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基于SWCoSaMP算法的稀疏信号重构 被引量:4

Sparse Signal Recovery Based on Stepwise Compressed Sampling Matching Pursuit
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摘要 压缩感知(compressed sensing,CS)稀疏信号重构本质上是在稀疏约束条件下求解欠定方程组。针对压缩感知匹配追踪(compressed sampling matching pursuit,CoSaMP)算法直接从代理信号中选取非零元素个数两倍作为支撑集,但是不存在迭代量化标准,本文提出了分步压缩感知匹配追踪(stepwise compressed sampling matchingpursuit,SWCoSaMP)算法。该算法从块矩阵的逆矩阵定义出发,采用迭代算法得到稀疏信号的支撑集,推出每次迭代支撑集所对应重构误差的L-2范数闭合表达式,从而重构稀疏信号。实验结果表明和原来CoSaMP算法相比,对于非零元素幅度服从均匀分布和高斯分布的稀疏信号,新算法具有更好的重构效果。 The compressed sensing(CS) sparse signal recovery is actually solving a system of underdetermined linear equations within the sparse nature of its solution.The compressed sampling matching pursuit(CoSaMP) algorithm directly selects support sets of twice nonzero elements number from the maximizing signal proxy without a quality criterion for every iterative time.The stepwise compressed sampling matching pursuit(SWCoSaMP) algorithm is proposed in this paper,which uses the iterative method to obtain the sparse signal support set.It acquires the sparse signal support set by the definition of the block matrix inversion so that reconstructs the sparse signal.The recovery error' s L-2 norm is also given corresponding with the support set for every iterative time.Compared with CoSaMP,simulative results show that the new algorithm has a good recovery performance for the sparse signal whose nonzero values are distributed uniform or Gaussian.
出处 《信号处理》 CSCD 北大核心 2012年第6期886-893,共8页 Journal of Signal Processing
基金 国防预研基金(9140C0103071003) 国防预研基金(9140A01060411DZ0101) 航空基金(20110181006) 博士点基金(20110203110001)
关键词 压缩感知(compressed sensing CS) 匹配追踪(matching pursuit) 支撑集 compressed sensing(CS) matching pursuit support set
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参考文献16

  • 1E Cands, J Romberg and T Tao, Robust uncertainty prin- ciples: Exact signal reconstruction from highly incomplete frequency information [ J ], IEEE Trans. IT,2006,52 ( 2 ) : 489 -509.
  • 2D.L. Donoho, Compressed sensing [ J ] , IEEE Trans. IT ,2006,52 (4) : 1289-1306.
  • 3J. Yin and T. Chen, direction-of-arrival estimation using a sparse representation of array covariance vectors [ J ], IEEE Trans. SP,2011,59(9) :4489-4493.
  • 4C. Qi, X. Wang, L. Wu, underwater acoustic channel esti- mation based on sparse recovery algorithms [ J ] , IET SP, 2011,5(8) :739-747.
  • 5袁文文,郑宝玉,岳文静.基于压缩感知技术的双向中继信道估计[J].信号处理,2012,28(1):33-38. 被引量:6
  • 6宗竹林,王健,胡剑浩,朱立东.基于压缩转发的协作MIMO雷达成像算法[J].信号处理,2011,27(4):612-618. 被引量:2
  • 7彭岁阳,卢大威,张军,沈振康,胡卫东.时域校正距离走动的CS成像算法[J].信号处理,2010,26(7):1115-1120. 被引量:7
  • 8S. Samadi, M. Cetin, M. A. Masnadi-Shirazi, sparse rep- resentation-based synthetic aperture radar imaging [ J ], IET radar sonar navig. ,2011,5 (2) :182-193.
  • 9X. Zhu and R. Bamler, tomographie SAR inversion by L1- norm regularization-the compressive sensing approach [J], IEEE Trans. GRS,2011,48(10) :3839-3846.
  • 10D. L. Donoho and X. Huo, uncertainty principle and ideal atomic decomposition [ J ], IEEE Trans. IF, 2001,47 (6) ,2845-2862.

