Deep scene-scale material estimation from multi-view indoor captures - Inria - Institut national de recherche en sciences et technologies du numérique Accéder directement au contenu
Article Dans Une Revue Computers & Graphics: X Année : 2022

Deep scene-scale material estimation from multi-view indoor captures

Résumé

The movie and video game industries have adopted photogrammetry as a way to create digital 3D assets from multiple photographs of a real-world scene. But photogrammetry algorithms typically output an RGB texture atlas of the scene that only serves as visual guidance for skilled artists to create material maps suitable for physically-based rendering. We present a learning-based approach that automatically produces digital assets ready for physically-based rendering, by estimating approximate material maps from multi-view captures of indoor scenes that are used with retopologized geometry. We base our approach on a material estimation Convolutional Neural Network (CNN) that we execute on each input image. We leverage the view-dependent visual cues provided by the multiple observations of the scene by gathering, for each pixel of a given image, the color of the corresponding point in other images. This image-space CNN provides us with an ensemble of predictions, which we merge in texture space as the last step of our approach. Our results demonstrate that the recovered assets can be directly used for physically-based rendering and editing of real indoor scenes from any viewpoint and novel lighting. Our method generates approximate material maps in a fraction of time compared to the closest previous solutions.
Fichier principal
Vignette du fichier
deep_materials_cag_author_v1.pdf (25.56 Mo) Télécharger le fichier
Origine : Fichiers produits par l'(les) auteur(s)

Dates et versions

hal-03812554 , version 1 (12-10-2022)

Identifiants

Citer

Siddhant Prakash, Gilles Rainer, Adrien Bousseau, George Drettakis. Deep scene-scale material estimation from multi-view indoor captures. Computers & Graphics: X, 2022, ⟨10.1016/j.cag.2022.09.010⟩. ⟨hal-03812554⟩
24 Consultations
61 Téléchargements

Altmetric

Partager

Gmail Facebook X LinkedIn More