Back to Search Start Over

Pri3D: Can 3D Priors Help 2D Representation Learning?

Authors :
Hou, Ji
Xie, Saining
Graham, Benjamin
Dai, Angela
Nießner, Matthias
Publication Year :
2021

Abstract

Recent advances in 3D perception have shown impressive progress in understanding geometric structures of 3Dshapes and even scenes. Inspired by these advances in geometric understanding, we aim to imbue image-based perception with representations learned under geometric constraints. We introduce an approach to learn view-invariant,geometry-aware representations for network pre-training, based on multi-view RGB-D data, that can then be effectively transferred to downstream 2D tasks. We propose to employ contrastive learning under both multi-view im-age constraints and image-geometry constraints to encode3D priors into learned 2D representations. This results not only in improvement over 2D-only representation learning on the image-based tasks of semantic segmentation, instance segmentation, and object detection on real-world in-door datasets, but moreover, provides significant improvement in the low data regime. We show a significant improvement of 6.0% on semantic segmentation on full data as well as 11.9% on 20% data against baselines on ScanNet.<br />Comment: ICCV 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2104.11225
Document Type :
Working Paper