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Main Authors: Shi, Sheng, Cao, Xuyang, Zhao, Jun, Wang, Guoxin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.13268
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author Shi, Sheng
Cao, Xuyang
Zhao, Jun
Wang, Guoxin
author_facet Shi, Sheng
Cao, Xuyang
Zhao, Jun
Wang, Guoxin
contents In audio-driven video generation, creating Mandarin videos presents significant challenges. Collecting comprehensive Mandarin datasets is difficult, and the complex lip movements in Mandarin further complicate model training compared to English. In this study, we collected 29 hours of Mandarin speech video from JD Health International Inc. employees, resulting in the jdh-Hallo dataset. This dataset includes a diverse range of ages and speaking styles, encompassing both conversational and specialized medical topics. To adapt the JoyHallo model for Mandarin, we employed the Chinese wav2vec2 model for audio feature embedding. A semi-decoupled structure is proposed to capture inter-feature relationships among lip, expression, and pose features. This integration not only improves information utilization efficiency but also accelerates inference speed by 14.3%. Notably, JoyHallo maintains its strong ability to generate English videos, demonstrating excellent cross-language generation capabilities. The code and models are available at https://jdh-algo.github.io/JoyHallo.
format Preprint
id arxiv_https___arxiv_org_abs_2409_13268
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle JoyHallo: Digital human model for Mandarin
Shi, Sheng
Cao, Xuyang
Zhao, Jun
Wang, Guoxin
Computer Vision and Pattern Recognition
In audio-driven video generation, creating Mandarin videos presents significant challenges. Collecting comprehensive Mandarin datasets is difficult, and the complex lip movements in Mandarin further complicate model training compared to English. In this study, we collected 29 hours of Mandarin speech video from JD Health International Inc. employees, resulting in the jdh-Hallo dataset. This dataset includes a diverse range of ages and speaking styles, encompassing both conversational and specialized medical topics. To adapt the JoyHallo model for Mandarin, we employed the Chinese wav2vec2 model for audio feature embedding. A semi-decoupled structure is proposed to capture inter-feature relationships among lip, expression, and pose features. This integration not only improves information utilization efficiency but also accelerates inference speed by 14.3%. Notably, JoyHallo maintains its strong ability to generate English videos, demonstrating excellent cross-language generation capabilities. The code and models are available at https://jdh-algo.github.io/JoyHallo.
title JoyHallo: Digital human model for Mandarin
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.13268