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Scal3R: Scalable Test-Time Training for Large-Scale 3D Reconstruction

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This paper addresses the task of large-scale 3D scene reconstruction from long video sequences. Recent feed-forward reconstruction models have shown promising results by directly regressing 3D geometry from RGB images without explicit 3D priors or geometric constraints. However, these methods often struggle to maintain reconstruction accuracy and consistency over long sequences due to limited memory capacity and the inability to effectively capture global contextual cues. In contrast, humans can naturally exploit the global understanding of the scene to inform local perception. Motivated by this, we propose a novel neural global context representation that efficiently compresses and retains long-range scene information, enabling the model to leverage extensive contextual cues for enhanced reconstruction accuracy and consistency. The context representation is realized through a set of lightweight neural sub-networks that are rapidly adapted during test time via self-supervised objectives, which substantially increases memory capacity without incurring significant computational overhead. The experiments on multiple large-scale benchmarks, including the KITTI Odometry~\cite{Geiger2012CVPR} and Oxford Spires~\cite{tao2025spires} datasets, demonstrate the effectiveness of our approach in handling ultra-large scenes, achieving leading pose accuracy and state-of-the-art 3D reconstruction accuracy while maintaining efficiency. Code is available at https://zju3dv.github.io/scal3r.

Tao Xie, Peishan Yang, Yudong Jin, Yingfeng Cai, Wei Yin, Weiqiang Ren, Qian Zhang, Wei Hua, Sida Peng, Xiaoyang Guo, Xiaowei Zhou• 2026

Related benchmarks

TaskDatasetResultRank
3D Geometry Estimation and ReconstructionSpatialBench Single Frame
AbsRel0.227
42
3D Geometry Estimation and ReconstructionSpatialBench Average across settings
Absolute Relative Error18.3
42
3D Geometry Estimation and ReconstructionSpatialBench Sparse
AbsRel0.114
42
3D Geometry Estimation and ReconstructionSpatialBench Medium
AbsRel0.147
42
3D ReconstructionETH3D
F1 Score91
35
Pose EstimationScanNet++--
32
3D Geometry Estimation and ReconstructionSpatialBench Dense
AbsRel0.244
24
3D ReconstructionOxford Spires
Chamfer Distance (CD)0.96
22
Pose EstimationTUM-RGBD
ATE0.07
21
Camera Pose EvaluationVirtual KITTI 2
RRE0.41
13
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