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Emergent Extreme-View Geometry in 3D Foundation Models

About

3D foundation models (3DFMs) have recently transformed 3D vision, enabling joint prediction of depths, poses, and point maps directly from images. Yet their ability to reason under extreme, non-overlapping views remains largely unexplored. In this work, we study their internal representations and find that 3DFMs exhibit an emergent understanding of extreme-view geometry, despite never being trained for such conditions. To further enhance these capabilities, we introduce a lightweight alignment scheme that refines their internal 3D representation by tuning only a small subset of backbone bias terms, leaving all decoder heads frozen. This targeted adaptation substantially improves relative pose estimation under extreme viewpoints without degrading per-image depth or point quality. Additionally, we contribute MegaUnScene, a new benchmark of Internet scenes unseen by existing 3DFMs, with dedicated test splits for both relative pose estimation and dense 3D reconstruction. All code and data will be released.

Yiwen Zhang, Joseph Tung, Ruojin Cai, David Fouhey, Hadar Averbuch-Elor• 2025

Related benchmarks

TaskDatasetResultRank
3D ReconstructionDTU
Accuracy Median0.748
47
3D Reconstruction7 Scenes
Accuracy Mean2
32
Dense ReconstructionETH3D (test)
Accuracy (Mean)28.5
30
Multi-View Camera Pose EstimationETH3D (test)--
9
Relative Rotation EstimationsELP
MRE9.74
7
Relative Rotation EstimationUnScenePairs
MRE11.75
7
Relative Rotation EstimationUnScenePairs (t)
MRE13.13
7
Dense ReconstructionUnSceneRecon (test)
ACC (Mean)0.716
6
Multiview Pose EstimationRealEstate10K (test)
RA3099.99
6
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