HiFECap:人类表演的单目高保真和表达捕捉

Yue-Ren Jiang, Marc Habermann, Vladislav Golyanik, C. Theobalt
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引用次数: 6

摘要

单目3D人体动作捕捉对于计算机图形学和视觉中的许多应用来说是必不可少的,可以实现沉浸式体验。然而,对人体的详细捕捉需要跟踪多个方面,包括骨骼姿势、动态表面(包括服装)、手势以及面部表情。没有现有的单目方法允许关节跟踪所有这些部件。为此,我们提出了HiFECap,一种新的神经人体行为捕捉方法,它可以同时从单个RGB视频中捕捉人体姿势,服装,面部表情和手。我们证明了我们提出的网络架构,精心设计的训练策略,以及参数化面部和手部模型与模板网格的紧密集成,能够捕获所有这些单独的方面。重要的是,我们的方法也比以前的工作更好地捕捉到高频细节,比如衣服上变形的皱纹。此外,我们表明HiFECap在定性和定量上优于最先进的人类行为捕获方法,同时首次捕获人类的各个方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HiFECap: Monocular High-Fidelity and Expressive Capture of Human Performances
Monocular 3D human performance capture is indispensable for many applications in computer graphics and vision for enabling immersive experiences. However, detailed capture of humans requires tracking of multiple aspects, including the skeletal pose, the dynamic surface, which includes clothing, hand gestures as well as facial expressions. No existing monocular method allows joint tracking of all these components. To this end, we propose HiFECap, a new neural human performance capture approach, which simultaneously captures human pose, clothing, facial expression, and hands just from a single RGB video. We demonstrate that our proposed network architecture, the carefully designed training strategy, and the tight integration of parametric face and hand models to a template mesh enable the capture of all these individual aspects. Importantly, our method also captures high-frequency details, such as deforming wrinkles on the clothes, better than the previous works. Furthermore, we show that HiFECap outperforms the state-of-the-art human performance capture approaches qualitatively and quantitatively while for the first time capturing all aspects of the human.
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