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UnCommon Objects in 3D

Authors :
Liu, Xingchen
Tayal, Piyush
Wang, Jianyuan
Zarzar, Jesus
Monnier, Tom
Tertikas, Konstantinos
Duan, Jiali
Toisoul, Antoine
Zhang, Jason Y.
Neverova, Natalia
Vedaldi, Andrea
Shapovalov, Roman
Novotny, David
Publication Year :
2025

Abstract

We introduce Uncommon Objects in 3D (uCO3D), a new object-centric dataset for 3D deep learning and 3D generative AI. uCO3D is the largest publicly-available collection of high-resolution videos of objects with 3D annotations that ensures full-360$^{\circ}$ coverage. uCO3D is significantly more diverse than MVImgNet and CO3Dv2, covering more than 1,000 object categories. It is also of higher quality, due to extensive quality checks of both the collected videos and the 3D annotations. Similar to analogous datasets, uCO3D contains annotations for 3D camera poses, depth maps and sparse point clouds. In addition, each object is equipped with a caption and a 3D Gaussian Splat reconstruction. We train several large 3D models on MVImgNet, CO3Dv2, and uCO3D and obtain superior results using the latter, showing that uCO3D is better for learning applications.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.07574
Document Type :
Working Paper