LumosX: Relate Any Identities with Their Attributes for Personalized Video Generation
Recent advances in diffusion models have significantly improved text-to-video generation, enabling personalized content creation with fine-grained control over both foreground and background elements. However, precise face-attribute alignment across subjects remains challenging, as existing methods lack explicit mechanisms to ensure intra-group consistency. We propose LumosX, a framework that advances both data and model design to achieve state-of-the-art performance in fine-grained, identity-consistent, and semantically aligned personalized multi-subject video generation.
π» Authors
Jiazheng Xing1,4,2,*, Fei Du2,3,*, Hangjie Yuan2,3,1,*, Pengwei Liu1,2, Hongbin Xu4, Hai Ci4, Ruigang Niu2,3, Weihua Chen2,3β , Fan Wang2, Yong Liu1β
1Zhejiang University, 2DAMO Academy, Alibaba Group, 3Hupan Lab, 4National University of Singapore
*Equal contributions Β· β Corresponding authors
Contact: jiazhengxing@zju.edu.cn, kugang.cwh@alibaba-inc.com, yongliu@iipc.zju.edu.cn
π Click to view Abstract
Recent advances in diffusion models have significantly improved text-to-video generation, enabling personalized content creation with fine-grained control over both foreground and background elements. However, precise face-attribute alignment across subjects remains challenging, as existing methods lack explicit mechanisms to ensure intra-group consistency. Addressing this gap requires both explicit modeling strategies and face-attribute-aware data resources. We therefore propose LumosX, a framework that advances both data and model design.
On the data side, a tailored collection pipeline orchestrates captions and visual cues from independent videos, while multimodal large language models (MLLMs) infer and assign subject-specific dependencies. These extracted relational priors impose a finer-grained structure that amplifies the expressive control of personalized video generation and enables the construction of a comprehensive benchmark.
On the modeling side, Relational Self-Attention and Relational Cross-Attention intertwine position-aware embeddings with refined attention dynamics to inscribe explicit subject-attribute dependencies, enforcing disciplined intra-group cohesion and amplifying the separation between distinct subject clusters. Comprehensive evaluations on our benchmark demonstrate that LumosX achieves state-of-the-art performance in fine-grained, identity-consistent, and semantically aligned personalized multi-subject video generation.
π News
[2026/1/26] Accepted by ICLR 2026 !
[2026/3/21] Code is available in Lumos-Custom / LumosX !
π Citation
If you find this work useful, please cite:
@inproceedings{xinglumosx,
title={LumosX: Relate Any Identities with Their Attributes for Personalized Video Generation},
author={Xing, Jiazheng and Du, Fei and Yuan, Hangjie and Liu, Pengwei and Xu, Hongbin and Ci, Hai and Niu, Ruigang and Chen, Weihua and Wang, Fan and Liu, Yong},
booktitle={The Fourteenth International Conference on Learning Representations}
}
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This is the official release channel for LumosX weights.
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