Single-image super-resolution via joint statistic models-guided deep auto-encoder network

被引:0
作者
Rong Chen
Yanyun Qu
Cuihua Li
Kun Zeng
Yuan Xie
Ce Li
机构
[1] Xiamen University,School of Information Science and Engineering
[2] Xiamen University,College of Electronic Science and Technology
[3] Chinese Academy of Sciences,Research Center of Precision Sensing and Control, Institute of Automation
[4] Xizang Minzu University,College of Information Engineering
[5] Lanzhou University of Technology,New Energy School
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Non-local similarity; Split Bergman iteration; Steering kernel regression; Single-image super-resolution;
D O I
暂无
中图分类号
学科分类号
摘要
Recent researches on super-resolution (SR) with deep learning networks have achieved amazing results. However, most of the existing studies neglect the internal distinctiveness of an image and the output of most methods tends to be of blurring, smoothness and implausibility. In this paper, we proposed a unified model which combines the deep model with the image restoration model for single-image SR. This model can not only reconstruct the SR image, but also keep the distinct fine structures for the low-resolution image. Two statistic priors are used to guide the updating of the output of the deep neural network: One is the non-local similarity and the other is the local smoothness. The former is modeled as the non-local total variation regularization, and the latter as the steering kernel regression total variation regularization. For this unified model, a new optimization function is formulated under a regularization framework. To optimize the total variation problem, a novel algorithm based on split Bregman iteration is developed with the theoretical proof of convergence. The experimental results demonstrate that the proposed unified model improves the peak signal-to-noise ratio of the deep SR model. Quantitative and qualitative results on four benchmark datasets show that the proposed model achieves better performance than the deep SR model without regularization terms.
引用
收藏
页码:4885 / 4896
页数:11
相关论文
共 50 条
[1]  
Dong C(2016)Image super-resolution using deep convolutional networks IEEE Trans Pattern Anal Mach Intell 38 295-307
[2]  
Loy CC(2013)Sparse representation based image interpolation with nonlocal autoregressive modeling IEEE Trans Image Process 22 1382-1394
[3]  
He K(2002)Example-based super-resolution IEEE Comput Graph Appl 22 56-65
[4]  
Tang X(2009)The split Bregman method for l1-regularized problems SIAM J Imaging Sci 2 323-343
[5]  
Dong W(2010)Single-image super-resolution using sparse regression and natural image prior IEEE Trans Pattern Anal Mach Intell 32 1127-1133
[6]  
Zhang L(2015)Learning local Gaussian process regression for image super-resolution Neurocomputing 154 284-295
[7]  
Lukac R(2007)Image superresolution using support vector regression IEEE Trans Image Process 16 1596-1610
[8]  
Shi G(2007)Kernel regression for image processing and reconstruction IEEE Trans Image Process 16 349-366
[9]  
Freeman WT(2016)Non-local auto-encoder with collaborative stabilization for image restoration IEEE Trans Image Process 25 2117-2129
[10]  
Jones TR(2012)Coupled dictionary training for image super-resolution IEEE Trans Image Process 21 3467-3478