Residual shuffle attention network for image super-resolution

被引:0
作者
Xuanyi Li
Zhuhong Shao
Bicao Li
Yuanyuan Shang
Jiasong Wu
Yuping Duan
机构
[1] Capital Normal University,College of Information Engineering
[2] Zhongyuan University of Technology,School of Electronic and Information Engineering
[3] Southeast University,School of Computer Science and Technology
[4] Anhui Medical University,School of Biomedical Engineering
来源
Machine Vision and Applications | 2023年 / 34卷
关键词
Residual shuffle attention; Image super-resolution; Information distillation mechanism; Lightweight; Skip connection;
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学科分类号
摘要
The image super-resolution reconstruction methods based on deep learning achieve satisfactory visual quality; however, the majority are difficult to be directly deployed to mobile or embedded devices due to the model complexity. This paper introduces a lightweight residual shuffle attention network for image super-resolution task. Among them, a residual shuffle attention block (RSAB) that fully integrates the information distillation mechanism is designed to extract deep features, which consists of multiple enhanced residual blocks (MERB) and shuffle attention. The MERB is capable of boosting the feature representation, and the shuffle attention can capture critical information extracted by grouping features. Furthermore, the RSAB utilizes multiple skip connection to build the module structure. Extensive experimental results have demonstrated that the network model proposed in this paper outperforms state-of-the-art methods on several benchmarks with acceptable complexity.
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[1]  
Nan F(2022)Feature super-resolution based facial expression recognition for multi-scale low-resolution images Knowl.-Based Syst. 236 507-520
[2]  
Jing W(2022)Remote sensing image super-resolution and object detection: Benchmark and state of the art Expert Syst. Appl. 197 887-896
[3]  
Tian F(2022)4D computed tomography super-resolution reconstruction based on tensor product and nuclear norm optimization Pattern Recogn. 121 196-206
[4]  
Zhang J(2001)A genetic algorithm approach to image sequence interpolation Signal Process. Image Commun. 16 257-273
[5]  
Chao K(2008)Image interpolation by adaptive 2D autoregressive modeling and soft-decision estimation IEEE Trans. Image Process. 17 3365-3387
[6]  
Hong Z(2016)A self-learning image super-resolution method via sparse representation and non-local similarity Neurocomputing 184 295-307
[7]  
Zheng Q(2015)Dual-sparsity regularized sparse representation for single image super-resolution Inf. Sci. 298 47-59
[8]  
Wang Y(2021)Deep learning for image super-resolution: a survey IEEE Trans. Pattern Anal. Mach. Intell. 43 230-260
[9]  
Bashir SMA(2016)Image super-resolution using deep convolutional networks IEEE Trans. Pattern Anal. Mach. Intell. 38 372-382
[10]  
Khan M(2021)Image super-resolution via channel attention and spatial graph convolutional network Pattern Recogn. 112 1443-1453