Adaptive Reconstruction Based on Romp Algorithm

Article Preview

Abstract:

Romp algorithm can reconstruct the signal fast and accurate as long as the signal satisfy Restricted Isometry Property. However, the number of iterations will affect the quality of the image reconstruction directly while the sparsity of the signal is unknown. A new solution will be put forward in this paper which can get the reasonable iteration times of the ROMP algorithm base on some knowledge of each iteration process, Experiments show that this solution can get good quality reconstruction for the image of different features.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 605-607)

Pages:

2111-2116

Citation:

Online since:

December 2012

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] David L. Donoho Compressed Sensing[J], IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 52, NO. 4, APRIL (2006).

Google Scholar

[2] Emmanuel J. Cande's and Michael B. Wakin An Introduction To Compressive Sampling[J], IEEE SIGNAL PROCESSING MAGAZINE.

Google Scholar

[21] MARCH (2008).

Google Scholar

[3] Zaiwen Wen, Wotao Yin, Donald Goldfarb, Andyin Zhang A FAST ALGORITHM FOR SPARSE RECONSTRUCTION BASED ON SHRINKAGE, SUBSPACE OPTIMIZATION AND CONTINUATION[J], Department of Industrial Engineering and Operations Research, Columbia University January, (2009).

DOI: 10.1137/090747695

Google Scholar

[4] Deanna Needell And Ronan Vershynin, UNIFORM UNCERTAINTY PRINCIPLE AND SIGNAL RECOVERY VIA REGULARIZED ORTHOGONAL MATCHING PURSUIT[J], Mathematics Subject Classification. 68W20, 65T50, 41A46 July 23, (2007).

DOI: 10.1007/s10208-008-9031-3

Google Scholar

[5] Deanna Needell and Roman Vershynin Signal recovery from incomplete and inaccurate measurements via ROMP[J], Dept. of Mathematics, Univ. California, Davis, CA 95616, USA.

Google Scholar

[6] Guangming Shi, Danhua Liu, Dahua Gao, Zhe Liu, Jie Lin, Liangjun Wang. Advances in Theory and Application of Compressed Sensing[J]. Actaelectronica Sinica (2009).

Google Scholar

[7] Hong Fang, Hairong Yang. Greedy Algorithms and Compressed Sensing [J]. ACTA AUTOMATICA SINICA (2011).

Google Scholar

[8] Yaxin Liu, Ruizhen Zhao, Shaohai Hu, Chunhui Jiang. Regularized Adaptive Matching Pursuit Algorithm for Signal Reconstruction Bas ed on Compressive Sensing [J]. Journal of Electronics & Information Technology (2010).

DOI: 10.3724/sp.j.1146.2009.01623

Google Scholar

[9] Yunhua Li. Precise image reconstruction based on ROMP algorithm in Compressive Sensing[J]. Journal of Computer Applications (2011).

Google Scholar