基于稀疏和低秩先验的雷达前视超分辨成像方法

唐军奎 刘峥 冉磊 谢荣 秦基凯

唐军奎, 刘峥, 冉磊, 等. 基于稀疏和低秩先验的雷达前视超分辨成像方法[J]. 雷达学报, 2023, 12(2): 332–342. doi: 10.12000/JR22199
引用本文: 唐军奎, 刘峥, 冉磊, 等. 基于稀疏和低秩先验的雷达前视超分辨成像方法[J]. 雷达学报, 2023, 12(2): 332–342. doi: 10.12000/JR22199
TANG Junkui, LIU Zheng, RAN Lei, et al. Radar forward-looking super-resolution imaging method based on sparse and low-rank priors[J]. Journal of Radars, 2023, 12(2): 332–342. doi: 10.12000/JR22199
Citation: TANG Junkui, LIU Zheng, RAN Lei, et al. Radar forward-looking super-resolution imaging method based on sparse and low-rank priors[J]. Journal of Radars, 2023, 12(2): 332–342. doi: 10.12000/JR22199

基于稀疏和低秩先验的雷达前视超分辨成像方法

DOI: 10.12000/JR22199
基金项目: 国家自然科学基金(62001346),CASC多传感器探测与识别技术研发中心种子基金(ZZJJ202102)
详细信息
    作者简介:

    唐军奎,博士生,主要研究方向为雷达前视成像、阵列信号处理

    刘 峥,教授,主要研究方向为雷达信号处理的理论与系统设计、雷达精确制导技术、多传感器信息融合等

    冉 磊,副教授,主要研究方向为无人机/弹载雷达成像技术、SAR图像目标检测与识别、雷达信号实时处理系统等

    谢 荣,副教授,主要研究方向为雷达信号处理的理论与系统设计、雷达精确制导技术等

    秦基凯,博士生,主要研究方向为雷达HRRP目标识别、SAR图像目标识别等

    通讯作者:

    刘峥 lz@xidian.edu.cn

    冉磊 rl@xidian.edu.cn

  • 责任主编:李悦丽 Corresponding Editor: LI Yueli
  • 中图分类号: TN95

Radar Forward-looking Super-resolution Imaging Method Based on Sparse and Low-rank Priors

Funds: The National Natural Science Foundation of China (62001346), Seed Funding Project of Multisensor Intelligent Detection and Recognition Technologies R&D Center of CASC (ZZJJ202102)
More Information
  • 摘要: 在精确制导、自主着陆、地形测绘等多种领域,雷达前视成像至关重要。传统的基于实波束扫描的前视成像方法受到实际雷达孔径约束难以获得高分辨图像。与整个成像场景相比,感兴趣目标通常只占一小部分区域,这种稀疏性使得压缩感知(CS)可以应用于高分辨率前视图像重建。然而,雷达回波中的强噪声影响了基于CS方法生成图像质量。受到最终生成图像具有低秩特性的启发,该文建立了一种联合低秩和稀疏特性的前视超分辨成像模型。为了有效地解决所提模型中的双重约束优化问题,提出了一种在交替方向乘子法(ADMM)框架下基于增广拉格朗日乘子(ALM)的前视图像重构方法。仿真和实测数据实验结果表明,所提方法能够有效提高雷达前视成像的方位分辨率,并且具有较强噪声鲁棒性。

     

  • 图  1  阵列雷达前视成像观测几何示意图

    Figure  1.  Array radar forward-looking imaging observation geometry schematic

    图  2  回波和生成的图像的特征值分布对比

    Figure  2.  Eigenvalue distribution comparison of echo and generated image

    图  3  点目标分布以及成像结果

    Figure  3.  Point target distribution and imaging results

    图  4  SNR=5 dB时仿真点目标不同方法成像结果对比

    Figure  4.  Comparison of imaging results of different methods for simulated point targets when SNR=5 dB

    图  5  仿真点目标的RMSE和Corr对比

    Figure  5.  RMSE and Corr comparison of simulation point targets

    图  6  实测数据实验场景及雷达平台

    Figure  6.  Experimental scenarios of measured data and radar platform

    图  7  实测数据成像结果

    Figure  7.  Measured data imaging results

    图  8  SNR=5 dB时实测数据不同方法成像结果对比

    Figure  8.  Comparison of imaging results of different methods for measurd data when SNR=5 dB

    图  9  实测数据的RMSE和Corr对比

    Figure  9.  RMSE and Corr comparison of measurd data

    表  1  式(14) ALM-ADMM求解流程

    Table  1.   ALM-ADMM solution flow of Eq. (14)

