detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2410.10696

Tema
Computer Science - Computer Vision... Computer Science - Graphics
Autor
Guan, Jiazhi Yang, Quanwei Wang, Kaisiyuan Zhou, Hang He, Shengyi Xu, Zhiliang Feng, Haocheng Ding, Errui Wang, Jingdong Xie, Hongtao Zhao, Youjian Liu, Ziwei
Categoría

Computer Science

Año

2024

fecha de cotización

16/10/2024

Palabras clave
propose computer diffusion speaking
Métrico

Resumen

Recently, 2D speaking avatars have increasingly participated in everyday scenarios due to the fast development of facial animation techniques.

However, most existing works neglect the explicit control of human bodies.

In this paper, we propose to drive not only the faces but also the torso and gesture movements of a speaking figure.

Inspired by recent advances in diffusion models, we propose the Motion-Enhanced Textural-Aware ModeLing for SpeaKing Avatar Reenactment (TALK-Act) framework, which enables high-fidelity avatar reenactment from only short footage of monocular video.

Our key idea is to enhance the textural awareness with explicit motion guidance in diffusion modeling.

Specifically, we carefully construct 2D and 3D structural information as intermediate guidance.

While recent diffusion models adopt a side network for control information injection, they fail to synthesize temporally stable results even with person-specific fine-tuning.

We propose a Motion-Enhanced Textural Alignment module to enhance the bond between driving and target signals.

Moreover, we build a Memory-based Hand-Recovering module to help with the difficulties in hand-shape preserving.

After pre-training, our model can achieve high-fidelity 2D avatar reenactment with only 30 seconds of person-specific data.

Extensive experiments demonstrate the effectiveness and superiority of our proposed framework.

Resources can be found at https://guanjz20.github.io/projects/TALK-Act.

;Comment: Accepted to SIGGRAPH Asia 2024 (conference track).

Project page: https://guanjz20.github.io/projects/TALK-Act

Guan, Jiazhi,Yang, Quanwei,Wang, Kaisiyuan,Zhou, Hang,He, Shengyi,Xu, Zhiliang,Feng, Haocheng,Ding, Errui,Wang, Jingdong,Xie, Hongtao,Zhao, Youjian,Liu, Ziwei, 2024, TALK-Act: Enhance Textural-Awareness for 2D Speaking Avatar Reenactment with Diffusion Model

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