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Unmasking Communication Partners: A Low-Cost AI Solution for Digitally Removing Head-Mounted Displays in VR-Based Telepresence

机译:揭示通信合作伙伴:用于数字拆卸基于VR的远程验证的头戴式显示器的低成本AI解决方案

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Face-to-face conversation in Virtual Reality (VR) is a challenge when participants wear head-mounted displays (HMD). A significant portion of a participant's face is hidden and facial expressions are difficult to perceive. Past research has shown that high-fidelity face reconstruction with personal avatars in VR is possible under laboratory conditions with high-cost hardware. In this paper, we propose one of the first low-cost systems for this task which uses only open source, free software and affordable hardware. Our approach is to track the user's face underneath the HMD utilizing a Convolutional Neural Network (CNN) and generate corresponding expressions with Generative Adversarial Networks (GAN) for producing RGBD images of the person's face. We use commodity hardware with low-cost extensions such as 3Dprinted mounts and miniature cameras. Our approach learns end-to-end without manual intervention, runs in real time, and can be trained and executed on an ordinary gaming computer. We report evaluation results showing that our low-cost system does not achieve the same fidelity of research prototypes using high-end hardware and closed source software, but it is capable of creating individual facial avatars with personspecific characteristics in movements and expressions.
机译:虚拟现实中的面对面对话(VR)是参与者佩戴头戴式显示器(HMD)时的挑战。隐藏参与者面孔的重要部分是隐藏的,面部表情难以感知。过去的研究表明,在具有高成本硬件的实验室条件下,VR中具有个人头像的高保真面重建。在本文中,我们提出了仅使用开源,免费软件和经济实惠的硬件的此任务的第一种低成本系统之一。我们的方法是利用卷积神经网络(CNN)跟踪HMD下方的用户的面部,并用生成的对抗网络(GAN)生成用于产生人脸的RGBD图像的相应表达式。我们使用商品硬件具有低成本的延伸,例如3DPrinted安装和微型相机。我们的方法在没有手动干预的情况下学习结束于尾,实时运行,可以在普通的游戏计算机上进行培训和执行。我们报告评估结果表明,我们的低成本系统无法使用高端硬件和封闭源软件实现研究原型的相同保真度,但它能够在动作和表达中具有人特异性特征的各个面部头像。

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