Back to Search Start Over

Exploring Data-Efficient 3D Scene Understanding with Contrastive Scene Contexts

Authors :
Hou, Ji
Graham, Benjamin
Nießner, Matthias
Xie, Saining
Publication Year :
2020

Abstract

The rapid progress in 3D scene understanding has come with growing demand for data; however, collecting and annotating 3D scenes (e.g. point clouds) are notoriously hard. For example, the number of scenes (e.g. indoor rooms) that can be accessed and scanned might be limited; even given sufficient data, acquiring 3D labels (e.g. instance masks) requires intensive human labor. In this paper, we explore data-efficient learning for 3D point cloud. As a first step towards this direction, we propose Contrastive Scene Contexts, a 3D pre-training method that makes use of both point-level correspondences and spatial contexts in a scene. Our method achieves state-of-the-art results on a suite of benchmarks where training data or labels are scarce. Our study reveals that exhaustive labelling of 3D point clouds might be unnecessary; and remarkably, on ScanNet, even using 0.1% of point labels, we still achieve 89% (instance segmentation) and 96% (semantic segmentation) of the baseline performance that uses full annotations.<br />Comment: CVPR 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2012.09165
Document Type :
Working Paper