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GGPT: Geometry Grounded Point Transformer

About

Recent feed-forward networks have achieved remarkable progress in sparse-view 3D reconstruction by predicting dense point maps directly from RGB images. However, they often suffer from geometric inconsistencies and limited fine-grained accuracy due to the absence of explicit multi-view constraints. We introduce the Geometry-Grounded Point Transformer (GGPT), a framework that augments feed-forward reconstruction with reliable sparse geometric guidance. We first propose an improved Structure-from-Motion pipeline based on dense feature matching and lightweight geometric optimisation to efficiently estimate accurate camera poses and partial 3D point clouds from sparse input views. Building on this foundation, we propose a geometry-guided 3D point transformer that refines dense point maps under explicit partial-geometry supervision using an optimised guidance encoding. Extensive experiments demonstrate that our method provides a principled mechanism for integrating geometric priors with dense feed-forward predictions, producing reconstructions that are both geometrically consistent and spatially complete, recovering fine structures and filling gaps in textureless areas. Trained solely on ScanNet++ with VGGT predictions, GGPT generalises across architectures and datasets, substantially outperforming state-of-the-art feed-forward 3D reconstruction models in both in-domain and out-of-domain settings.

Yutong Chen, Yiming Wang, Xucong Zhang, Sergey Prokudin, Siyu Tang• 2026

Related benchmarks

TaskDatasetResultRank
Multi-view 3D ReconstructionScanNet++ (test)
AUC@5cm59
30
Multi-view 3D ReconstructionETH3D (test)
AUC @ 5cm50
30
Multi-view 3D ReconstructionT&T (test)
AUC @ 5cm43
30
Multi-view 3D Reconstruction4D-DRESS
AUC @ 1cm76
21
Multi-view 3D ReconstructionMV-dVRK
AUC @ 1mm67
21
Multi-view 3D Reconstruction4D-DRESS (test)
AUC @ 1cm66
10
Multi-view 3D ReconstructionMV-dVRK (test)
AUC @ 1mm50
10
Depth EstimationT&T (test)
Relative Error (Rel)2.1
4
Depth Estimation4DDress (test)
Relative Error (%)4.8
4
Depth EstimationMV-dVRK (test)
Relative Error5.9
4
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