English

Scaling Up Audio-Synchronized Visual Animation: An Efficient Training Paradigm

Computer Vision and Pattern Recognition 2025-08-07 v1

Abstract

Recent advances in audio-synchronized visual animation enable control of video content using audios from specific classes. However, existing methods rely heavily on expensive manual curation of high-quality, class-specific training videos, posing challenges to scaling up to diverse audio-video classes in the open world. In this work, we propose an efficient two-stage training paradigm to scale up audio-synchronized visual animation using abundant but noisy videos. In stage one, we automatically curate large-scale videos for pretraining, allowing the model to learn diverse but imperfect audio-video alignments. In stage two, we finetune the model on manually curated high-quality examples, but only at a small scale, significantly reducing the required human effort. We further enhance synchronization by allowing each frame to access rich audio context via multi-feature conditioning and window attention. To efficiently train the model, we leverage pretrained text-to-video generator and audio encoders, introducing only 1.9\% additional trainable parameters to learn audio-conditioning capability without compromising the generator's prior knowledge. For evaluation, we introduce AVSync48, a benchmark with videos from 48 classes, which is 3×\times more diverse than previous benchmarks. Extensive experiments show that our method significantly reduces reliance on manual curation by over 10×\times, while generalizing to many open classes.

Keywords

Cite

@article{arxiv.2508.03955,
  title  = {Scaling Up Audio-Synchronized Visual Animation: An Efficient Training Paradigm},
  author = {Lin Zhang and Zefan Cai and Yufan Zhou and Shentong Mo and Jinhong Lin and Cheng-En Wu and Yibing Wei and Yijing Zhang and Ruiyi Zhang and Wen Xiao and Tong Sun and Junjie Hu and Pedro Morgado},
  journal= {arXiv preprint arXiv:2508.03955},
  year   = {2025}
}
R2 v1 2026-07-01T04:36:16.229Z