Litcius/Paper detail

ControlMat: A Controlled Generative Approach to Material Capture

Giuseppe Vecchio, R Víctor San Martín, Arthur Roullier, Adrien Kaiser, Romain Rouffet, Valentin Deschaintre, Tamy Boubekeur

2024ACM Transactions on Graphics34 citationsDOIOpen Access PDF

Abstract

Material reconstruction from a photograph is a key component of 3D content creation democratization. We propose to formulate this ill-posed problem as a controlled synthesis one, leveraging the recent progress in generative deep networks. We present ControlMat, a method which, given a single photograph with uncontrolled illumination as input, conditions a diffusion model to generate plausible, tileable, high-resolution physically-based digital materials. We carefully analyze the behavior of diffusion models for multi-channel outputs, adapt the sampling process to fuse multi-scale information and introduce rolled diffusion to enable both tileability and patched diffusion for high-resolution outputs. Our generative approach further permits exploration of a variety of materials that could correspond to the input image, mitigating the unknown lighting conditions. We show that our approach outperforms recent inference and latent-space optimization methods, and we carefully validate our diffusion process design choices. 1

Topics & Concepts

Generative grammarComputer scienceGenerative DesignGenerative modelArtificial intelligenceComputer graphics (images)EngineeringOperations managementMetric (unit)Image Processing and 3D ReconstructionComputer Graphics and Visualization TechniquesGenerative Adversarial Networks and Image Synthesis