English

Proteus-ID: ID-Consistent and Motion-Coherent Video Customization

Computer Vision and Pattern Recognition 2026-02-04 v2

Abstract

Video identity customization seeks to synthesize realistic, temporally coherent videos of a specific subject, given a single reference image and a text prompt. This task presents two core challenges: (1) maintaining identity consistency while aligning with the described appearance and actions, and (2) generating natural, fluid motion without unrealistic stiffness. To address these challenges, we introduce Proteus-ID, a novel diffusion-based framework for identity-consistent and motion-coherent video customization. First, we propose a Multimodal Identity Fusion (MIF) module that unifies visual and textual cues into a joint identity representation using a Q-Former, providing coherent guidance to the diffusion model and eliminating modality imbalance. Second, we present a Time-Aware Identity Injection (TAII) mechanism that dynamically modulates identity conditioning across denoising steps, improving fine-detail reconstruction. Third, we propose Adaptive Motion Learning (AML), a self-supervised strategy that reweights the training loss based on optical-flow-derived motion heatmaps, enhancing motion realism without requiring additional inputs. To support this task, we construct Proteus-Bench, a high-quality dataset comprising 200K curated clips for training and 150 individuals from diverse professions and ethnicities for evaluation. Extensive experiments demonstrate that Proteus-ID outperforms prior methods in identity preservation, text alignment, and motion quality, establishing a new benchmark for video identity customization. Codes and data are publicly available at https://grenoble-zhang.github.io/Proteus-ID/.

Keywords

Cite

@article{arxiv.2506.23729,
  title  = {Proteus-ID: ID-Consistent and Motion-Coherent Video Customization},
  author = {Guiyu Zhang and Chen Shi and Zijian Jiang and Xunzhi Xiang and Jingjing Qian and Shaoshuai Shi and Li Jiang},
  journal= {arXiv preprint arXiv:2506.23729},
  year   = {2026}
}

Comments

SIGGRAPH Asia 2025

R2 v1 2026-07-01T03:39:18.771Z