Fiber-level Woven Fabric Capture from a Single Photo
Zixuan Li, Pengfei Shen, Hanxiao Sun, Zibo Zhang, Yu Guo, Ligang Liu,, Ling-Qi Yan, Steve Marschner, Milos Hasan, Beibei Wang

TL;DR
This paper introduces a novel method to capture fiber-level woven fabric details from a single microscope photo using neural networks and differentiable rendering, enabling highly realistic fabric rendering.
Contribution
It presents the first differentiable microscopic-level fabric capture framework that combines neural prediction, procedural modeling, and physically-based rendering for realistic fabric visualization.
Findings
High-quality fabric re-rendering from a single image
Effective fiber geometry and appearance estimation
Supports physically-based light simulations
Abstract
Accurately rendering the appearance of fabrics is challenging, due to their complex 3D microstructures and specialized optical properties. If we model the geometry and optics of fabrics down to the fiber level, we can achieve unprecedented rendering realism, but this raises the difficulty of authoring or capturing the fiber-level assets. Existing approaches can obtain fiber-level geometry with special devices (e.g., CT) or complex hand-designed procedural pipelines (manually tweaking a set of parameters). In this paper, we propose a unified framework to capture fiber-level geometry and appearance of woven fabrics using a single low-cost microscope image. We first use a simple neural network to predict initial parameters of our geometric and appearance models. From this starting point, we further optimize the parameters of procedural fiber geometry and an approximated shading model via…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Textile materials and evaluations · Optical measurement and interference techniques
