Computer Science ›› 2014, Vol. 41 ›› Issue (8): 13-18.doi: 10.11896/j.issn.1002-137X.2014.08.003

Previous Articles     Next Articles

Non-linear Sparse Representation Theory and its Applications

LUAN Xi-dao,WANG Wei-wei,XIE Yu-xiang,ZHANG Xin and LI Chen   

  • Online:2018-11-14 Published:2018-11-14

Abstract: The theory frame of non-linear sparse representation was proposed,based on analysis and conclusion of the limitation and problems to be solved of existing sparse representation method.The main contents include contructing the single objective non-linear sparse representation model,analyzing the solution characteristics and designing the solving algorithms to break through the linearity limitations of sparse representation theory in existence and extend its application domains;constructing the multi-objective non-linear sparse representation model and designing the solving algorithms to make up the shortage of current sparse representation theory which can only deal with single-objective and to solve the problem of processing performance uncertainty in current model;combining the objective and solving procedure of non-linear sparse representation model to study the self-adaptive solving method for the model with unknown hyper-parameters and design the solving procedure for optimal performance of the model.The applying method was discussed taking the optimal configuration problem of TT&C resources.

Key words: Nonlinear,Sparse representation,Multi-objective,Self-adaptive,Optimal performance

[1] Elad M.Sparse and Redundant Representations:From Theory to Applications in Signal and Image Processing[M].Springer,2010
[2] Gribonval R,Nielsen M.Sparse Approximations in Signal andImage Processing[J].Signal Processing,2006,86:514-416
[3] Donoho D L,Elad M,Temyakov V N.Stable Recovery of Sparse Overcomplete Representations in the Presence of Noise[J].IEEE Transactions on Information Theory,2006,52(1):6-18
[4] Wipf D,Palmer J,Rao B,et al.Performance Evaluation of Latent Variable Models with Sparse Priors[C]∥International Confe-rence on Acoustics,Speech,and Signal Processing.2007,2:453-456
[5] Donoho D L,Tsaig Y,Drori I,et al.Sparse Solution of Underdetermined Systems of Linear Equations by Stagewise Orthogonal Matching Pursuit[J].IEEE Transactions on Information Theory, 2012,8(2):1094-1121
[6] Mairal J,Bach F,Ponce J.Task-Driven Dictionary Learning[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2012,34(4):791-804
[7] Guha T,Ward R K.Learning Sparse Representations for Hu-man Action Recognition[J].IEEE Transactions on Pattern analysis and Machine Intelligence,2012,34(8):1576-1588
[8] Eldar Y C,Kutyniok G.Compressed Sensing:Theory and Applications[M].Cambridge Presss,2012
[9] 宋明顺.质量管理学[M].北京:科学出版社,2006
[10] Mallat S,Wang Z.Matching Pursuit with Time-frequency Dictionaries[J].IEEE Transactions on Signal Processing,1993,41:3397-3415
[11] Xu Zong-ben,Chang Xiang-yu,Xu Feng-min,et al.L1/2 Regularization:A Theresholding Representation Theory and a Fast Solver[J].IEEE Transactions on Neural Networks and Learning Systems,2012,23(7):1013-1027
[12] 尹忠科,王建英,邵君.基于原子库结构特性的信号稀疏分解[J].西南交通大学学报,2005,40(2):173-178
[13] 何昭水,谢胜利,傅予力.稀疏表示与病态混叠盲分离[J].中国科学E辑,2006,36(8):864-879
[14] Wang Zheng-ming.Wang Wei-wei.A Fast and Adaptive Method for SAR Superresolution Imaging Based on Point Scattering Model and Optimal Basis Selection[J].IEEE Transactions on Image Processing,2009,18(7):1471-1486
[15] 杜小勇,胡卫东,郁文贤.基于稀疏分量分析的逆合成孔径雷达成像技术[J].电子学报,2006,34(3):491-495
[16] Jung C,Jiao Li-cheng,Qi Hong-tao,et al.Image Deblocking via Spare Representation[J].Signal Processing:Image Communication,2012,27:663-677
[17] 杨荣根,任明武,杨静宇.基于稀疏表示的人脸识别方法[J].计算机科学,2010,37(9)267-269
[18] 孙玉宝,韦志辉,吴敏,等.稀疏性正则化的图像泊松去噪算法[J].电子学报,2011,39(2):285-290
[19] Aharon M,Elad M,Bruckstein A.K-SVD:An Algorithm for De-signing Overcomplete Dictionaries for Sparse Representation[J].IEEE Transactions on Signal Processing,2006,54(11):4311-4322
[20] Yaghoobi M,Daudet L,Davies M E.Parametric Dictionary Design for Sparse Coding[J].IEEE Transactions on Signal Processing,2009,57(12):4800-4810
[21] He Yan-min,Gan Tao,Chen Wu-fan,et al.Multi-stage ImageDenoising Based on Correlation Cofficient Matching and Sparse Dictionary Pruning[J].Signal Processing,2012,92:139-149
[22] Yang Jian-chao,Wright J,Huang T S,et al.Image Super-Resolution Via Sparse Representation[J].IEEE Transactions on Image Processing,2010,19(11):2861-2873
[23] 浦剑,张军平.基于字典学习和稀疏表示的超分辨率方法[J].模式识别与人工智能,2010,23(3):336-341
[24] Samadi S,Cetin M,Masnadi-Shirazi M A.Spare Representation-based Synthetic Aperture Radar Imaging[J].IET Radar Sonar Navig.,2011,5(2):182-193
[25] Adler A,Emiya V,Jafari M G,et al.Audio Inpainting[J].IEEE Transactions on Audio,Speech,and Language Processing,2012,20(3):922-932
[26] Wright J,Ma Yi,Mairal J,et al.Sparse Representation for Computer Vision and Pattern Recognition[J].Proceedings of the IEEE,2010,98(6):1031-1044
[27] Casanovas A L,Monaci G,Vandergheynst P,et al.Blind Audiovisual Source Separation Based on Sparse Redundant Representations[J].IEEE Transactions on Multimedia,2010,12(5):358-371
[28] Cho N,Kuo C-C J.Sparse Music Representation with Source-Specific Dictionaries and Its Application to Signal Separation[J].IEEE Transactions on Audio,Speech,and Language Processing,2011,19(2):337-348
[29] Wright J,Yang A Y,Ganesh A,et al.Robust Face Recognition via Sparse Representation[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2009,31(2):210-227
[30] Zhao Ming,Li Shu-tao,Kwok J.Text Detection in Images Using Sparse Representation with Discriminative Dictionaries[J]. Ima-ge and Vision computing,2010,28:1590-1599
[31] Schalck.Automating Satellite Range Scheduling[D].Ohio:Air Force Institute of Technology,1993
[32] 金光.卫星地面站测控资源调度CSP模型[J].系统工程与电子技术,2007,29(7):1117-1120
[33] 王远振,高卫斌,聂成.多星地面站系统资源配置优化研究综述[J].系统工程与电子技术,2004,24(4):437-439
[34] Marinelli F,Rossi F,Nocella S,et al.A Lagrangian Heuristic for Satellite Range Scheduling with Resource Constraints[R]. Dip.di Infomatica,Univercità L’Aquila,2005
[35] 凌晓冬.多星测控调度问题建模及算法研究[D].长沙:国防科技大学,2009

No related articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!