Our goal with this survey is to provide an overview of the state of the art deep learning technologies for face generation and editing. We will cover popular latest architectures and discuss key ideas that make them work, such as inversion, latent representation, loss functions, training procedures, editing methods, and cross domain style transfer. We particularly focus on GAN-based architectures that have culminated in the StyleGAN approaches, which allow generation of high-quality face images and offer rich interfaces for controllable semantics editing and preserving photo quality. 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.
翻译:我们的调查目标是概述用于面部生成和编辑的先进深层次学习技术的现状,我们将涵盖流行的最新结构,讨论使其发挥作用的关键思想,如倒置、潜在代表性、损失功能、培训程序、编辑方法和跨域风格传输等,我们特别侧重于以GAN为基础的结构,这些结构最终形成了StyleGAN方法,从而能够生成高质量的面部图像,并为可控的语义编辑和维护照片质量提供了丰富的界面。我们的目标是为具有深层学习领域基本知识并正在寻找无障碍介绍和概览的读者提供一个进入现场的切入点。