Multiple Regressions based Image Super-resolution

被引:0
作者
Xiaomin Yang
Wei Wu
Lu Lu
Binyu Yan
Lei Zhang
Kai Liu
机构
[1] University of Sichuan,College of Electronics and Information Engineering
[2] University of Sichuan,College of Computer Science
[3] University of Sichuan,College of Electrical and Engineering Information
来源
Multimedia Tools and Applications | 2020年 / 79卷
关键词
Super-resolution; Sparse coding; Ridge Regression;
D O I
暂无
中图分类号
学科分类号
摘要
The limitation of optical sensors set a challenge to acquire high resolution (HR) images. Previous sparse coding-based SR methods fail to reconstruct satisfied high resolution image due to three problems. First, sparse representation calculation is time consuming, which restricts its application in real-time systems. Second, sparse coding-based SR methods cannot represent diversity of patterns with one dictionary pair. Finally, it is supposed that the sparse representations of HR-LR patch pair are identical. However, the hypothesis cannot deal with all patterns. To address these problems, a multiple regressions based image super-resolution is proposed in this paper. First, to relax the hypothesis, the proposed method works on the assumption that the sparse representations of HR-LR patch pair are linear related. Secondly, training HR-LR patch pairs are departed into clusters. Then linear mappings is learned for each cluster. Finally, ridge regression is used to calculate the sparse representation. Experiments demonstrate that our method outperform some previous methods in objective and subjective evaluation. Additionally, our method is less computational complexity.
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页码:8911 / 8927
页数:16
相关论文
共 57 条
[1]  
Alfonso S(2008)Noniterative interpolayion-based super-resolution minimizing aliasing in the reconstructed image IEEE Trans Image Process 17 1817-1826
[2]  
Gonzalo P(2014)K-SVD dictionary learning using a fast OMP with applications IEEE Geosci Remote Sens Lett 11 1777-4401
[3]  
Chavez-Roman H(2010)Analysis of orthogonal matching pursuit using the restricted isometry property IEEE Trans Inf Theory 56 4395-3745
[4]  
Ponomaryov V(2006)Image denoising via sparse and redundant representations over learned dictionaries IEEE Trans Image Process 15 3736-1344
[5]  
Davenport MA(2004)Fast and robust multi-frame super resolution IEEE Trans Image Proc 13 1327-65
[6]  
Wakin MB(2002)Example-based super resolution IEEE Comput Graph Appl 22 56-239
[7]  
Elad M(1991)Improving resolution by image registration Cvgip Graph Models Image Proc 53 231-1703
[8]  
Aharon M(2015)A novel image compression method for medical images using geometrical regularity of image structure SIViP 9 1691-1027
[9]  
Farsiu S(1990)Recursive reconstruction of high resolution image from noisy undersampled multiframes IEEE Trans Acoust Speech Signal Process 38 1013-1527
[10]  
Robinson MD(2001)New edge-directed interpolation IEEE Trans Image Process 10 1521-655