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Fast 2D super resolution ISAR imaging method under low signal-to-noise ratio

机译:低信噪比下的快速二维超分辨率ISAR成像方法

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摘要

Sparse representation (SR)-based inverse synthetic aperture radar (ISAR) imaging method can achieve super-resolution image of a target. However, it is computationally expensive and sensitive to noise. To overcome these two drawbacks, the authors propose the coupled Nesterov linearised Bregman iteration algorithm based on two-dimensional (2D) real-valued dictionaries (CNLBI-TRD) for ISAR imaging. First, the ISAR echoes are taken as a 2D joint SR model in the range frequency-azimuth Doppler domain. Then the 2D complex-valued dictionaries are converted into real-valued ones through unitary transformations. The computational complexity is thus decreased by a factor of at least four. Finally, the CNLBI algorithm is proposed to reconstruct the 2D SR model directly. It combines the Nesterov's accelerated gradient method with the condition number optimisation of sensing matrices. An adaptive-adjustment strategy of the soft threshold parameter is presented. Thus the total iteration numbers can be greatly reduced. The simulation results and real data experiments verify the effectiveness of the proposed imaging algorithm.
机译:基于稀疏表示(SR)的逆合成孔径雷达(ISAR)成像方法可以实现目标的超分辨率图像。但是,它在计算上昂贵并且对噪声敏感。为了克服这两个缺点,作者提出了基于二维(2D)实值字典(CNLBI-TRD)的耦合Nesterov线性化Bregman迭代算法,用于ISAR成像。首先,ISAR回波被视为距离频率方位多普勒域中的二维联合SR模型。然后,通过complex变换将2D复数值字典转换为实值字典。因此,计算复杂度降低了至少四倍。最后,提出了CNLBI算法直接重建二维SR模型。它结合了Nesterov的加速梯度方法和感测矩阵的条件数优化。提出了软阈值参数的自适应调整策略。因此,总迭代次数可以大大减少。仿真结果和实际数据实验验证了所提成像算法的有效性。

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