Who do you look like? - Gaze-based authentication for workers in VR

Karina LaRubbio, Jeremiah Wright, Brendan David-John, A. Enqvist, Eakta Jain
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引用次数: 1

Abstract

Behavior-based authentication methods are actively being developed for XR. In particular, gaze-based methods promise continuous au-thentication of remote users. However, gaze behavior depends on the task being performed. Identification rate is typically highest when comparing data from the same task. In this study, we compared authentication performance using VR gaze data during random dot viewing, 360-degree image viewing, and a nuclear training simu-lation. We found that within-task authentication performed best for image viewing (72%). The implication for practitioners is to integrate image viewing into a VR workflow to collect gaze data that is viable for authentication.
你长得像谁?-基于注视的VR工作人员认证
基于行为的身份验证方法正在为XR积极开发。特别是,基于注视的方法承诺对远程用户进行持续的身份验证。然而,凝视行为取决于正在执行的任务。在比较来自同一任务的数据时,识别率通常最高。在这项研究中,我们比较了在随机点观看、360度图像观看和核训练模拟中使用VR凝视数据的认证性能。我们发现任务内认证在图像查看方面表现最好(72%)。对于从业者来说,这意味着将图像观看集成到VR工作流程中,以收集可用于身份验证的凝视数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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