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Hauptverfasser: Zhang, Jinlu, Kang, Zixi, Liu, Libin, Chang, Jianlong, Tian, Qi, Gao, Feng, Wang, Yizhou
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2506.07565
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author Zhang, Jinlu
Kang, Zixi
Liu, Libin
Chang, Jianlong
Tian, Qi
Gao, Feng
Wang, Yizhou
author_facet Zhang, Jinlu
Kang, Zixi
Liu, Libin
Chang, Jianlong
Tian, Qi
Gao, Feng
Wang, Yizhou
contents Music-driven 3D dance generation offers significant creative potential, yet practical applications demand versatile and multimodal control. As the highly dynamic and complex human motion covering various styles and genres, dance generation requires satisfying diverse conditions beyond just music (e.g., spatial trajectories, keyframe gestures, or style descriptions). However, the absence of a large-scale and richly annotated dataset severely hinders progress. In this paper, we build OpenDanceSet, an extensive human dance dataset comprising over 100 hours across 14 genres and 147 subjects. Each sample has rich annotations to facilitate robust cross-modal learning: 3D motion, paired music, 2D keypoints, trajectories, and expert-annotated text descriptions. Furthermore, we propose OpenDanceNet, a unified masked modeling framework for controllable dance generation, including a disentangled auto-encoder and a multimodal joint-prediction Transformer. OpenDanceNet supports generation conditioned on music and arbitrary combinations of text, keypoints, or trajectories. Comprehensive experiments demonstrate that our work achieves high-fidelity synthesis with strong diversity and realistic physical contacts, while also offering flexible control over spatial and stylistic conditions. Project Page: https://open-dance.github.io
format Preprint
id arxiv_https___arxiv_org_abs_2506_07565
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OpenDance: Multimodal Controllable 3D Dance Generation with Large-scale Internet Data
Zhang, Jinlu
Kang, Zixi
Liu, Libin
Chang, Jianlong
Tian, Qi
Gao, Feng
Wang, Yizhou
Computer Vision and Pattern Recognition
Music-driven 3D dance generation offers significant creative potential, yet practical applications demand versatile and multimodal control. As the highly dynamic and complex human motion covering various styles and genres, dance generation requires satisfying diverse conditions beyond just music (e.g., spatial trajectories, keyframe gestures, or style descriptions). However, the absence of a large-scale and richly annotated dataset severely hinders progress. In this paper, we build OpenDanceSet, an extensive human dance dataset comprising over 100 hours across 14 genres and 147 subjects. Each sample has rich annotations to facilitate robust cross-modal learning: 3D motion, paired music, 2D keypoints, trajectories, and expert-annotated text descriptions. Furthermore, we propose OpenDanceNet, a unified masked modeling framework for controllable dance generation, including a disentangled auto-encoder and a multimodal joint-prediction Transformer. OpenDanceNet supports generation conditioned on music and arbitrary combinations of text, keypoints, or trajectories. Comprehensive experiments demonstrate that our work achieves high-fidelity synthesis with strong diversity and realistic physical contacts, while also offering flexible control over spatial and stylistic conditions. Project Page: https://open-dance.github.io
title OpenDance: Multimodal Controllable 3D Dance Generation with Large-scale Internet Data
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.07565