Neural Networks2022,Vol.15211.DOI:10.1016/j.neunet.2022.04.026

Multi-level landmark-guided deep network for face super-resolution

Li, Minqi Zhang, Kaibing Li, Zheng Zhuang, Cheng Lu, Jian
Neural Networks2022,Vol.15211.DOI:10.1016/j.neunet.2022.04.026

Multi-level landmark-guided deep network for face super-resolution

Li, Minqi 1Zhang, Kaibing 1Li, Zheng 1Zhuang, Cheng 1Lu, Jian1
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作者信息

  • 1. Sch Elect & Informat,Xian Polytech Univ
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Abstract

Recent years deep learning-based methods incorporating facial prior knowledge for face super resolution (FSR) are advancing and have gained impressive performance. However, some important priors such as facial landmarks are not fully exploited in existing methods, leading to noticeable artifacts in the resultant SR face images especially under large magnification. In this paper, we propose a novel multi-level landmark-guided deep network (MLGDN) for FSR. More specifically, to fully exploit the dependencies between low and high resolution images and to reduce network parameters as well as capture more reliable feature representation, we introduce a recursive back-projection network with a particular feedback mechanism for coarse-to-fine FSR. Furthermore, we incorporate an attention fusion module in the front of backbone network to strengthen face components and a feature modulation module to refine features in the middle of backbone network. By this way, the facial landmarks extracted from face images can be fully shared by the modules in different levels, which benefit to produce more faithful facial details. Both quantitative and qualitative performance evaluations on two benchmark databases demonstrate that the proposed MLGDN can achieve more impressive SR results than other state-of-the-art competitors. Code will be available at https://github. com/zhuangcheng31/MLG_Face.git/(C) 2022 Elsevier Ltd. All rights reserved.

Key words

Facial component/Facial landmarks/Super-resolution reconstruction/Recursive feedback deep network

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出版年

2022
Neural Networks

Neural Networks

EISCI
ISSN:0893-6080
被引量7
参考文献量51
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