Music2Dance: DanceNet for Music-Driven Dance Generation

Author:

Zhuang Wenlin1,Wang Congyi2,Chai Jinxiang3,Wang Yangang4,Shao Ming5,Xia Siyu4

Affiliation:

1. Southeast University and the Key Laboratory of Measurement and Controlof Complex Systems of Engineering, Ministry of Education, Nanjing, China

2. Xmov, Shanghai, China

3. Xmov, Texas A&M University, Shanghai, China

4. Southeast University, Nanjing, China

5. University of Massachusetts Dartmouth, Dartmouth, MA, USA

Abstract

Synthesize human motions from music (i.e., music to dance) is appealing and has attracted lots of research interests in recent years. It is challenging because of the requirement for realistic and complex human motions for dance, but more importantly, the synthesized motions should be consistent with the style, rhythm, and melody of the music. In this article, we propose a novel autoregressive generative model, DanceNet, to take the style, rhythm, and melody of music as the control signals to generate 3D dance motions with high realism and diversity. Due to the high long-term spatio-temporal complexity of dance, we propose the dilated convolution to improve the receptive field, and adopt the gated activation unit as well as separable convolution to enhance the fusion of motion features and control signals. To boost the performance of our proposed model, we capture several synchronized music-dance pairs by professional dancers and build a high-quality music-dance pair dataset. Experiments have demonstrated that the proposed method can achieve state-of-the-art results.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference52 articles.

1. Adobe Mixamo Dataset;https://www.mixamo.com.,2017

2. Sebastian Böck, Andreas Arzt, Florian Krebs, and Markus Schedl. 2012. Online real-time onset detection with recurrent neural networks. In Proceedings of the 15th International Conference on Digital Audio Effects (DAFx’12).

3. madmom

4. Sebastian Böck, Florian Krebs, and Gerhard Widmer. 2016. Joint beat and downbeat tracking with recurrent neural networks. In Proceedings of the 17th International Society for Music Information Retrieval Conference (ISMIR’16). 255–261.

5. Richard Bowden. 2000. Learning statistical models of human motion. In Proceedings of the IEEE Workshop on Human Modeling, Analysis, and Synthesis, Vol. 2000.

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