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Auteurs principaux: Huang, Ziyao, Tang, Fan, Zhang, Yong, Cun, Xiaodong, Cao, Juan, Li, Jintao, Lee, Tong-Yee
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2403.16510
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author Huang, Ziyao
Tang, Fan
Zhang, Yong
Cun, Xiaodong
Cao, Juan
Li, Jintao
Lee, Tong-Yee
author_facet Huang, Ziyao
Tang, Fan
Zhang, Yong
Cun, Xiaodong
Cao, Juan
Li, Jintao
Lee, Tong-Yee
contents Despite the remarkable process of talking-head-based avatar-creating solutions, directly generating anchor-style videos with full-body motions remains challenging. In this study, we propose Make-Your-Anchor, a novel system necessitating only a one-minute video clip of an individual for training, subsequently enabling the automatic generation of anchor-style videos with precise torso and hand movements. Specifically, we finetune a proposed structure-guided diffusion model on input video to render 3D mesh conditions into human appearances. We adopt a two-stage training strategy for the diffusion model, effectively binding movements with specific appearances. To produce arbitrary long temporal video, we extend the 2D U-Net in the frame-wise diffusion model to a 3D style without additional training cost, and a simple yet effective batch-overlapped temporal denoising module is proposed to bypass the constraints on video length during inference. Finally, a novel identity-specific face enhancement module is introduced to improve the visual quality of facial regions in the output videos. Comparative experiments demonstrate the effectiveness and superiority of the system in terms of visual quality, temporal coherence, and identity preservation, outperforming SOTA diffusion/non-diffusion methods. Project page: \url{https://github.com/ICTMCG/Make-Your-Anchor}.
format Preprint
id arxiv_https___arxiv_org_abs_2403_16510
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Make-Your-Anchor: A Diffusion-based 2D Avatar Generation Framework
Huang, Ziyao
Tang, Fan
Zhang, Yong
Cun, Xiaodong
Cao, Juan
Li, Jintao
Lee, Tong-Yee
Computer Vision and Pattern Recognition
Despite the remarkable process of talking-head-based avatar-creating solutions, directly generating anchor-style videos with full-body motions remains challenging. In this study, we propose Make-Your-Anchor, a novel system necessitating only a one-minute video clip of an individual for training, subsequently enabling the automatic generation of anchor-style videos with precise torso and hand movements. Specifically, we finetune a proposed structure-guided diffusion model on input video to render 3D mesh conditions into human appearances. We adopt a two-stage training strategy for the diffusion model, effectively binding movements with specific appearances. To produce arbitrary long temporal video, we extend the 2D U-Net in the frame-wise diffusion model to a 3D style without additional training cost, and a simple yet effective batch-overlapped temporal denoising module is proposed to bypass the constraints on video length during inference. Finally, a novel identity-specific face enhancement module is introduced to improve the visual quality of facial regions in the output videos. Comparative experiments demonstrate the effectiveness and superiority of the system in terms of visual quality, temporal coherence, and identity preservation, outperforming SOTA diffusion/non-diffusion methods. Project page: \url{https://github.com/ICTMCG/Make-Your-Anchor}.
title Make-Your-Anchor: A Diffusion-based 2D Avatar Generation Framework
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.16510