基于集成头戴式头盔传感器的晕机预测:一种使用眼动追踪和头动追踪数据的多模式深度融合方法

Rifatul Islam, Kevin Desai, J. Quarles
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引用次数: 25

摘要

晕屏预测是实时减少晕屏的重要研究挑战之一。研究人员提出了从生物生理数据(如心率、呼吸频率、脑电图)预测晕屏病的不同方法。然而,收集生物生理数据通常需要外部传感器,这限制了虚拟现实(VR)体验中的运动和3d物体操作。从头戴式显示器(hmd)的集成传感器(例如,头部跟踪,眼球跟踪,运动特征)中随时可用的数据预测晕动症的研究有限,允许自由运动和3d物体操作。本研究提出了一种新的深度融合网络,可以从集成的HMD传感器中随时可用的异构数据中预测晕动病的严重程度。我们提取了1755个立体视频、眼动追踪和头部追踪数据,以及从30名参与者在VR游戏过程中收集的相应的自我报告晕机严重程度。我们对从参与者收集的异构数据应用了几种深度融合方法。我们的研究结果表明,当只使用眼动和头部追踪数据时,晕动病的预测准确率为87.77%,均方根误差为0.51。我们的结论是,眼球追踪和头部追踪数据非常适合于一个独立的晕动病预测框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cybersickness Prediction from Integrated HMD’s Sensors: A Multimodal Deep Fusion Approach using Eye-tracking and Head-tracking Data
Cybersickness prediction is one of the significant research challenges for real-time cybersickness reduction. Researchers have proposed different approaches for predicting cybersickness from bio-physiological data (e.g., heart rate, breathing rate, electroencephalogram). However, collecting bio-physiological data often requires external sensors, limiting locomotion and 3D-object manipulation during the virtual reality (VR) experience. Limited research has been done to predict cybersickness from the data readily available from the integrated sensors in head-mounted displays (HMDs) (e.g., head-tracking, eye-tracking, motion features), allowing free locomotion and 3D-object manipulation. This research proposes a novel deep fusion network to predict cybersickness severity from heterogeneous data readily available from the integrated HMD sensors. We extracted 1755 stereoscopic videos, eye-tracking, and head-tracking data along with the corresponding self-reported cybersickness severity collected from 30 participants during their VR gameplay. We applied several deep fusion approaches with the heterogeneous data collected from the participants. Our results suggest that cybersickness can be predicted with an accuracy of 87.77% and a root-mean-square error of 0.51 when using only eye-tracking and head-tracking data. We concluded that eye-tracking and head-tracking data are well suited for a standalone cybersickness prediction framework.
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