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Poster

Uni4D: Unifying Large Vision Models for 4D Modeling from a Single Video

David Yifan Yao · Albert J. Zhai · Shenlong Wang


Abstract:

This paper presents a unified approach to understanding dynamic scenes from casual videos. Large pretrained vision models, such as vision-language, video depth prediction, motion tracking, and segmentation models, offer promising capabilities. However, training a single model for comprehensive 4D understanding remains challenging. We introduce Uni4D, a multi-stage optimization framework that harnesses multiple pretrained models to advance dynamic 3D modeling, including static/dynamic reconstruction, camera pose estimation, and dense 3D motion tracking. Our results show state-of-the-art performance in dynamic 4D modeling with superior visual quality. Notably, Uni4D requires no retraining or fine-tuning, highlighting the effectiveness of repurposing large visual models for 4D understanding.

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