论文标题
深脸修复:调查
Deep Face Restoration: A Survey
论文作者
论文摘要
面部修复(FR)旨在从低质量(LQ)输入图像恢复高质量(HQ)面孔,这是低级计算机视觉区域中特定于域特定的图像恢复问题。早期的恢复方法主要使用统计先验和退化模型,这些模型很难满足实践中现实世界应用的要求。近年来,Face Restoration在进入深度学习时代后见证了巨大的进步。但是,很少有系统地研究基于深度学习的面部恢复方法。因此,在本文中,我们对深度学习技术的最新进展进行了全面的调查。具体而言,我们首先总结了不同的问题制定并分析面部图像的特征。其次,我们讨论面部修复的挑战。关于这些挑战,我们对最近的FR方法进行了全面综述,包括先前的方法和深度学习方法。然后,我们探索了FR覆盖网络体系结构,损耗功能和基准数据集的发展技术。我们还对代表性方法进行了系统的基准评估。最后,我们讨论未来的方向,包括网络设计,指标,基准数据集,应用程序等。我们还为所有讨论的方法提供了一个开源存储库,该存储库可在https://github.com/taowangzj/awsome-face-restoration上找到。
Face Restoration (FR) aims to restore High-Quality (HQ) faces from Low-Quality (LQ) input images, which is a domain-specific image restoration problem in the low-level computer vision area. The early face restoration methods mainly use statistical priors and degradation models, which are difficult to meet the requirements of real-world applications in practice. In recent years, face restoration has witnessed great progress after stepping into the deep learning era. However, there are few works to systematically study the deep learning based face restoration methods. Thus, in this paper, we provide a comprehensive survey of recent advances in deep learning techniques for face restoration. Specifically, we first summarize different problem formulations and analyze the characteristics of face images. Second, we discuss the challenges of face restoration. With regard to these challenges, we present a comprehensive review of recent FR methods, including prior-based methods and deep-learning methods. Then, we explore developed techniques in the task of FR covering network architectures, loss functions, and benchmark datasets. We also conduct a systematic benchmark evaluation on representative methods. Finally, we discuss the future directions including network designs, metrics, benchmark datasets, applications, etc. We also provide an open source repository for all the discussed methods, which is available at https://github.com/TaoWangzj/Awesome-Face-Restoration.