2024
DOI: 10.1609/aaai.v38i1.27783
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Explore 3D Dance Generation via Reward Model from Automatically-Ranked Demonstrations

Zilin Wang,
Haolin Zhuang,
Lu Li
et al.

Abstract: This paper presents an Exploratory 3D Dance generation framework, E3D2, designed to address the exploration capability deficiency in existing music-conditioned 3D dance generation models. Current models often generate monotonous and simplistic dance sequences that misalign with human preferences because they lack exploration capabilities.The E3D2 framework involves a reward model trained from automatically-ranked dance demonstrations, which then guides the reinforcement learning process. This approach encourag… Show more

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