Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness

Virtual reality (VR) technology has become increasingly prevalent in our society and has been used for a myriad of applications ranging from psychotherapy to training members of the military. However, one issue that arises from the use of VR is motion sickness, thus making predictors and indicators...

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Main Authors: Max A. Teaford, Henry E. Cook, Justin A. Hassebrock, Robin D. Thomas, L. James Smart
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-07-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fpsyg.2020.01533/full
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spelling doaj-2e717f9255084482bc09caca0cd16c612020-11-25T02:53:12ZengFrontiers Media S.A.Frontiers in Psychology1664-10782020-07-011110.3389/fpsyg.2020.01533540160Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion SicknessMax A. TeafordHenry E. CookJustin A. HassebrockRobin D. ThomasL. James SmartVirtual reality (VR) technology has become increasingly prevalent in our society and has been used for a myriad of applications ranging from psychotherapy to training members of the military. However, one issue that arises from the use of VR is motion sickness, thus making predictors and indicators of motion sickness desirable. To date, a number of indicators of motion sickness have been derived based on nonlinear characteristics of human motion recorded using motion capture systems. While it is known that nonlinear measures can be used to predict motion sickness, it is not known whether people are perceptually sensitive to these particular nonlinear parameters. The aims of this study included establishing whether individuals consistently sort phase plots of sick and well individuals’ postural motion without being explicitly told to do so; determining what nonlinear movement parameters could be used to represent these judgments; and assessing the stability of nonlinear measures found to be successful at predicting motion sickness by Smart et al. (2014). Through two methods of analysis (perceptual and quantitative), this research demonstrated that participants can indeed sort the graphic depictions of sick and well participants’ postural motion and seem to be perceptually sensitive to nonlinear parameters (normalized path length, path length, elliptical area) that are known to be predictive of motion sickness.https://www.frontiersin.org/article/10.3389/fpsyg.2020.01533/fullperceptioncategorizationposturemotion sicknessnonlinear measuressort task
collection DOAJ
language English
format Article
sources DOAJ
author Max A. Teaford
Henry E. Cook
Justin A. Hassebrock
Robin D. Thomas
L. James Smart
spellingShingle Max A. Teaford
Henry E. Cook
Justin A. Hassebrock
Robin D. Thomas
L. James Smart
Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness
Frontiers in Psychology
perception
categorization
posture
motion sickness
nonlinear measures
sort task
author_facet Max A. Teaford
Henry E. Cook
Justin A. Hassebrock
Robin D. Thomas
L. James Smart
author_sort Max A. Teaford
title Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness
title_short Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness
title_full Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness
title_fullStr Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness
title_full_unstemmed Perceptual Validation of Nonlinear Postural Predictors of Visually Induced Motion Sickness
title_sort perceptual validation of nonlinear postural predictors of visually induced motion sickness
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2020-07-01
description Virtual reality (VR) technology has become increasingly prevalent in our society and has been used for a myriad of applications ranging from psychotherapy to training members of the military. However, one issue that arises from the use of VR is motion sickness, thus making predictors and indicators of motion sickness desirable. To date, a number of indicators of motion sickness have been derived based on nonlinear characteristics of human motion recorded using motion capture systems. While it is known that nonlinear measures can be used to predict motion sickness, it is not known whether people are perceptually sensitive to these particular nonlinear parameters. The aims of this study included establishing whether individuals consistently sort phase plots of sick and well individuals’ postural motion without being explicitly told to do so; determining what nonlinear movement parameters could be used to represent these judgments; and assessing the stability of nonlinear measures found to be successful at predicting motion sickness by Smart et al. (2014). Through two methods of analysis (perceptual and quantitative), this research demonstrated that participants can indeed sort the graphic depictions of sick and well participants’ postural motion and seem to be perceptually sensitive to nonlinear parameters (normalized path length, path length, elliptical area) that are known to be predictive of motion sickness.
topic perception
categorization
posture
motion sickness
nonlinear measures
sort task
url https://www.frontiersin.org/article/10.3389/fpsyg.2020.01533/full
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