As virtual reality (VR) devices become increasingly integrated into everyday settings, a growing number of users without prior experience will engage with VR systems. Automatically detecting a user's familiarity with VR as an interaction medium enables real-time, adaptive training and interface adjustments, minimizing user frustration and improving task performance. In this study, we explore the automatic detection of VR familiarity by analyzing hand movement patterns during a passcode-based door-opening task, which is a well-known interaction in collaborative virtual environments such as meeting rooms, offices, and healthcare spaces. While novice users may lack prior VR experience, they are likely to be familiar with analogous real-world tasks involving keypad entry. We conducted a pilot study with 26 participants, evenly split between experienced and inexperienced VR users, who performed tasks using both controller-based and hand-tracking interactions. Our approach uses state-of-the-art deep classifiers for automatic VR familiarity detection, achieving the highest accuracies of 92.05% and 83.42% for hand-tracking and controller-based interactions, respectively. In the cross-device evaluation, where classifiers trained on controller data were tested using hand-tracking data, the model achieved an accuracy of 78.89%. The integration of both modalities in the mixed-device evaluation obtained an accuracy of 94.19%. Our results underline the promise of using hand movement biometrics for the real-time detection of user familiarity in critical VR applications, paving the way for personalized and adaptive VR experiences.
翻译:随着虚拟现实设备日益融入日常生活场景,越来越多缺乏先前经验的用户将开始使用虚拟现实系统。自动检测用户对虚拟现实作为交互媒介的熟悉程度,能够实现实时自适应的训练与界面调整,从而减少用户挫败感并提升任务表现。本研究通过分析用户在基于密码的门户开启任务中的手部运动模式,探索自动检测虚拟现实熟悉度的方法。该任务在会议室、办公室及医疗空间等协作虚拟环境中属于常见交互范式。虽然新手用户可能缺乏虚拟现实使用经验,但他们通常熟悉涉及键盘输入的现实世界类似任务。我们开展了一项包含26名参与者的初步研究,参与者中经验丰富与缺乏经验的虚拟现实用户各半,他们分别使用控制器交互与手部追踪交互完成任务。我们的方法采用最先进的深度分类器实现虚拟现实熟悉度的自动检测,在手部追踪交互与控制器交互中分别达到92.05%与83.42%的最高准确率。在跨设备评估中(使用控制器数据训练的分类器以手部追踪数据进行测试),模型取得了78.89%的准确率。而在混合设备评估中整合两种交互模式后,准确率达到94.19%。我们的研究结果凸显了利用手部运动生物特征在关键虚拟现实应用中实时检测用户熟悉度的潜力,为个性化自适应虚拟现实体验的发展奠定了基础。