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JDSR-GAN: Constructing an Efficient Joint Learning Network for Masked Face Super-Resolution

Guangwei Gao, Lei Tang, Fei Wu, Huimin Lu, Jian Yang

2023IEEE Transactions on Multimedia25 citationsDOIOpen Access PDF

Abstract

With the growing importance of preventing the COVID-19 virus in cyber-manufacturing security, face images obtained in most video surveillance scenarios are usually low resolution together with mask occlusion. However, most of the previous face super-resolution solutions can not efficiently handle both tasks in one model. In this work, we consider both tasks simultaneously and construct an efficient joint learning network, called JDSR-GAN, for masked face super-resolution tasks. Given a low-quality face image with mask as input, the role of the generator composed of a denoising module and super-resolution module is to acquire a high-quality high-resolution face image. The discriminator utilizes some carefully designed loss functions to ensure the quality of the recovered face images. Moreover, we incorporate the identity information and attention mechanism into our network for feasible correlated feature expression and informative feature learning. By jointly performing denoising and face super-resolution, the two tasks can complement each other and attain promising performance. Extensive qualitative and quantitative results show the superiority of our proposed JDSR-GAN over some competitive methods.

Topics & Concepts

Computer scienceJoint (building)Face (sociological concept)Artificial intelligenceComputer networkSocial scienceArchitectural engineeringEngineeringSociologyAdvanced Image Processing TechniquesFace recognition and analysisGenerative Adversarial Networks and Image Synthesis
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