Image Super-resolution Based on Alternate K-Singular Value Decomposition

被引:0
|
作者
Xu J. [1 ]
Chang Z. [2 ]
Zhang X. [1 ]
机构
[1] School of Telecommunication and Information Engineering, Xi'an University of Posts and Telecommunications, Xi'an
[2] School of Information Engineering, Chang'an University, Xi'an
来源
Chang, Zhiguo (chang_zg@126.com) | 1600年 / Editorial Board of Medical Journal of Wuhan University卷 / 42期
基金
中国国家自然科学基金;
关键词
Dictionary training; Singular value decomposition; Sparse representation; Super-resolution;
D O I
10.13203/j.whugis20150095
中图分类号
学科分类号
摘要
The coupled dictionary training algorithm in super-resolution based on sparse representation are directly related to the detail recovery capability of the algorithm, but the existing algorithm makes the dictionaries lack texture structure information. This paper proposes an alternate K-singular value decomposition dictionary training algorithm. This algorithm is composed of a training stage and a testing stage. In the training stage, the best low rank approximations of low and high frequency patches are used for the updating of the dictionaries. This method makes the sparse representations of low and high frequency patches becomes more and more similar with the increasing of the iteration number. In the testing stages, the high frequency details can be estimated by multiplying the sparse representations generated with low frequency patches with the high frequency dictionary. The experimental results demonstrate that the proposed algorithm can provide clearer resultant images. Compared with many existing methods, the average peak signal to noise ratio exceeds about 0.3dB and structure similarity exceeds about 0.1. © 2017, Research and Development Office of Wuhan University. All right reserved.
引用
收藏
页码:1137 / 1143
页数:6
相关论文
共 26 条
  • [1] Wei S., Shen Z., Zhang S., Et al., Moon Rover Image Super-Resolution Reconstruction Algorithm, Geomatics and Information Science of Wuhan University, 38, 4, pp. 436-439, (2013)
  • [2] Chen X., Qi C., Low-Rank Neighbor Embedding for Single Image Super-Resolution, IEEE Signal Processing Letters, 21, 1, pp. 79-82, (2014)
  • [3] Zeyde R., Protter M., Elad M., On Single Image Scale-Up Using Sparse-Representation, Lecture Notes in Computer Science, 6920, 1, pp. 711-730, (2010)
  • [4] Peleg T., Elad M., A Statistical Prediction Model Based on Sparse Representations for Single Image Super-Resolution, IEEE Transactions on Image Processing, 23, 6, pp. 2569-2582, (2014)
  • [5] Purkait P., Pal N.R., Chanda B., A Fuzzy-Rule-Based Approach for Single Frame Super Resolution, IEEE Transactions on Image Processing, 23, 5, pp. 2277-2290, (2014)
  • [6] Yang J., Wang Z., Lin Z., Et al., Coupled Dictionary Training for Image Super-resolution, IEEE Transactions on Image Processing, 21, 8, pp. 3467-3478, (2012)
  • [7] Wang S., Zhang L., Liang Y., Et al., Semi-Coupled-Dictionary Learning with Applications to Image Super-resolution and Photo-Sketch Synthesis, IEEE Conference on Computer Vision and Pattern Recognition, (2012)
  • [8] He L., Qi H., Zaretzki R., Beta Process Joint Dictionary Learning for Coupled Feature Spaces with Application to Single Image Super-resolution, IEEE Conference on Computer Vision and Pattern Recognition, (2013)
  • [9] Timofte R., De Smet V., Van Gool L., A+: Adjusted Anchored Neighborhood Regression for Fast Super-Resolution, Asian Conference of Computer Vision, (2014)
  • [10] Glasner D., Bagon S., Irani M., Super-resolution from a Single Image, IEEE International Conference on Computer Vision, (2009)