Learn2Talk:3D 会说话的人脸向 2D 会说话的人脸学习。

Yixiang Zhuang, Baoping Cheng, Yao Cheng, Yuntao Jin, Renshuai Liu, Chengyang Li, Xuan Cheng, Jing Liao, Juncong Lin
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引用次数: 0

摘要

语音驱动的面部动画技术一般分为两大类:三维和二维会说话的脸。近年来,这两种技术都得到了相当多的研究关注。然而,据我们所知,三维会说话的人脸的研究进展还不如二维会说话的人脸,尤其是在唇部同步和感知嘴部动作方面。唇部同步要求嘴部动作和语音音频之间的同步无懈可击。从感知嘴部动作得出的语音感知应与驱动音频相似。为了弥补这两个子领域之间的差距,我们提出了 Learn2Talk,这是一个学习框架,通过整合二维人脸识别领域的两个关键见解来增强三维人脸识别网络。首先,我们从音视频同步网络中汲取灵感,开发了一个三维同步唇语专家模型,用于追求音频和三维面部动作之间的唇语同步。其次,我们利用从二维说话表情方法中精心挑选的教师模型来指导音频到三维动作回归网络的训练,从而提高三维顶点运动的准确性。大量实验证明,我们提出的框架在唇语同步、顶点准确性和感知运动方面都优于最先进的方法。最后,我们展示了我们的框架的两个应用:视听语音识别和基于语音驱动的三维高斯拼接头像动画。本文的项目页面是:https://lkjkjoiuiu.github.io/Learn2Talk/。
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Learn2Talk: 3D Talking Face Learns from 2D Talking Face.

The speech-driven facial animation technology is generally categorized into two main types: 3D and 2D talking face. Both of these have garnered considerable research attention in recent years. However, to our knowledge, the research into 3D talking face has not progressed as deeply as that of 2D talking face, particularly in terms of lip-sync and perceptual mouth movements. The lip-sync necessitates an impeccable synchronization between mouth motion and speech audio. The speech perception derived from the perceptual mouth movements should resemble that of the driving audio. To mind the gap between the two sub-fields, we propose Learn2Talk, a learning framework that enhances 3D talking face network by integrating two key insights from the field of 2D talking face. Firstly, drawing inspiration from the audio-video sync network, we develop a 3D sync-lip expert model for the pursuit of lip-sync between audio and 3D facial motions. Secondly, we utilize a teacher model, carefully chosen from among 2D talking face methods, to guide the training of the audio-to-3D motions regression network, thereby increasing the accuracy of 3D vertex movements. Extensive experiments demonstrate the superiority of our proposed framework over state-of-the-art methods in terms of lip-sync, vertex accuracy and perceptual movements. Finally, we showcase two applications of our framework: audio-visual speech recognition and speech-driven 3D Gaussian Splatting-based avatar animation. The project page of this paper is: https://lkjkjoiuiu.github.io/Learn2Talk/.

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