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Get Free AccessWe present SAM 3D, a generative model for visually grounded 3D object reconstruction, predicting geometry, texture, and layout from a single image. SAM 3D excels in natural images, where occlusion and scene clutter are common and visual recognition cues from context play a larger role. We achieve this with a human- and model-in-the-loop pipeline for annotating object shape, texture, and pose, providing visually grounded 3D reconstruction data at unprecedented scale. We learn from this data in a modern, multi-stage training framework that combines synthetic pretraining with real-world alignment, breaking the 3D "data barrier". We obtain significant gains over recent work, with at least a 5:1 win rate in human preference tests on real-world objects and scenes. We will release our code and model weights, an online demo, and a new challenging benchmark for in-the-wild 3D object reconstruction.
SAM D Team, Fu-Jen Chu, Pierre Gleize, Kevin J Liang, Alexander F. Sax, Hao Tang, Thibaut Hardin, Ziqi Ma, Bowen Song, Xiaodong Wang, Jianing Yang, Bowen Zhang, Piotr Dollár, Matt Feiszli, Jitendra Malik (2025). SAM 3D: 3Dfy Anything in Images. , DOI: https://doi.org/10.48550/arxiv.2511.16624.
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Type
Preprint
Year
2025
Authors
15
Datasets
0
Total Files
0
DOI
https://doi.org/10.48550/arxiv.2511.16624
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