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首页> 外文期刊>Radar, Sonar & Navigation, IET >Fast two-dimensional sparse signal gridless recovery algorithm for MIMO array SAR 3D imaging
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Fast two-dimensional sparse signal gridless recovery algorithm for MIMO array SAR 3D imaging

机译:用于MIMO阵列SAR 3D成像的快速二维稀疏信号无线恢复算法

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摘要

Multiple-input multiple-output (MIMO) array synthetic aperture radar (SAR) can be used to directly obtain the three-dimensional (3D) imagery of the illuminated scene with a single track. Due to the length limitations of synthetic aperture and antenna array, the super-resolution algorithms within the framework of 2D compressive sensing (CS) have been conceived to reconstruct the azimuth-cross-track plane image because of its spatial sparsity. Since the desired scatterers are presupposed to be distributed over a series of fixed grid points, the location accuracy of the existing 2D CS algorithms is relatively low. To overcome this problem, a fast 2D gridless recovery (GLR) algorithm for the 2D imaging signal model established in the real domain is proposed in this study. First, two different forms of 2D real-valued signal models with uniform or random sampling on the azimuth-cross-track plane are reconstructed by means of unitary transformation. Further, the real-domain based 2D sparse signal gridless reconstruction approach is derived. Finally, extensive simulation results validate that the proposed 2D real-valued GLR approach can approximately improve the computational efficiency by a factor of ten in terms of CPU time when compared with that of the 2D GLR algorithm in the complex domain.
机译:多输入多输出(MIMO)阵列合成孔径雷达(SAR)可用于直接使用单个轨道直接获得照明场景的三维(3D)图像。由于合成孔径和天线阵列的长度限制,已经构思了2D压缩感测(CS)的框架内的超分辨率算法以重建方位角交叉轨道图像,因为其空间稀疏性。由于预期的散射仪预先分布在一系列固定网格点上,因此现有2D CS算法的位置精度相对较低。为了克服这个问题,提出了在本研究中建立了在实体域中建立的2D成像信号模型的快速2D无线网络恢复(GLR)算法。首先,通过整体变换重建两种不同形式的具有均匀或随机抽样的2D实值信号模型,通过整体变换重建。此外,推导了基于真实域的2D稀疏信号无线重建方法。最后,广泛的仿真结果验证了所提出的2D实值GLR方法可以在与复杂域中的2D GLR算法相比的CPU时间方面大致提高计算效率。

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