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VLM3: Vision Language Models Are Native 3D Learners

About

Vision Language Models (VLMs) enable a unified model to solve various vision tasks through prompting. They have shown promising performance in semantic understanding. However, 3D understanding still largely relies on expert vision models with complex task-specific designs. The key argument this work wants to make is that VLMs are native 3D learners. Our in-depth large scale study shows that 1) focal length unification, 2) text-based pixel reference and 3) data mixture and scaling, are all you need for effective 3D learning. Model architecture changes, large models, heavy data augmentations, and complex losses including the regression formulation, many of which form the foundation of expert vision models, are actually not necessary conditions. As a result, we propose VLM3, a scalable method with the simplest design that enables standard VLMs to master diverse 3D tasks. VLM3 not only advances the VLM depth estimation accuracy by a large margin (0.84 -> 0.9), but also enables diverse 3D tasks such as pixel correspondence, camera pose estimation and object-level 3D understanding, matching expert vision model accuracy while maintaining standard architectures and text-based training. We believe VLM3 opens up a new paradigm for simple and scalable 3D learning.

Zhipeng Cai, Zhuang Liu, Yunyang Xiong, Zechun Liu, Vikas Chandra, Yangyang Shi• 2026

Related benchmarks

TaskDatasetResultRank
Metric Depth EstimationiBIMS-1
Delta 1 Threshold Acc96
37
Metric Depth EstimationSUN RGB-D
Delta-1 Acc86.7
30
Depth EstimationDDAD
Delta1 Error81.8
26
Metric Depth EstimationETH3D
Delta-1 Accuracy81
21
Depth EstimationnuScenes
Delta 197
19
Monocular Metric Depth EstimationScanNet++
δ197.6
17
Camera pose estimationScanNet++
AUC @ 30°94.7
17
Metric Depth EstimationnuScenes
Delta 197
11
Metric Depth EstimationArgoverse 2
Delta-1 Accuracy89.6
11
Metric Depth EstimationNYU V2
Delta 1 Accuracy93.5
11
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