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Main Authors: Chen, Liyang, Wu, Zhiyong, Li, Runnan, Bao, Weihong, Ling, Jun, Tan, Xu, Zhao, Sheng
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2308.04830
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author Chen, Liyang
Wu, Zhiyong
Li, Runnan
Bao, Weihong
Ling, Jun
Tan, Xu
Zhao, Sheng
author_facet Chen, Liyang
Wu, Zhiyong
Li, Runnan
Bao, Weihong
Ling, Jun
Tan, Xu
Zhao, Sheng
contents Current talking face generation methods mainly focus on speech-lip synchronization. However, insufficient investigation on the facial talking style leads to a lifeless and monotonous avatar. Most previous works fail to imitate expressive styles from arbitrary video prompts and ensure the authenticity of the generated video. This paper proposes an unsupervised variational style transfer model (VAST) to vivify the neutral photo-realistic avatars. Our model consists of three key components: a style encoder that extracts facial style representations from the given video prompts; a hybrid facial expression decoder to model accurate speech-related movements; a variational style enhancer that enhances the style space to be highly expressive and meaningful. With our essential designs on facial style learning, our model is able to flexibly capture the expressive facial style from arbitrary video prompts and transfer it onto a personalized image renderer in a zero-shot manner. Experimental results demonstrate the proposed approach contributes to a more vivid talking avatar with higher authenticity and richer expressiveness.
format Preprint
id arxiv_https___arxiv_org_abs_2308_04830
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle VAST: Vivify Your Talking Avatar via Zero-Shot Expressive Facial Style Transfer
Chen, Liyang
Wu, Zhiyong
Li, Runnan
Bao, Weihong
Ling, Jun
Tan, Xu
Zhao, Sheng
Computer Vision and Pattern Recognition
Current talking face generation methods mainly focus on speech-lip synchronization. However, insufficient investigation on the facial talking style leads to a lifeless and monotonous avatar. Most previous works fail to imitate expressive styles from arbitrary video prompts and ensure the authenticity of the generated video. This paper proposes an unsupervised variational style transfer model (VAST) to vivify the neutral photo-realistic avatars. Our model consists of three key components: a style encoder that extracts facial style representations from the given video prompts; a hybrid facial expression decoder to model accurate speech-related movements; a variational style enhancer that enhances the style space to be highly expressive and meaningful. With our essential designs on facial style learning, our model is able to flexibly capture the expressive facial style from arbitrary video prompts and transfer it onto a personalized image renderer in a zero-shot manner. Experimental results demonstrate the proposed approach contributes to a more vivid talking avatar with higher authenticity and richer expressiveness.
title VAST: Vivify Your Talking Avatar via Zero-Shot Expressive Facial Style Transfer
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2308.04830