arXiv Open Access 2025

How Animals Dance (When You're Not Looking)

Xiaojuan Wang Aleksander Holynski Brian Curless Ira Kemelmacher Steve Seitz
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Abstrak

We present a framework for generating music-synchronized, choreography aware animal dance videos. Our framework introduces choreography patterns -- structured sequences of motion beats that define the long-range structure of a dance -- as a novel high-level control signal for dance video generation. These patterns can be automatically estimated from human dance videos. Starting from a few keyframes representing distinct animal poses, generated via text-to-image prompting or GPT-4o, we formulate dance synthesis as a graph optimization problem that seeks the optimal keyframe structure to satisfy a specified choreography pattern of beats. We also introduce an approach for mirrored pose image generation, essential for capturing symmetry in dance. In-between frames are synthesized using an video diffusion model. With as few as six input keyframes, our method can produce up to 30 seconds dance videos across a wide range of animals and music tracks.

Topik & Kata Kunci

Penulis (5)

X

Xiaojuan Wang

A

Aleksander Holynski

B

Brian Curless

I

Ira Kemelmacher

S

Steve Seitz

Format Sitasi

Wang, X., Holynski, A., Curless, B., Kemelmacher, I., Seitz, S. (2025). How Animals Dance (When You're Not Looking). https://arxiv.org/abs/2505.23738

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Tahun Terbit
2025
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en
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arXiv
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Open Access ✓