Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

TurboVGGT: Fast Visual Geometry Reconstruction with Adaptive Alternating Attention

About

Recent feed-forward 3D reconstruction methods, such as visual geometry transformers, have substantially advanced the traditional per-scene optimization paradigm by enabling effective multi-view reconstruction in a single forward pass. However, most existing methods struggle to achieve a balance between reconstruction quality and computational efficiency, which limits their scalability and efficiency. Although some efficient visual geometry transformers have recently emerged, they typically use the same sparsity ratio across layers and frames and lack mechanisms to adaptively learn representative tokens to capture global relationships, leading to suboptimal performance. In this work, we propose TurboVGGT, a novel approach that employs an efficient visual geometry transformer with adaptive alternating attention for fast multi-view 3D reconstruction. Specifically, TurboVGGT employs an end-to-end trainable framework with adaptive sparse global attention guided by adaptive sparsity selection to capture global relationships across frames and frame attention to aggregate local details within each frame. In the adaptive sparse global attention, TurboVGGT adaptively learns representative tokens with varying sparsity levels for global geometry modeling, considering that token importance varies across frames, attention layers operate tokens at different levels of abstraction, and global dependencies rely on structurally informative regions. Extensive experiments on multiple 3D reconstruction benchmarks demonstrate that TurboVGGT achieves fast multi-view reconstruction while maintaining competitive reconstruction quality compared with state-of-the-art methods. Project page: https://turbovggt.github.io/.

David Huang, Guile Wu, Chengjie Huang, Bingbing Liu, Dongfeng Bai• 2026

Related benchmarks

TaskDatasetResultRank
Video Depth EstimationSintel
Delta Threshold Accuracy (1.25)71.6
235
Video Depth EstimationBONN
AbsRel5.3
131
3D ReconstructionNRGBD
Accuracy Mean2.1
63
Point Cloud Reconstruction7 Scenes
Inference Time (s)2
46
Camera pose estimationRealEstate10K
AUC@3084.31
46
Point Cloud ReconstructionScanNet
Chamfer Distance40
20
Depth EstimationSintel (single)
AbsRel28.7
6
Camera pose estimation7 Scenes
RRA@30100
5
Point Cloud ReconstructionN-RGBD
Accuracy (Mean)2.5
5
Multi-view 3D Reconstruction7-Scenes dense setting
Peak Inference Memory (GB)23.47
4
Showing 10 of 13 rows

Other info

Follow for update