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Neural Microfacet Fields for Inverse Rendering
by
Mai, Alexander
, Verbin, Dor
, Kuester, Falko
, Fridovich-Keil, Sara
in
Illumination
/ Materials recovery
/ Rendering
/ Synthesis
2023
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Do you wish to request the book?
Neural Microfacet Fields for Inverse Rendering
by
Mai, Alexander
, Verbin, Dor
, Kuester, Falko
, Fridovich-Keil, Sara
in
Illumination
/ Materials recovery
/ Rendering
/ Synthesis
2023
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Paper
Neural Microfacet Fields for Inverse Rendering
2023
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Overview
We present Neural Microfacet Fields, a method for recovering materials, geometry, and environment illumination from images of a scene. Our method uses a microfacet reflectance model within a volumetric setting by treating each sample along the ray as a (potentially non-opaque) surface. Using surface-based Monte Carlo rendering in a volumetric setting enables our method to perform inverse rendering efficiently by combining decades of research in surface-based light transport with recent advances in volume rendering for view synthesis. Our approach outperforms prior work in inverse rendering, capturing high fidelity geometry and high frequency illumination details; its novel view synthesis results are on par with state-of-the-art methods that do not recover illumination or materials.
Publisher
Cornell University Library, arXiv.org
Subject
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