我需要退后一步!虚拟现实中多模态传感器的向后运动建模

Seungwon Paik, Kyungsik Han
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引用次数: 0

摘要

在虚拟现实(VR)环境中,用户的运动是与用户体验相关的最重要的属性之一。然而,很少有研究集中在检查向后运动。对这些动作的不适当支持可能会导致VR项目中的头晕和脱离。在本文中,我们通过进行用户研究,研究了从身体的三个不同位置(即头部,腰部和脚)检测向前和向后运动的可能性。我们的机器学习模型对向前和向后运动的检测准确率高达93%,并显示参与者的表现略有不同。我们通过身体位置、积分和采样率来详细分析我们的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
I Need to Step Back from It! Modeling Backward Movement from Multimodal Sensors in Virtual Reality
A user’s movement is one of the most important properties that pertain to user experience in a virtual reality (VR) environment. However, little research has focused on examining backward movements. Inappropriate support of such movements could lead to dizziness and disengagement in a VR program. In this paper, we investigate the possibility of detecting forward and backward movements from three different positions of the body (i.e., head, waist, and feet) by conducting a user study. Our machine-learning model yields the detection of forward and backward movements up to 93% accuracy and shows slightly varying performances by the participants. We detail the analysis of our model through the lenses of body position, integration, and sampling rate.
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