Evaluation and improvement of HMD-based and RGB-based hand tracking solutions in VR

IF 3.2 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Dennis Reimer, Iana Podkosova, D. Scherzer, H. Kaufmann
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引用次数: 0

Abstract

Hand tracking has become a state-of-the-art technology in the modern generation of consumer VR devices. However, off-the-shelf solutions do not support hand detection for more than two hands at the same time at distances beyond arm’s length. The possibility to track multiple hands at larger distances would be beneficial for colocated multi-user VR scenarios, allowing user-worn devices to track the hands of other users and therefore reducing motion artifacts caused by hand tracking loss. With the global focus of enabling natural hand interactions in colocated multi-user VR, we propose an RGB image input-based hand tracking method, built upon the MediaPipe framework, that can track multiple hands at once at distances of up to 3 m. We compared our method’s accuracy to that of Oculus Quest and Leap Motion, at different distances from the tracking device and in static and dynamic settings. The results of our evaluation show that our method provides only slightly less accurate results than Oculus Quest or Leap motion in the near range (with median errors below 1.75 cm at distances below 75 cm); at larger distances, its accuracy remains stable (with a median error of 4.7 cm at the distance of 2.75 m) while Leap Motion and Oculus Quest either loose tracking or produce very inaccurate results. Taking into account the broad choice of suitable hardware (any RGB camera) and the ease of setup, our method can be directly applied to colocated multi-user VR scenarios.
VR中基于HMD和RGB的手跟踪解决方案的评估和改进
手部跟踪已经成为现代一代消费VR设备中最先进的技术。然而,现成的解决方案不支持在超过手臂长度的距离同时检测两只以上的手。在更大的距离上跟踪多只手的可能性将有利于共存的多用户VR场景,允许用户佩戴的设备跟踪其他用户的手,从而减少由手跟踪丢失引起的运动伪影。随着全球关注在多用户虚拟现实中实现自然手部交互,我们提出了一种基于RGB图像输入的手部跟踪方法,该方法建立在MediaPipe框架之上,可以在长达3米的距离内同时跟踪多只手。我们将我们的方法与Oculus Quest和Leap Motion在距离跟踪设备不同距离以及在静态和动态设置下的精度进行了比较。我们的评估结果表明,在近距离内,我们的方法只提供了略低于Oculus Quest或Leap运动的准确结果(在75厘米以下的距离处,中值误差低于1.75厘米);在更大的距离上,它的精度保持稳定(在2.75米的距离上的中误差为4.7厘米),而Leap Motion和Oculus Quest要么跟踪松散,要么产生非常不准确的结果。考虑到合适硬件(任何RGB相机)的广泛选择和设置的方便性,我们的方法可以直接应用于多用户VR场景。
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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来源期刊
CiteScore
5.80
自引率
0.00%
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0
审稿时长
13 weeks
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