Scalable Group Choreography via Variational Phase Manifold Learning
- URL: http://arxiv.org/abs/2407.18839v2
- Date: Wed, 31 Jul 2024 08:43:34 GMT
- Title: Scalable Group Choreography via Variational Phase Manifold Learning
- Authors: Nhat Le, Khoa Do, Xuan Bui, Tuong Do, Erman Tjiputra, Quang D. Tran, Anh Nguyen,
- Abstract summary: We propose a phase-based variational generative model for group dance generation on learning a generative manifold.
Our method achieves high-fidelity group dance motion and enables the generation with an unlimited number of dancers.
- Score: 8.504657927912076
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Generating group dance motion from the music is a challenging task with several industrial applications. Although several methods have been proposed to tackle this problem, most of them prioritize optimizing the fidelity in dancing movement, constrained by predetermined dancer counts in datasets. This limitation impedes adaptability to real-world applications. Our study addresses the scalability problem in group choreography while preserving naturalness and synchronization. In particular, we propose a phase-based variational generative model for group dance generation on learning a generative manifold. Our method achieves high-fidelity group dance motion and enables the generation with an unlimited number of dancers while consuming only a minimal and constant amount of memory. The intensive experiments on two public datasets show that our proposed method outperforms recent state-of-the-art approaches by a large margin and is scalable to a great number of dancers beyond the training data.
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