We propose Neural Deformable Fields (NDF), a new representation for dynamic human digitization from a multi-view video. Recent works proposed to represent a dynamic human body with shared canonical neural radiance fields which links to the observation space with deformation fields estimations. However, the learned canonical representation is static and the current design of the deformation fields is not able to represent large movements or detailed geometry changes. In this paper, we propose to learn a neural deformable field wrapped around a fitted parametric body model to represent the dynamic human. The NDF is spatially aligned by the underlying reference surface. A neural network is then learned to map pose to the dynamics of NDF. The proposed NDF representation can synthesize the digitized performer with novel views and novel poses with a detailed and reasonable dynamic appearance. Experiments show that our method significantly outperforms recent human synthesis methods.
翻译:我们提出神经变形场(NDF),这是多视图视频中动态人类数字化的新代表。最近提出的工程提议代表一个动态的人体,与观测空间相连接,与变形场估计相联,与观测空间相连接的圆柱体神经弧度场。然而,所学的圆柱体代表是静态的,而变形场目前的设计无法代表巨大的移动或详细的几何变化。在本文中,我们提议学习一个神经变形场,围绕一个适合的准体模型来代表动态人类。NDF在空间上与基本参考表面相匹配。然后学习一个神经网络来映射出NDF的动态。拟议的NDF代表可以以新的视角和新颖的外观合成数字化表演器,并配有详细和合理的动态外观。实验表明,我们的方法大大超越了最近的人类合成方法。