Compact model representation for 3D reconstruction
Abstract
3D reconstruction from 2D images is a central problem in computer vision. Recent works have been focusing on reconstruction directly from a single image. It is well known however that only one image cannot provide enough information for such a reconstruction. A prior knowledge that has been entertained are 3D CAD models due to its online ubiquity. A fundamental question is how to compactly represent millions of CAD models while allowing generalization to new unseen objects with fine-scaled geometry. We introduce an approach to compactly represent a 3D mesh. Our method first selects a 3D model from a graph structure by using a novel free-form deformation FFD 3D-2D registration, and then the selected 3D model is refined to best fit the image silhouette. We perform a comprehensive quantitative and qualitative analysis that demonstrates impressive dense and realistic 3D reconstruction from single images.
BibTeX
@conference{Pontes-2017-121031,author = {J. K. Pontes and C. Kong and A. Eriksson and C. Fookes and S. Sridharan and S. Lucey},
title = {Compact model representation for 3D reconstruction},
booktitle = {Proceedings of International Conference on 3D Vision (3DV '17)},
year = {2017},
month = {October},
pages = {88 - 96},
}