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Magic Mirror: ID-Preserved Video Generation in Video Diffusion Transformers

Authors :
Zhang, Yuechen
Liu, Yaoyang
Xia, Bin
Peng, Bohao
Yan, Zexin
Lo, Eric
Jia, Jiaya
Publication Year :
2025

Abstract

We present Magic Mirror, a framework for generating identity-preserved videos with cinematic-level quality and dynamic motion. While recent advances in video diffusion models have shown impressive capabilities in text-to-video generation, maintaining consistent identity while producing natural motion remains challenging. Previous methods either require person-specific fine-tuning or struggle to balance identity preservation with motion diversity. Built upon Video Diffusion Transformers, our method introduces three key components: (1) a dual-branch facial feature extractor that captures both identity and structural features, (2) a lightweight cross-modal adapter with Conditioned Adaptive Normalization for efficient identity integration, and (3) a two-stage training strategy combining synthetic identity pairs with video data. Extensive experiments demonstrate that Magic Mirror effectively balances identity consistency with natural motion, outperforming existing methods across multiple metrics while requiring minimal parameters added. The code and model will be made publicly available at: https://github.com/dvlab-research/MagicMirror/<br />Comment: It is best viewed in Acrobat. Project Page: https://julianjuaner.github.io/projects/MagicMirror/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.03931
Document Type :
Working Paper