Papers
arxiv:2505.24521

UniGeo: Taming Video Diffusion for Unified Consistent Geometry Estimation

Published on May 30
· Submitted by huanngzh on Jun 2
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Abstract

Video generation models leveraging diffusion priors achieve superior global geometric attribute estimation and reconstructions, benefiting from inter-frame consistency and joint training on shared attributes.

AI-generated summary

Recently, methods leveraging diffusion model priors to assist monocular geometric estimation (e.g., depth and normal) have gained significant attention due to their strong generalization ability. However, most existing works focus on estimating geometric properties within the camera coordinate system of individual video frames, neglecting the inherent ability of diffusion models to determine inter-frame correspondence. In this work, we demonstrate that, through appropriate design and fine-tuning, the intrinsic consistency of video generation models can be effectively harnessed for consistent geometric estimation. Specifically, we 1) select geometric attributes in the global coordinate system that share the same correspondence with video frames as the prediction targets, 2) introduce a novel and efficient conditioning method by reusing positional encodings, and 3) enhance performance through joint training on multiple geometric attributes that share the same correspondence. Our results achieve superior performance in predicting global geometric attributes in videos and can be directly applied to reconstruction tasks. Even when trained solely on static video data, our approach exhibits the potential to generalize to dynamic video scenes.

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Paper submitter

UniGeo utilizes video diffusion models to jointly estimate geometric properties—such as surface normals and coordinatesfrom either multi-view images or video sequences.

Project page: https://sunyangtian.github.io/UniGeo-web/
Code: https://github.com/SunYangtian/UniGeo

Also, a unified framework for geometry estimation and evaluation has been released in the repo, which provides a convenient interface for various dataset and various methods. It help support a fair comparison with 3r series (Dust3r, etc.) by aligning the output and evaluation scripts.

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