2024
DOI: 10.1101/2024.04.24.590885
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Combining EEG and Eye-Tracking in Virtual Reality - Obtaining Fixation-Onset ERPs and ERSPs

Debora Nolte,
Marc Vidal De Palol,
Ashima Keshava
et al.

Abstract: Extensive research conducted in controlled laboratory settings has prompted an inquiry into how results can be generalized to real-world situations influenced by the subjects' actions. Virtual reality lends itself ideally to investigating complex situations but requires accurate classification of eye movements, especially when combining it with time-sensitive data such as EEG. We recorded eye-tracking data in virtual reality and classified it into gazes and saccades using a velocity-based classification algori… Show more

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“…Nolte et al, 2024). The classi cation was based on versions of the REMoDNaV(Dar et al, 2021) and MAD saccade(Voloh et al, 2020) algorithms, adjusted for three-dimensional data(Keshava et al, 2023) while accounting for translational movements of the player within the virtual scene(Nolte et al, 2024). Subsequently, gazes speci cally targeting pedestrian heads were isolated.…”
mentioning
confidence: 99%
“…Nolte et al, 2024). The classi cation was based on versions of the REMoDNaV(Dar et al, 2021) and MAD saccade(Voloh et al, 2020) algorithms, adjusted for three-dimensional data(Keshava et al, 2023) while accounting for translational movements of the player within the virtual scene(Nolte et al, 2024). Subsequently, gazes speci cally targeting pedestrian heads were isolated.…”
mentioning
confidence: 99%