Microstructure synthesis using style-based generative adversarial networks
Daria Fokina, Ekaterina Muravleva, George Ovchinnikov, Ivan Oseledets
Abstract
This work considers the usage of StyleGAN architecture for the task of microstructure synthesis. The task is the following: Given number of samples of structure we try to generate similar samples at the same time preserving its properties. Since the considered architecture is not able to produce samples of sizes larger than the training images, we propose to use image quilting to merge fixed-sized samples. One of the key features of the considered architecture is that it uses multiple image resolutions. We also investigate the necessity of such an approach.
Topics & Concepts
Merge (version control)Computer scienceArchitectureGenerative grammarTask (project management)TemplateArtificial intelligenceKey (lock)Image (mathematics)Computer visionInformation retrievalEngineeringProgramming languageGeographySystems engineeringComputer securityArchaeologyGenerative Adversarial Networks and Image SynthesisImage Processing and 3D ReconstructionComputer Graphics and Visualization Techniques