We introduce an approach for computing a 3D mesh from one or more views of an object by establishing dense correspondences between pixels in the views and 3D locations on a learnable parameterized surface. We propose a multi-view shape encoder that can be jointly trained with the AtlasNet surface parameterization. The shape is further refined using a novel geometric cycle-consistency loss between the learnable parameterized surface and input views. We demonstrate the efficacy of our approach on the ShapeNet-COCO dataset. </a>
@inproceedings{langlois20213d, title={3D Reconstruction By Parameterized Surface Mapping}, author={Langlois, Pierre-Alain and Fisher, Matthew and Wang, Oliver and Kim, Vladimir and Boulch, Alexandre and Marlet, Renaud and Russell, Bryan}, booktitle={2021 IEEE International Conference on Image Processing (ICIP)}, pages={3273--3277}, year={2021}, organization={IEEE} }