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Resolution Enhancement for Inversed Synthetic Aperture Radar Imaging Under Low SNR via Improved Compressive Sensing

机译:通过改进的压缩感测在低SNR下提高反向合成孔径雷达成像的分辨率

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摘要

The theory of compressed sampling (CS) indicates that exact recovery of an unknown sparse signal can be achieved from very limited samples. For inversed synthetic aperture radar (ISAR), the image of a target is usually constructed by strong scattering centers whose number is much smaller than that of pixels of an image plane. This sparsity of the ISAR signal intrinsically paves a way to apply CS to the reconstruction of high-resolution ISAR imagery. CS-based high-resolution ISAR imaging with limited pulses is developed, and it performs well in the case of high signal-to-noise ratios. However, strong noise and clutter are usually inevitable in radar imaging, which challenges current high-resolution imaging approaches based on parametric modeling, including the CS-based approach. In this paper, we present an improved version of CS-based high-resolution imaging to overcome strong noise and clutter by combining coherent projectors and weighting with the CS optimization for ISAR image generation. Real data are used to test the robustness of the improved CS imaging compared with other current techniques. Experimental results show that the approach is capable of precise estimation of scattering centers and effective suppression of noise.
机译:压缩采样(CS)理论表明,可以从非常有限的采样中准确恢复未知的稀疏信号。对于反向合成孔径雷达(ISAR),目标图像通常由强散射中心构成,该散射中心的数量远小于像平面像素的数量。 ISAR信号的这种稀疏性本质上为将CS应用于高分辨率ISAR图像的重建铺平了道路。开发了基于CS的有限脉冲的高分辨率ISAR成像,在高信噪比的情况下,它表现良好。但是,雷达成像通常不可避免地会产生强噪声和杂波,这挑战了当前基于参数化建模的高分辨率成像方法,包括基于CS的方法。在本文中,我们提出了一种基于CS的高分辨率成像的改进版本,通过将相干投影仪和加权与CS优化结合使用来克服ISAR图像生成,从而克服了强噪声和混乱情况。与其他当前技术相比,实际数据用于测试改进的CS成像的鲁棒性。实验结果表明,该方法能够精确估计散射中心并有效抑制噪声。

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