论文标题

使用多尺度特征关系学习的联合面部完成和超分辨率

Joint Face Completion and Super-resolution using Multi-scale Feature Relation Learning

论文作者

Liu, Zhilei, Wu, Yunpeng, Li, Le, Zhang, Cuicui, Wu, Baoyuan

论文摘要

先前对面部修复的研究通常集中于修复特定类型的低质量面部图像,例如低分辨率(LR)或遮挡的面部图像。但是,在现实世界中,上述图像退化的形式通常并存。因此,重要的是设计一个可以同时修复LR遮挡图像的模型。本文提出了一个多尺度特征图生成对抗网络(MFG-GAN),以实现图像的面部恢复,在该图像中既有降解模式并存,也可以用一种类型的退化来维修图像。基于GAN,MFG-GAN集成了图形卷积,并具有金字塔网络,以将闭塞的低分辨率面部图像恢复为非封闭式高分辨率的高分辨率面部图像。 MFG-GAN使用一组自定义损失来确保生成高质量的图像。此外,我们以端到端格式设计了网络。公共域Celeba和Helen数据库的实验结果表明,所提出的方法在执行面部超分辨率(最高4倍或8倍)方面优于最先进的方法,并同时完成面部完成。跨数据库测试还表明,所提出的方法具有良好的普遍性。

Previous research on face restoration often focused on repairing a specific type of low-quality facial images such as low-resolution (LR) or occluded facial images. However, in the real world, both the above-mentioned forms of image degradation often coexist. Therefore, it is important to design a model that can repair LR occluded images simultaneously. This paper proposes a multi-scale feature graph generative adversarial network (MFG-GAN) to implement the face restoration of images in which both degradation modes coexist, and also to repair images with a single type of degradation. Based on the GAN, the MFG-GAN integrates the graph convolution and feature pyramid network to restore occluded low-resolution face images to non-occluded high-resolution face images. The MFG-GAN uses a set of customized losses to ensure that high-quality images are generated. In addition, we designed the network in an end-to-end format. Experimental results on the public-domain CelebA and Helen databases show that the proposed approach outperforms state-of-the-art methods in performing face super-resolution (up to 4x or 8x) and face completion simultaneously. Cross-database testing also revealed that the proposed approach has good generalizability.

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