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EDGE: Editable Dance Generation From Music

About

Dance is an important human art form, but creating new dances can be difficult and time-consuming. In this work, we introduce Editable Dance GEneration (EDGE), a state-of-the-art method for editable dance generation that is capable of creating realistic, physically-plausible dances while remaining faithful to the input music. EDGE uses a transformer-based diffusion model paired with Jukebox, a strong music feature extractor, and confers powerful editing capabilities well-suited to dance, including joint-wise conditioning, and in-betweening. We introduce a new metric for physical plausibility, and evaluate dance quality generated by our method extensively through (1) multiple quantitative metrics on physical plausibility, beat alignment, and diversity benchmarks, and more importantly, (2) a large-scale user study, demonstrating a significant improvement over previous state-of-the-art methods. Qualitative samples from our model can be found at our website.

Jonathan Tseng, Rodrigo Castellon, C. Karen Liu• 2022

Related benchmarks

TaskDatasetResultRank
Group Dance GenerationAIOZ-GDANCE 1.0 (test)
FID31.4
29
Music-driven Dance GenerationFineDance (test)
Diversity (k)8.13
25
Music-to-Dance GenerationFineDance
BAS0.2116
23
Music-to-DanceAIST++
FIDk42.16
17
Music-to-Dance SynthesisAIST++ (test)
FID (k)42.16
16
Music-to-Dance GenerationAIST++ (val and test)
FIDk23.04
14
Dance Motion GenerationAIST++
BAS0.2847
13
Dance GenerationAIST++ (test)
FID0.4988
7
Music Conditioned Dance GenerationAIST++ (test)
FIDg50.38
6
Music-to-Dance GenerationPopDanceSet
Diversity (Kernel)6.13
6
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