论文标题
JIFF:高质量单视式人体重建的共同结合的隐式面部功能
JIFF: Jointly-aligned Implicit Face Function for High Quality Single View Clothed Human Reconstruction
论文作者
论文摘要
本文解决了单视3D人类重建的问题。最近的基于隐式函数的方法显示出令人印象深刻的结果,但他们无法在重建中恢复精美的面部细节。这在很大程度上降低了3D触觉等应用程序中的用户体验。在本文中,我们专注于改善重建中面部的质量,并提出一种新颖的联合隐式面部功能(JIFF),该函数(JIFF)结合了基于隐式函数的方法和基于模型的方法的优点。我们采用3D形态的面部模型作为我们的形状先验和计算与空间一致的3D功能,可捕获详细的面部几何信息。这种与像素对齐的2D功能相结合,可以共同预测高质量面部重建的隐式面部功能。我们进一步扩展了管道,并引入了一个粗到精细的体系结构,以预测我们详细的面部模型的高质量纹理。在公共数据集上进行了广泛的评估,我们提出的JIFF表明(量化和定性上)比现有最新的绩效表现出色。
This paper addresses the problem of single view 3D human reconstruction. Recent implicit function based methods have shown impressive results, but they fail to recover fine face details in their reconstructions. This largely degrades user experience in applications like 3D telepresence. In this paper, we focus on improving the quality of face in the reconstruction and propose a novel Jointly-aligned Implicit Face Function (JIFF) that combines the merits of the implicit function based approach and model based approach. We employ a 3D morphable face model as our shape prior and compute space-aligned 3D features that capture detailed face geometry information. Such space-aligned 3D features are combined with pixel-aligned 2D features to jointly predict an implicit face function for high quality face reconstruction. We further extend our pipeline and introduce a coarse-to-fine architecture to predict high quality texture for our detailed face model. Extensive evaluations have been carried out on public datasets and our proposed JIFF has demonstrates superior performance (both quantitatively and qualitatively) over existing state-of-the-arts.