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Data compression for synthetic aperture radar and resolution improvement

机译:用于合成孔径雷达的数据压缩和分辨率提高

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This paper studies co-prime sampling for two-dimensional synthetic aperture radar (SAR) imaging and proposes a new approach based on co-prime up-sampling and compressive sensing to improve the resolution of SAR images. In order to decrease the redundancy in SAR phase history, we extend the co-prime down sampling structure to the fast-time domain and introduce a random matrix to compress the data in the slow-time domain. Since the SAR image is very sparse, directly applying compressive sensing algorithm can not recover clear picture. As a result, co-prime up-sampling with gradient projection for sparse reconstruction (GPSR) algorithm is proposed in this work. Simulation results show that even after data reduction, the new approach could still acquire high resolution images. The compression ratio could be 10:1 overall.
机译:本文研究了二维合成孔径雷达(SAR)成像的互质采样,并提出了一种基于互质上采样和压缩感知的新方法,以提高SAR图像的分辨率。为了减少SAR相位历史记录中的冗余,我们将共基数下采样结构扩展到快速时域,并引入随机矩阵来压缩慢时域中的数据。由于SAR图像非常稀疏,因此直接应用压缩感测算法无法恢复清晰的图像。因此,在这项工作中提出了带有梯度投影的共基数上采样用于稀疏重建(GPSR)算法。仿真结果表明,即使减少了数据量,该新方法仍可以获取高分辨率图像。总体压缩比为10:1。

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