论文标题
Neuralhdhair:使用隐式神经表示从单个图像中自动高保真头发建模
NeuralHDHair: Automatic High-fidelity Hair Modeling from a Single Image Using Implicit Neural Representations
论文作者
论文摘要
毫无疑问,高保真3D头发在数字人类中起着必不可少的作用。但是,现有的单眼头发建模方法要么很难在数字系统中部署(例如,由于它们对复杂的用户交互或大型数据库的依赖),要么只能产生粗糙的几何形状。在本文中,我们介绍了Neuralhdhair,这是一种灵活的,全自动的系统,用于对单个图像进行高保真头发进行建模。我们系统的关键推动因素是两个精心设计的神经网络:一个irhairnet(用于使用神经网络的头发的隐式表示),用于推断高保真3D头发几何特征(3D方向领域和3D占用场)和grownnet(使用神经网络生长的头发链),以有效地产生3D毛线链,以有效地产生3D脱发。具体而言,我们执行一种粗略的方式,并提出了一种新型的体素一致的隐式函数(VIFU)来表示全局发型,从头发亮度图中提取的局部细节进一步增强了全局。为了提高传统头发生长算法的效率,我们采用局部神经隐式功能来根据估计的3D头发几何特征生长链。广泛的实验表明,我们的方法能够有效,有效地从单个图像中构建高保真的3D发型模型,并实现现实的性能。
Undoubtedly, high-fidelity 3D hair plays an indispensable role in digital humans. However, existing monocular hair modeling methods are either tricky to deploy in digital systems (e.g., due to their dependence on complex user interactions or large databases) or can produce only a coarse geometry. In this paper, we introduce NeuralHDHair, a flexible, fully automatic system for modeling high-fidelity hair from a single image. The key enablers of our system are two carefully designed neural networks: an IRHairNet (Implicit representation for hair using neural network) for inferring high-fidelity 3D hair geometric features (3D orientation field and 3D occupancy field) hierarchically and a GrowingNet(Growing hair strands using neural network) to efficiently generate 3D hair strands in parallel. Specifically, we perform a coarse-to-fine manner and propose a novel voxel-aligned implicit function (VIFu) to represent the global hair feature, which is further enhanced by the local details extracted from a hair luminance map. To improve the efficiency of a traditional hair growth algorithm, we adopt a local neural implicit function to grow strands based on the estimated 3D hair geometric features. Extensive experiments show that our method is capable of constructing a high-fidelity 3D hair model from a single image, both efficiently and effectively, and achieves the-state-of-the-art performance.