BRACE: The Breakdancing Competition Dataset for Dance Motion Synthesis
Davide Moltisanti, Jinyi Wu, Bo Dai, Chen Change Loy

TL;DR
The paper introduces BRACE, a challenging new dance motion dataset from breakdancing videos, to improve models' understanding of complex human poses and movements beyond simple mappings.
Contribution
BRACE is a novel dataset with complex, dynamic breakdancing sequences, created through a hybrid labeling pipeline, to advance dance motion synthesis research.
Findings
State-of-the-art models perform poorly on BRACE's complex sequences.
BRACE contains over 3 hours of densely annotated breakdancing poses.
The dataset highlights the need for models to better understand body structure.
Abstract
Generative models for audio-conditioned dance motion synthesis map music features to dance movements. Models are trained to associate motion patterns to audio patterns, usually without an explicit knowledge of the human body. This approach relies on a few assumptions: strong music-dance correlation, controlled motion data and relatively simple poses and movements. These characteristics are found in all existing datasets for dance motion synthesis, and indeed recent methods can achieve good results.We introduce a new dataset aiming to challenge these common assumptions, compiling a set of dynamic dance sequences displaying complex human poses. We focus on breakdancing which features acrobatic moves and tangled postures. We source our data from the Red Bull BC One competition videos. Estimating human keypoints from these videos is difficult due to the complexity of the dance, as well as…
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Taxonomy
TopicsHuman Motion and Animation · Music Technology and Sound Studies · Music and Audio Processing
MethodsTest
