NeuTex: Neural Texture Mapping for Volumetric Neural Rendering
PubDate: Mar 2021
Teams: University of California;Adobe Research
Writers: Fanbo Xiang, Zexiang Xu, Miloš Hašan, Yannick Hold-Geoffroy, Kalyan Sunkavalli, Hao Su
PDF: NeuTex: Neural Texture Mapping for Volumetric Neural Rendering
Abstract
Recent work has demonstrated that volumetric scene representations combined with differentiable volume rendering can enable photo-realistic rendering for challenging scenes that mesh reconstruction fails on. However, these methods entangle geometry and appearance in a “black-box” volume that cannot be edited. Instead, we present an approach that explicitly disentangles geometry–represented as a continuous 3D volume–from appearance–represented as a continuous 2D texture map. We achieve this by introducing a 3D-to-2D texture mapping (or surface parameterization) network into volumetric representations. We constrain this texture mapping network using an additional 2D-to-3D inverse mapping network and a novel cycle consistency loss to make 3D surface points map to 2D texture points that map back to the original 3D points. We demonstrate that this representation can be reconstructed using only multi-view image supervision and generates high-quality rendering results. More importantly, by separating geometry and texture, we allow users to edit appearance by simply editing 2D texture maps.