Back to Search Start Over

FIRe: Fast Inverse Rendering using Directional and Signed Distance Functions

Authors :
Yenamandra, Tarun
Tewari, Ayush
Yang, Nan
Bernard, Florian
Theobalt, Christian
Cremers, Daniel
Publication Year :
2022
Publisher :
arXiv, 2022.

Abstract

Neural 3D implicit representations learn priors that are useful for diverse applications, such as single- or multiple-view 3D reconstruction. A major downside of existing approaches while rendering an image is that they require evaluating the network multiple times per camera ray so that the high computational time forms a bottleneck for downstream applications. We address this problem by introducing a novel neural scene representation that we call the directional distance function (DDF). To this end, we learn a signed distance function (SDF) along with our DDF model to represent a class of shapes. Specifically, our DDF is defined on the unit sphere and predicts the distance to the surface along any given direction. Therefore, our DDF allows rendering images with just a single network evaluation per camera ray. Based on our DDF, we present a novel fast algorithm (FIRe) to reconstruct 3D shapes given a posed depth map. We evaluate our proposed method on 3D reconstruction from single-view depth images, where we empirically show that our algorithm reconstructs 3D shapes more accurately and it is more than 15 times faster (per iteration) than competing methods.<br />Comment: Project page: https://vision.in.tum.de/research/geometry/fire

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....4df59186704e0e534dae915b5d8d09a3
Full Text :
https://doi.org/10.48550/arxiv.2203.16284