CoNFies:可控制的神经面部化身

Heng Yu, Koichiro Niinuma, László A. Jeni
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引用次数: 1

摘要

神经辐射场(NeRF)是一种引人注目的技术,用于从2D图像集合中建模动态3D场景。这些体积表示将非常适合于合成新的面部表情,但有两个问题。首先,可变形nerf是对象不可知论者,并模拟场景的整体运动:它们可以回放运动如何随时间变化,但它们不能以可解释的方式改变它。其次,可控的体积表示通常需要耗时的手动注释或3D监督来为场景提供语义。我们提出了一种面部自画像(CoNFies)的可控神经表征,它在一个共同的框架内解决了这两个问题,并且它可以依赖于自动化处理。我们使用自动面部动作识别(AFAR)将面部表情表征为动作单元(AU)及其强度的组合。au为系统提供语义位置和控制标签。在表达的视觉和解剖保真度方面,CoNFies优于竞争性的新视图和表达合成方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CoNFies: Controllable Neural Face Avatars
Neural Radiance Fields (NeRF) are compelling techniques for modeling dynamic 3D scenes from 2D image collections. These volumetric representations would be well suited for synthesizing novel facial expressions but for two problems. First, deformable NeRFs are object agnostic and model holistic movement of the scene: they can replay how the motion changes over time, but they cannot alter it in an interpretable way. Second, controllable volumetric representations typically require either time-consuming manual annotations or 3D supervision to provide semantic meaning to the scene. We propose a controllable neural representation for face self-portraits (CoNFies), that solves both of these problems within a common framework, and it can rely on automated processing. We use automated facial action recognition (AFAR) to characterize facial expressions as a combination of action units (AU) and their intensities. AUs provide both the semantic locations and control labels for the system. CoNFies outperformed competing methods for novel view and expression synthesis in terms of visual and anatomic fidelity of expressions.
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