期刊文献+

基于多组耦合字典及交替学习的图像超分辨率重建 被引量:2

Image Super-Resolution Reconstruction Based on Multi-groups of Coupled Dictionary and Alternative Learning
下载PDF
导出
摘要 本文提出多组耦合字典及其交替学习算法,实现图像超分辨率重建.在字典学习阶段将训练图像视为高分辨率图像,将它先缩小再放大得到低分辨率图像.两图像之差为残差图像.从残差图像块和低分辨率图像块特征的联合数据中学习耦合字典,得到残差图像和低分辨率图像间的映射关系.针对图像块具有不同纹理和结构以及字典学习效率的问题,提出多组耦合字典和字典交替学习算法.在重建阶段先将输入图像插值放大,视为低分辨率图像.求出低分辨率图像块对于每组耦合字典中低分辨率部分的稀疏表示误差,取表示误差最小的耦合字典中残差部分重建残差图像,与低分辨率图像融合得到高分辨率图像. A super-resolution image reconstruction method based on multi-groups of coupled dictionary and alternative learning is presented. In the dictionary learning phase, the image from a training set is viewed as high resolution (HRI). A reduced and re-enlarged version of the HRI is low resolution (LRI). The difference between HRI and LRI is the residual. The mapping between residual and LRI is obtained from the coupled dictionaries based on the joint data composed of residual patch and LRI patch features. In the reconstruction phase, an enlarged version of the input image is taken as LRI. For each LRI patch, sparse representations and corresponding errors are calculated by using low resolution components of each group of the coupled dictionary. The residual components of coupled dictionary with minimum errors is used to reconstruct the corresponding residual image patch. All reconstructed residual patches together axe used to form a residual image, which is then combined with the LRI to produce an HRI. The experimental results demonstrate a satisfied superresolution reconstruction quality.
出处 《应用科学学报》 EI CAS CSCD 北大核心 2012年第6期642-648,共7页 Journal of Applied Sciences
关键词 超分辨率 稀疏表示 多字典 交替学习 主子空间 正交高斯混合模型 super-resolution, sparse representation, multi-dictionary, alternative learning, principal subspace, orthogonal Gaussian mixture model
  • 相关文献

参考文献11

  • 1Freeman W, Jones T, Pasztor E. Example-basedsuper-resolution [J]. IEEE Computer Graphics andApplications, 2002, 22(2): 56-65.
  • 2Chang H, Yeung Y, Xiong Y. Super-resolutionthrough neighbor embedding [C]//Proceedings ofIEEE Conference on Computer Vision and PatternRecognition, 2004, 1: 275-282.
  • 3Chan T, Zhang J, Pu J. Neighbor embedding basedsuper-resolution algorithm through edge detectionand feature selection [J]. Pattern Recognition Let-ters, 2009, 30(5): 494-502.
  • 4Glasner D, Bagon S,Irani M. Super-resolutionfrom a single image [C]//Proceedings of IEEE In-ternational Conference on Computer Vision, 2009:349-356.
  • 5Yang J, Wright J, Ma Y, Huang T. Image super-resolution as sparse representation of raw imagepatches [C]//Proceedings of IEEE Conference onComputer Vision and Pattern Recognition, 2008: 1-8.
  • 6Yang J, Wright J, Huang T, Ma Y. Image super-resolution via sparse representation [J]. IEEE Trans-actions on Image Processing, 2010, 19(11): 2861-2873.
  • 7Zeyde R, Elad M, Protter M. On sin-gle image scale-up using sparse-representations[C] //Proceedings of Curves & Surfaces, Avignon-Prance, June 24-30, 2010.
  • 8Aharon M, Elad M, Bruckstein A. The K-SVD:an algorithm for designing of over-complete dictio-naries for sparse representations [J]. IEEE TVansac-tions on Signal Processing, 2006, 54(11): 4311-4322.
  • 9Engan K, Ease S. Method of optimal directions forframe design [C]//Proceedings of IEEE InternationalConference on Acoustics, Speech and Signal Process-ing, 1999, 5: 2443-2446.
  • 10Yang M, Wang C, Hu T, Wang Y. Learningcontext-aware sparse representation for single imagesuper-resolution [C] //Proceedings of IEEE Interna-tional Conference on Image Processing, 2011.

共引文献53

同被引文献37

  • 1王燕霞,张弓.一种改进的用于稀疏表示的正交匹配追踪算法[J].信息与电子工程,2012,10(5):579-583. 被引量:11
  • 2张航,罗大庸.图像盲复原算法研究现状及其展望[J].中国图象图形学报(A辑),2004,9(10):1145-1152. 被引量:53
  • 3朱江兵,许天周,黄春光.基于偏微分方程的图像盲恢复模型[J].电子学报,2006,34(5):887-891. 被引量:3
  • 4沈焕锋,李平湘,张良培.一种自适应正则MAP超分辨率重建方法[J].武汉大学学报(信息科学版),2006,31(11):949-952. 被引量:21
  • 5Abdellatif M. A regularized hybrid steepest descent methodfor variational inclusions [ J]. Numerical Functional Analy-sis and Op-timization,2012, 33(1) : 39-47.
  • 6Shan Q.,Jia J. Y.,Agarwala A.,et al. High - qualitymotion deblurring from a single image [ J]. ACM Transac-tion on Graphics, 2008, 27(3) : 1-10.
  • 7Aharon M,Elad M,Bruckstein A, et al. K-SVD: An al-gorithm for designing overcomplete dictionaries for sparserepresentation [ J]. IEEE Transactions on Signal Process-ing, 2006, 54(11) : 4311-4322.
  • 8Li Shang, Pin-gang Su,Tao Liu, et al. Denoising MMWimage using the combination method of contourlet and KSCshrinkage[ J]. Neurocomputing, 2012,83: 229-233.
  • 9Li Bei,Que Dashun. Medical images denoising basedon totalvariation algorithm [ J]. Procedia Environmental Sciences,2011, 8: 227-234.
  • 10TSAI R Y, HUANG T S. Multiframe image restoration and registration [J]. Advances in Com- puter Vision and Image Processing. 1984: 317-339.

引证文献2

二级引证文献8

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部