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首页> 外文期刊>Aerospace and Electronic Systems, IEEE Transactions on >Sparsity-based autofocus for undersampled synthetic aperture radar
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Sparsity-based autofocus for undersampled synthetic aperture radar

机译:基于稀疏度的自动聚焦的欠采样合成孔径雷达

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Motivated by the field of compressed sensing and sparse recovery, nonlinear algorithms have been proposed for the reconstruction of synthetic-aperture-radar images when the phase history is undersampled. These algorithms assume exact knowledge of the system acquisition model. In this paper we investigate the effects of acquisition-model phase errors when the phase history is undersampled. We show that the standard methods of autofocus, which are used as a postprocessing step on the reconstructed image, are typically not suitable. Instead of applying autofocus in postprocessing, we propose an algorithm that corrects phase errors during the image reconstruction. The performance of the algorithm is investigated quantitatively and qualitatively through numerical simulations on two practical scenarios where the phase histories contain phase errors and are undersampled.
机译:受压缩感测和稀疏恢复领域的推动,提出了一种非线性算法,用于在相位历史记录欠采样时重建合成孔径雷达图像。这些算法假定您对系统采集模型有确切的了解。在本文中,我们研究了相位历史欠采样时采集模型相位误差的影响。我们表明,自动对焦的标准方法通常不适合用作在重建图像上进行后处理的步骤。代替在后处理中应用自动聚焦,我们提出了一种在图像重建过程中校正相位误差的算法。在两个实际情况下,通过数值模拟定量和定性地研究了算法的性能,在这些实际情况下,相位历史包含相位误差并且采样不足。

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