Facial Attribute Manipulation (FAM) aims to aesthetically modify a given face image to render desired attributes, which has received significant attention due to its broad practical applications ranging from digital entertainment to biometric forensics. In the last decade, with the remarkable success of Generative Adversarial Networks (GANs) in synthesizing realistic images, numerous GAN-based models have been proposed to solve FAM with various problem formulation approaches and guiding information representations. This paper presents a comprehensive survey of GAN-based FAM methods with a focus on summarizing their principal motivations and technical details. The main contents of this survey include: (i) an introduction to the research background and basic concepts related to FAM, (ii) a systematic review of GAN-based FAM methods in three main categories, and (iii) an in-depth discussion of important properties of FAM methods, open issues, and future research directions. This survey not only builds a good starting point for researchers new to this field but also serves as a reference for the vision community.
翻译:合成物属性调节(FAM)旨在从美学上修改一个特定面部图像,使其具有理想的属性,由于从数字娱乐到生物鉴别法学的广泛实用应用,这一图像受到极大关注;在过去十年里,由于Generation Aversarial Networks(GANs)在综合现实图像方面取得显著成功,提出了许多基于GAN的模型,以各种问题拟订方法和指导信息表述方法来解决FAM问题;本文件介绍了对以GAN为基础的FAM方法的全面调查,重点是概述其主要动机和技术细节;调查的主要内容包括:(一) 介绍与FAM有关的研究背景和基本概念;(二) 系统审查基于GAN的FAM方法的三个主要类别;(三) 深入讨论FAM方法的重要特性、开放问题和未来研究方向;这次调查不仅为该领域的研究人员提供了一个良好的起点,而且还为视野界提供了参考。