LipNeRF: NeRF对口型的正确特征空间是什么?

Aggelina Chatziagapi, ShahRukh Athar, Abhinav Jain, M. Rohith, Vimal Bhat, D. Samaras
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引用次数: 2

摘要

合成任意身份的高保真谈话头部视频,对口型与目标语音片段同步,是一个具有挑战性的问题。最近基于gan的方法通过在大量视频上训练模型,使生成器能够学习各种音频唇形表示而取得成功。然而,他们无法处理头部姿势的变化。另一方面,神经辐射场(nerf)更准确地模拟3D面部几何形状。目前的音频调节nerf在嘴唇同步方面不如gan好,因为它们是在单一身份的有限视频数据上训练的。在这项工作中,我们提出了LipNeRF,一种口型同步NeRF,它弥补了基于gan的方法的精确唇同步和NeRF的精确3D人脸建模之间的差距。LipNeRF的条件是3DMM的表达式空间,而不是音频特征空间。实验证明,与音频特征空间相比,表情空间能更好地表征唇形。与目前最先进的技术相比,LipNeRF在口型同步质量方面有了显着改善,特别是在具有挑战性的姿势、照明和表情变化的高清电影内容视频中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LipNeRF: What is the right feature space to lip-sync a NeRF?
Synthesizing high-fidelity talking head videos of an arbitrary identity, lip-synced to a target speech segment, is a challenging problem. Recent GAN-based methods succeed by training a model on a large amount of videos, allowing the generator to learn a variety of audio-lip representations. However, they are unable to handle head pose changes. On the other hand, Neural Radiance Fields (NeRFs) model the 3D face geometry more accurately. Current audio-conditioned NeRFs are not as good in lip synchronization as GANs, since they are trained on limited video data of a single identity. In this work, we propose LipNeRF, a lip-syncing NeRF that bridges the gap between the accurate lip synchronization of GAN-based methods and the accurate 3D face modeling of NeRFs. LipNeRF is conditioned on the expression space of a 3DMM, instead of the audio feature space. We experimentally demonstrate that the expression space gives a better representation for the lip shape than the audio feature space. LipNeRF shows a significant improvement in lip-sync quality over the current state-of-the-art, especially in high-definition videos of cinematic content, with challenging pose, illumination and expression variations.
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