    输入: 字典矩阵A,观测数据${ {\boldsymbol{S} }_{ {\rm{rc} } } }$
    初始化:迭代次数$k = 1$,拉格朗日乘子矩阵${\boldsymbol{Q}}_1^1 = {\boldsymbol{Q}}_2^1 = {\boldsymbol{Q}}_3^1 = {\boldsymbol{Q}}_4^1 = { {\boldsymbol{E} }^1} = { {\boldsymbol{Y} }^1} \in {0^{N \times M} }$, 图像矩阵${ {\boldsymbol{Z} }^1} = { {\boldsymbol{J} }^1} = { {\boldsymbol{X} }^1} \in {0^{\bar N \times M} }$,正则化参数${\lambda _1},{\lambda _2} > 0$,惩罚项系数$u_1^1,u_2^1,u_3^1,u_4^1 > 0$,步长因子$\rho _1^{},\rho _2^{},\rho _3^{},\rho _4^{} > 1$。
    更新迭代过程:
    (1) 更新Z
      $\left( { { {\boldsymbol{X} }^k} + {\boldsymbol{Q}}_1^k/\mu _1^k} \right) = {U^k}{\varSigma ^k}{\left( { {V^k} } \right)^{\rm{H} } }$; ${ {\boldsymbol{Z} }^{k + 1} } = {U^k}{\rm{soft} }\left( { {\varSigma ^k},\dfrac{1}{ {\mu_1^k} } } \right){\left( { {V^k} } \right)^{\rm{H} } }$
    (2) 更新J
      ${\boldsymbol{R} }_1^k = { {\boldsymbol{X} }^k} + \dfrac{ { {\boldsymbol{Q}}_4^k} }{ {u_4^k} } - \dfrac{ { {\lambda _1} } }{ { {\boldsymbol{Q}}_4^k} }$, ${\boldsymbol{R} }_2^k = { {\boldsymbol{X} }^k} + \dfrac{ { {\boldsymbol{Q} }_4^k} }{ {\mu _4^k} } + \dfrac{ { {\lambda _1} } }{ { {\boldsymbol{Q} }_4^k} }$; ${ {\boldsymbol{J} }^{k + 1} } = \max \left( {0,{\boldsymbol{R} }_1^k} \right) + \min \left( {0,{\boldsymbol{R} }_2^k} \right)$
    (3) 更新X
      ${ {\boldsymbol{X} }^{k + 1} } = \left( { { {\boldsymbol{A} }^{\rm{T} } }{\boldsymbol{A} } + 2{\boldsymbol{I} } } \right)/{\boldsymbol{I} } \cdot \left\{ { { {\boldsymbol{A} }^{\rm{T} } }\left[ { { {\boldsymbol{S} }_{ {\rm{rc} } } } - { {\boldsymbol{E} }^k} + { {\boldsymbol{Y} }^{k + 1} } - \left( {\dfrac{ { {\boldsymbol{Q} }_1^k} }{ {\mu _1^k} } + \dfrac{ { {\boldsymbol{Q} }_2^k} }{ {\mu _2^k} } } \right)} \right] - \dfrac{ { {\boldsymbol{Q} }_3^k} }{ {\mu _3^k} } - \dfrac{ { {\boldsymbol{Q} }_4^k} }{ {\mu _4^k} } + { {\boldsymbol{Z} }^{k + 1} } + { {\boldsymbol{J} }^{k + 1} } } \right\}$
    (4) 更新E
      ${ {\boldsymbol{E} }^{k + 1} } = { {\mu _{\text{2} }^k\left( { { {\boldsymbol{S} }_{ {\rm{rc} } } } - {\boldsymbol{A} }{ {\boldsymbol{X} }^{k + 1} }{\text{ + } }\dfrac{ { {\boldsymbol{Q} }_2^k} }{ {\mu _{\text{2} }^k} } } \right)} \mathord{\left/ {\vphantom { {\mu _{\text{2} }^k\left( { {S_{rc} } - A{X^{k + 1} }{\text{ + } }\frac{ {Q_2^k} }{ {\mu _{\text{2} }^k} } } \right)} {\left( {\lambda _2^k + \mu _{\text{2} }^k} \right)} } } \right. } {\left( {\lambda _2^k + \mu _{\text{2} }^k} \right)} }$
    (5) 更新$ {{\boldsymbol{Q}}_1} $, $ {{\boldsymbol{Q}}_2} $, $ {{\boldsymbol{Q}}_3} $, $ {{\boldsymbol{Q}}_4} $:
      $\begin{aligned} & {\boldsymbol{Q} }_1^{k + 1} = {\boldsymbol{Q} }_1^k + \mu _1^k\left( { { {\boldsymbol{S} }_{ {\rm{rc} } } } - {\boldsymbol{A} }{ {\boldsymbol{X} }^{k + 1} } - { {\boldsymbol{E} }^{k + 1} } } \right),{\boldsymbol{Q} }_2^{k + 1} = {\boldsymbol{Q} }_2^k + \mu _2^k\left( { {\boldsymbol{Y} } - {\boldsymbol{A}}{ {\boldsymbol{X} }^{k + 1} } } \right) \\ & {\boldsymbol{Q} }_3^{k + 1} = {\boldsymbol{Q} }_3^k + \mu _3^k\left( { {\boldsymbol{X} } - { {\boldsymbol{Z} }^{k + 1} } } \right),{\boldsymbol{Q} }_4^{k + 1} = {\boldsymbol{Q} }_4^k + \mu _4^k\left( { {\boldsymbol{X} } - { {\boldsymbol{J} }^{k + 1} } } \right) \end{aligned}$
    (6) 更新 $ {u_1},{u_2},{u_3},{u_4} $:
      $ \mu _1^{k + 1} = {\rho _1}\mu _1^k,\mu _2^{k + 1} = {\rho _2}\mu _2^k,\mu _3^{k + 1} = {\rho _3}\mu _3^k,\mu _4^{k + 1} = {\rho _4}\mu _4^k $
    输出:图像矩阵X
    下载: 导出CSV

    表  2  仿真实验雷达参数

    Table  2.   Radar parameters for simulation experiment

    参数数值
    载频(GHz)35
    带宽(MHz)150
    脉冲重复间隔(μs)250
    平台运动速度(m/s)150
    天线长度(m)0.4
    天线阵元个数94
    工作距离(m)3000
    下载: 导出CSV

    表  3  AWR2243 雷达关键参数

    Table  3.   Key parameters of AWR2243 radar

    参数数值
    载频(GHz)78.7
    带宽(GHz)2.5
    天线长度(m)0.16
    雷达与目标距离(m)9.5
    天线阵元个数86
    下载: 导出CSV
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出版历程
  • 收稿日期:  2022-09-30
  • 修回日期:  2022-12-24
  • 网络出版日期:  2022-12-30
  • 刊出日期:  2023-04-28

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