). Brain-computer interfaces provide communication facilities that do not rely on the brain's usual pathways. Visual BCIs are based on changes in EEG activity in response to attended flashing or flickering targets. A less taxing way to encode such targets is with briefly moving stimuli, the onset of which elicits a lateralized EEG potential over the parieto-occipital scalp area called the motion-onset visual evoked potential (mVEP). We recruited 21 healthy subjects for an experiment in which motion-onset stimulations translating leftwards (LT) or rightwards (RT) were encoding 9 displayed targets. We propose a novel algorithm that exploits the phase-shift between EEG electrodes to improve target decoding performance. We hereto extend the spatiotemporal beamformer (stBF) with a phase extracting procedure, leading to the phase-spatial beamformer (psBF). we show that psBF performs significantly better than the stBF (p < 0.001 for 1 and 2 stimulus repetitions and p < 0.01 for 3 to 5 stimulus repetitions), as well as the previously validated linear support-vector machines (p < 0.001 for 5 stimulus repetitions and p < 0.01 for 1,2 and 6 stimulus repetitions) and stepwise linear discriminant analysis decoders (p < 0.001 for all repetitions) when simultaneously addressing timing and translation direction. We provide evidence of decodability of joint direction and target in mVEP responses. the described methods can aid in the development of a faster and more comfortable BCI based on mVEPs.

Highlights

  • BRAIN computer interfacing (BCI) establishes a communication channel between the brain and an external device without any physical embodiment [1], [2]

  • We propose to adapt this method to focus on inter-electrode phase shifts in motion-onset visual evoked potential (mVEP) albeit our method could be used for other event-related potentials as well

  • We propose to extend the spatiotemporal beamformer into a phase-spatial variant to account for both the stereotypical inter-electrode phase shifts and occasional phase slips in response to repeated mVEP stimulation

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Summary

Introduction

BRAIN computer interfacing (BCI) establishes a communication channel between the brain and an external device without any physical embodiment [1], [2]. Visual motion paradigms do not rely on luminosity changes, but rather build upon responses elicited by stimuli that move through the visual field These include motion-onset [13], [18]–[21], motion-offset [22], motion direction changes [23] and steady-state motion [17], [24], [25], of which the first yields the highest amplitudes and lowest inter- and intra-subject variabilities [19], rendering it the most suited one for adoption in a BCI context [18], [25], [26].

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