2018
DOI: 10.1016/j.neulet.2018.09.065
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Perceived timing of active head movement at different speeds

Abstract:  Active head movement onset must precede sound onset to be perceived as simultaneous  This perceptual delay for active head movement onset is reduced with head movement speed  There is a persistent perceptual delay of active head movement onset even at extreme speeds

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Cited by 3 publications
(1 citation statement)
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“…This allows for the analysis of head motion and orientation, which is crucial as head movements have been associated with influencing temporal perception and varying based on arousal and valence states (Behnke et al, 2021 ). In fact, the speed and nature of head movements can affect the perception of simultaneity between sensory events (Sachgau et al, 2018 ; Allingham et al, 2020 ) and can lead to recalibration of time perception in a virtual reality context (Bansal et al, 2019 ). To capture these dynamics, we extracted features from the x, y , and z signals of the accelerometer data, segmented into 2-s epochs with a 50% overlap.…”
Section: Methodsmentioning
confidence: 99%
“…This allows for the analysis of head motion and orientation, which is crucial as head movements have been associated with influencing temporal perception and varying based on arousal and valence states (Behnke et al, 2021 ). In fact, the speed and nature of head movements can affect the perception of simultaneity between sensory events (Sachgau et al, 2018 ; Allingham et al, 2020 ) and can lead to recalibration of time perception in a virtual reality context (Bansal et al, 2019 ). To capture these dynamics, we extracted features from the x, y , and z signals of the accelerometer data, segmented into 2-s epochs with a 50% overlap.…”
Section: Methodsmentioning
confidence: 99%