二级参考文献39

  • 1王亮,练有品,黄晓涛,周智敏.大斜视角与大波束角SAR成像比较[J].电子学报,2006,34(9):1672-1676. 被引量:18
  • 2保铮,邢孟道,王彤.雷达成像技术[M].电子工业出版社,2006.
  • 3刘永坦.雷达成像技术[M].哈尔滨工业大学出版社,2001.
  • 4A. R. Schmidt. Secondary Range Compression for Improved Range Doppler Processing of SAR Data with High Squint [ D]. Master' s thesis, The University of British Columbia, September 1986.
  • 5G. W. Davidson, I. G. Cumming, and M. R. ITO, A chirp scaling approach for processing squint mode SAR data [ J ], IEEE Transactions on Aerospace and Electronic Systems, 1996.32 ( 1 ) : 121-133.
  • 6G. Fornaro, et al. , Role of processing geometry in SAR raw data focusing [ J ], IEEE Transactions on Aerospace and Electronic Systems, 2002, 38(2) : 441-453.
  • 7Raney R K, Runge H, Bamler R, et al. Precision SAR processing Using Chirp Scaling [ J ]. IEEE Trans. On GRS, 1994, 32(7):786-799.
  • 8Moreira A, Mittermayer J, Scheiber R. Extended chirp scaling algorithm for air and spaceborne SAR data process- ing in stripmap and scanSAR imaging modes [ J ]. IEEE Trans. On GRS, 1996, 34(5) : 1123-1139.
  • 9IanG.Cumming,FrankH.Wong.合成孔径雷达成像--算法与实现[M].洪文,胡东辉等译.电子工业出版社,2007.
  • 10Mehrdad Soumekh. Synthetic Aperture Radar signal processing with matlab Algorithms [ M ]. John wiley&Sons, Inc, 1999.

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同被引文献38

  • 1张雄伟,等.现代语音处理技术及应用[M].北京:机械丁业出版社,2009.
  • 2Donoho David L. Compressed sensing[J]. IEEE Transac- tions on Information Theory, 2006,52 (4) : 1289 - 1306.
  • 3Tsaig Y, Donoho David L. Extensions of compressed sens- ing[ J]. Signal Processing, 2006,86(3) :549-571.
  • 4Baraniuk R. A lecture on compressive sensing [ J ]. IEEE Signal Processing Magine, 2007,24 (4) : 118-121.
  • 5Figueiredo M A T, Nowak R D, Wright S J. Gradient pro- jection for sparse reconstruction: Application to compressed sensing and other inverse problems [ J ]. IEEE Journal of Selected Topics in Signal Processing, 2007, 1 (4) :586- 597.
  • 6Tropp J A, Gilbert A C. Signal recovery from random meas- urements via orthogonal matching pursuit [ J ]. IEEE Trans- actions on Information Theory, 2007,53 (12) :4655-4666.
  • 7David L D. Compressed sensing[ J]. IEEE Transac- tions on Information Theory, 2006, 52 ( 4 ): 1289-1306.
  • 8He Ran, Zheng Weishi, Hu Baogang, et al. Two-stage nonnegative sparse representation for large-scale face rec- ognition[ J~. IEEE Transaetions on Neural Networks and Learning Systems, 2013, 24( 1 ): 35-46.
  • 9Tropp J A, Gilbert A C. Signal recovery from random measurement via orthogonaI matching pursuit [ J ]. IEEE Transactions on Information Theory, 2007, 53 ( 12 ) : 4655-4666.
  • 10Needell D, Tropp J. CoSaMP: Iterative signal recovery from incomplete and inaccurate samples [ J ]. Applied and Com-putational Hm'monic Analysis, 2009,26(3): 301-321.

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