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Generative Autoregressive Networks for 3D Dancing Move Synthesis from Music

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arxiv 1911.04069 v1 pith:2OHPXL4E submitted 2019-11-11 cs.LG cs.ROeess.ASstat.ML

Generative Autoregressive Networks for 3D Dancing Move Synthesis from Music

classification cs.LG cs.ROeess.ASstat.ML
keywords musicdancedancingframeworkmoveposeproposedsequence
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper proposes a framework which is able to generate a sequence of three-dimensional human dance poses for a given music. The proposed framework consists of three components: a music feature encoder, a pose generator, and a music genre classifier. We focus on integrating these components for generating a realistic 3D human dancing move from music, which can be applied to artificial agents and humanoid robots. The trained dance pose generator, which is a generative autoregressive model, is able to synthesize a dance sequence longer than 5,000 pose frames. Experimental results of generated dance sequences from various songs show how the proposed method generates human-like dancing move to a given music. In addition, a generated 3D dance sequence is applied to a humanoid robot, showing that the proposed framework can make a robot to dance just by listening to music.

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