CVAIGROct 27, 2024

Lodge++: High-quality and Long Dance Generation with Vivid Choreography Patterns

Tencent
arXiv:2410.20389v125 citationsh-index: 31
Originality Incremental advance
AI Analysis

This addresses the challenge of creating realistic and diverse dance animations for applications in entertainment and simulation, representing an incremental improvement with hybrid techniques.

The paper tackles the problem of generating high-quality, long dance sequences with vivid choreography patterns from music and genre inputs, achieving rapid generation of ultra-long dances suitable for various genres with well-organized global patterns and high-quality local motion.

We propose Lodge++, a choreography framework to generate high-quality, ultra-long, and vivid dances given the music and desired genre. To handle the challenges in computational efficiency, the learning of complex and vivid global choreography patterns, and the physical quality of local dance movements, Lodge++ adopts a two-stage strategy to produce dances from coarse to fine. In the first stage, a global choreography network is designed to generate coarse-grained dance primitives that capture complex global choreography patterns. In the second stage, guided by these dance primitives, a primitive-based dance diffusion model is proposed to further generate high-quality, long-sequence dances in parallel, faithfully adhering to the complex choreography patterns. Additionally, to improve the physical plausibility, Lodge++ employs a penetration guidance module to resolve character self-penetration, a foot refinement module to optimize foot-ground contact, and a multi-genre discriminator to maintain genre consistency throughout the dance. Lodge++ is validated by extensive experiments, which show that our method can rapidly generate ultra-long dances suitable for various dance genres, ensuring well-organized global choreography patterns and high-quality local motion.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes