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Larger Step Faster Speed: Investigating Gesture-Amplitude-based Locomotion in Place with Different Virtual Walking Speed in Virtual Reality

机译:更大的一步更快速度:以虚拟现实的不同虚拟步行速度调查基于手势的基于幅度的运动

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In this paper, we present a series of user studies to investigate the technique of gesture-amplitude-based walking-speed control for locomotion in place (LIP) in virtual reality (VR). Our 1st study suggested that compared to tapping and goose-stepping, the gesture of marching in place was significantly preferred by users across three different virtual walking speed (i.e., 1 ×, 3 ×, and 10 ×) while sitting and standing, and it yielded larger motion difference across the three speed levels. With the tracker data recorded in the 1st study, we trained a Support- Vector-Machine classification model for LIP speed control based on users' leg/foot gestures in marching in place. The overall accuracy for classifying three speed levels was above 90% for sitting and standing. With the classification model, we then compared the marching-in-place speed-control technique with the controller-based teleportation approach on a target-reaching task where users were sitting and standing. We found no significant difference between the two conditions in terms of target-reaching accuracy. More importantly, the technique of marching in place yielded significantly higher user ratings in terms of naturalness, realness, and engagement than the controller-based teleportation did.
机译:在本文中,我们展示了一系列用户研究,以研究虚拟现实(VR)中的机器人(LIP)的机置的手势幅度的步行速度控制技术。我们的第一个研究表明,与攻丝和渐进的踩踏相比,在坐着和站立时,使用三种不同的虚拟步行速度(即1×,3×,10×)的用户,在适当的姿态是明显的优选的在三个速度水平上产生更大的运动差异。通过在第一次研究中记录的跟踪器数据,我们培训了基于用户的腿/脚手势的唇速控制的支持 - 矢量机器分类模型。坐着和站立的分类三个速度水平的整体准确性高于90%。通过分类模型,我们将游行速度控制技术与基于控制器的传送方法进行比较,在用户坐在的目标达到的目标上。在目标达到准确性方面,我们发现两个条件之间没有显着差异。更重要的是,在自然,现实和参与方面,在基于控制器的传送方面,进军的技术在适当地产生了更高的用户评分。

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