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基于稀疏和低秩结构的层析SAR成像方法
引用本文:赵曜,许俊聪,全相印,崔莉,张柘.基于稀疏和低秩结构的层析SAR成像方法[J].雷达学报,2022,11(1):52-61.
作者姓名:赵曜  许俊聪  全相印  崔莉  张柘
作者单位:1.广东工业大学 广州 5100062.中国运载火箭技术研究院 北京 1000763.北京市遥感信息研究所 北京 1001924.苏州空天信息研究院 苏州 2150005.苏州市空天大数据智能应用技术重点实验室 苏州 2150006.中国科学院空天信息创新研究院 北京 100190
基金项目:国家自然科学基金(61907008% 61991421% 61991420),广东省自然科学基金(2021A1515012009),中科院空天院科学与颠覆性先导基金“结构信号的自适应高效感知理论及在微波成像中的应用”
摘    要:该文提出了一种基于稀疏和低秩结构的层析SAR三维成像方法.传统基于压缩感知的层析SAR成像方法仅仅对给定方位-距离单元的高程向进行稀疏表征和重建.考虑城市和森林等区域中各自的布局分布较为类似,目标在相邻方位-距离单元的高程向分布具有较强相关性.该方法通过引入Karhunen Loeve变换来表征相邻方位-距离单元的高程...

关 键 词:三维成像  层析SAR成像  稀疏特性  低秩结构  Karhunen  Loeve变换
收稿时间:2021-12-28

Tomographic SAR Imaging Method Based on Sparse and Low-rank Structures
ZHAO Yao,XU Juncong,QUAN Xiangyin,CUI Li,ZHANG Zhe.Tomographic SAR Imaging Method Based on Sparse and Low-rank Structures[J].Journal of Radars,2022,11(1):52-61.
Authors:ZHAO Yao  XU Juncong  QUAN Xiangyin  CUI Li  ZHANG Zhe
Affiliation:1.Guangdong University of Technology, Guangzhou 510006, China2.China Academy of Launch Vehicle Technology, Beijing 100076, China3.Beijing Institute of Remote Sensing, Beijing 100192, China4.Suzhou Aerospace Information Research Institute, Suzhou 215000, China5.Key Laboratory of Intelligent Aerospace Big Data Application Technology, Suzhou 215000, China6.Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, China
Abstract:This paper proposes a three-dimensional tomographic SAR imaging method based on a combined sparse and low-rank structures. The traditional Compressed Sensing (CS) based tomographic SAR imaging methods only utilize the sparse representation and reconstruct along the elevation axis of a given azimuth-distance unit. Considering that the target distributions in cities, forests, and other cases are relatively similar, the elevation backscattering patterns of adjacent azimuth-range cells (pixels) are expected to be highly correlated. The proposed method introduces the Karhunen-Loeve transform to characterize the low-rank structures of the elevation of the target areas and constructs a tomographic SAR imaging model that combines sparse and low-rank structures. The ADMM algorithm is applied to solve the tomographic SAR imaging model, the complex original optimization problem is decomposed into several relatively simple sub-problems, and the tomographic SAR imaging results are obtained by the alternate projection of optimization variables. This method improves the reconstruction accuracy in the case of a few interferograms or channels and has better imaging performance. Simulations and real data experiments show that the reconstruction method can effectively separate the scatterers and ensure the accuracy of the reconstruction energy, maintain a good imaging performance under the condition of reducing the number of interferograms or channels, and effectively suppress the artifacts.
Keywords:Three-Dimensional (3-D) imaging  SAR tomography  Sparse  Low-rank  Karhunen Loeve transform
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