Melnik Andrew, Miasayedzenkau Maksim, Makaravets Dzianis, Pirshtuk Dzianis, Akbulut Eren, Holzmann Dennis, Renusch Tarek, Reichert Gustav, Ritter Helge
IEEE Trans Pattern Anal Mach Intell. 2024 May;46(5):3557-3576. doi: 10.1109/TPAMI.2024.3350004. Epub 2024 Apr 3.
Our goal with this survey is to provide an overview of the state of the art deep learning methods for face generation and editing using StyleGAN. The survey covers the evolution of StyleGAN, from PGGAN to StyleGAN3, and explores relevant topics such as suitable metrics for training, different latent representations, GAN inversion to latent spaces of StyleGAN, face image editing, cross-domain face stylization, face restoration, and even Deepfake applications. We aim to provide an entry point into the field for readers that have basic knowledge about the field of deep learning and are looking for an accessible introduction and overview.
我们进行这项调查的目的是概述使用StyleGAN进行人脸生成和编辑的深度学习方法的现状。该调查涵盖了StyleGAN从PGGAN到StyleGAN3的发展历程,并探讨了相关主题,如训练的合适指标、不同的潜在表示、将GAN反演到StyleGAN的潜在空间、人脸图像编辑、跨域人脸风格化、人脸修复,甚至深度伪造应用。我们旨在为那些对深度学习领域有基础知识并寻求易于理解的介绍和概述的读者提供进入该领域的切入点。