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基于lk范数的SAR复图像域正则化方法分析及改进

陶勇 胡卫东

陶勇, 胡卫东. 基于lk范数的SAR复图像域正则化方法分析及改进[J]. 电子与信息学报, 2009, 31(11): 2569-2574. doi: 10.3724/SP.J.1146.2008.01412
引用本文: 陶勇, 胡卫东. 基于lk范数的SAR复图像域正则化方法分析及改进[J]. 电子与信息学报, 2009, 31(11): 2569-2574. doi: 10.3724/SP.J.1146.2008.01412
Tao Yong, Hu Wei-dong. Analysis and Improvement of Regularization Based on lk Norm in SAR Complex-Imagery Domain[J]. Journal of Electronics & Information Technology, 2009, 31(11): 2569-2574. doi: 10.3724/SP.J.1146.2008.01412
Citation: Tao Yong, Hu Wei-dong. Analysis and Improvement of Regularization Based on lk Norm in SAR Complex-Imagery Domain[J]. Journal of Electronics & Information Technology, 2009, 31(11): 2569-2574. doi: 10.3724/SP.J.1146.2008.01412

基于lk范数的SAR复图像域正则化方法分析及改进

doi: 10.3724/SP.J.1146.2008.01412
基金项目: 

国家863计划项目(2007AA12Z172)资助课题

Analysis and Improvement of Regularization Based on lk Norm in SAR Complex-Imagery Domain

  • 摘要: 正则化方法通过增加先验信息约束实现合成孔径雷达(SAR)图像的超分辨和噪声抑制,为目标识别提供了更高质量的图像信息。该文通过对基于lk范数的SAR复图像域正则化方法迭代过程的分析,揭示其增强分辨率的内在机理,并针对原有方法在不同强度散射点条件下分辨率提高不一致的问题,提出采用可变的正则化参数对其进行改进。仿真数据和MSTAR实测数据的实验结果证实了改进方法的有效性。
  • 王正明, 朱炬波, 等. SAR 图像提高分辨率技术[M]. 北京: 科学出版社, 2006: 131-171.Wang Z M and Zhu J B, et al.. The Technique for SAR ImageSuper-Resolution [M]. Beijing: Science Press, 2006: 131-171.[2]Cetin M and Karl W C. Feature-enhanced synthetic apertureradar image formation based on nonquadratic regularization[J].IEEE Transactions on Image Processing.2001, 10(4):623-631[3]Cetin M, Karl W C, and Castanon D A. Evaluation of aregularized SAR imaging technique based onrecognition-oriented features [C]. Proceedings of the SPIEConference on Algorithms for SAR Imagery VII, Orlando, FL,April 24-28, 2000, Vol. 4053: 40-51.[4]王岩, 梁甸农, 郭汉伟. 基于改进正则化方法的SAR 图像增强技术[J]. 电子学报, 2003, 31(9): 1307-1309.Wang Y, Liang D N, and Guo H W. SAR image enhancementusing modified regularization method [J]. Acta ElectronicaSinica, 2003, 31(9): 1307-1309.[5]汪雄良, 王正明, 赵侠, 等. 基于lk 范数正则化方法的SAR 图像超分辨[J]. 宇航学报, 2005, 26(9): 77-82.Wang X L, Wang Z M, and Zhao X, et al. SAR imagesuper-resolution based on regularization of lk norm [J].Journal of Astronautics, 2005, 26(9): 77-82.[6]赵侠, 王正明. SAR 复图像域上的噪声抑制和目标特征提取[J]. 电子学报, 2005, 33(12): 2135-2138.Zhao X and Wang Z M. The noise suppression and featureextraction in SAR complex-imagery domain [J]. ActaElectronica Sinica, 2005, 33(12): 2135-2138.[7]汪雄良, 王正明. 基于lk 范数正则化的SAR 图像目标特征增强[J]. 电子与信息学报. 2006, 28(9): 1594-1597.Wang X L and Wang Z M. Target feature enhanced of SARimage based on regularization of lk norm [J]. Journal ofElectronics & Information Technology, 2006, 28(9):1594-1597.[8]袁震宇, 王正明, 王光新, 等. SAR 图像点目标超分辨正则化方法的简化计算[J]. 中国空间科学技术, 2008, 28(1): 41-46.Yuan Z Y, Wang Z M, and Wang G X, et al.. Simplifiedcalculation of regularization of synthetic aperture radar imagepoint target supper-resolution [J]. Chinese Space Science andTechnology, 2008, 28(1): 41-46.[9]Yadin E, Olmar D, and Oron O, et al.. SAR imaging using amodern 2D spectral estimation method [C]. 2008 IEEE RadarConference, Rome, Italy, May 26-30, 2008: 368-373.[10]Suwa K and Iwamoto M. A two-dimensional bandwidthextrapolation technique for polarimetric synthetic apertureradar images [J].IEEE Transactions on Geoscience andRemote Sensing.2007, 45(1):45-54[11]Ahn J S and Bhanu B. Model-based recognition of articulatedobjects [J].Pattern Recognition Letters.2002, 23(8):1019-1029[12]Ravichandran B, Gandhe A, and Smith R, et al.. Robustautomatic target recognition using learning classifier systems[J].Information Fusion.2007, 8(3):252-265[13]Toumi A, Hoeltzener B, and Khenchaf A. Using watershedssegmentation on ISAR image for automatic targetrecognition [C]. Second IEEE International Conference onDigital Information Management, Lyon, France, October28-31, 2007: 285-290.
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出版历程
  • 收稿日期:  2008-11-03
  • 修回日期:  2009-03-23
  • 刊出日期:  2009-11-19

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