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Multimodal Dance Generation Networks Based on Audio-Visual Analysis

Author

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  • Lijuan Duan

    (Beijing University of Technology, China)

  • Xiao Xu

    (Beijing University of Technology, China)

  • Qing En

    (Beijing University of Technology, China)

Abstract

3D human dance generation from music is an interesting and challenging task in which the aim is to estimate 3D pose from visual and audio information. Existing methods only use skeleton information to complete this task, which may cause jittering results. In addition, due to lack of appropriate evaluation metrics for this task, it is difficult to evaluate the quality of the generated results. In this paper, the authors explore multi-modality dance generation networks through constructing the correspondence between the visual and the audio cues. Specifically, they propose a 2D prediction module to predict future frames by fusing visual and audio features. Moreover, they propose a 3D conversion module, which is able to generate the 3D skeleton from the 2D skeleton. In addition, some new human dance generation evaluation metrics are proposed to evaluate the quality of the generated results. Experimental results indicate that the proposed modules can meet the requirements of authenticity and diversity.

Suggested Citation

  • Lijuan Duan & Xiao Xu & Qing En, 2021. "Multimodal Dance Generation Networks Based on Audio-Visual Analysis," International Journal of Multimedia Data Engineering and Management (IJMDEM), IGI Global, vol. 12(1), pages 17-32, January.
  • Handle: RePEc:igg:jmdem0:v:12:y:2021:i:1:p:17-32
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