Multichannel LEO SAR Imaging with GEO SAR Illuminator

Junjie Wu, Hongyang An, Zhichao Sun, Jianyu Yang
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Abstract

Low-earth-orbit (LEO) synthetic aperture radar (SAR) can achieve advanced remote sensing applications benefiting from the large beam coverage and long duration time of interested area provided by a geosynchronous (GEO) SAR illuminator. In this paper, an imaging method for GEO-LEO SAR is proposed. After analyzing the sampling characteristics of GEO-LEO SAR, it is found that only 12.5 % sampling data can be acquired in azimuth direction. To handle the serious sub-Nyquist sampling problem and achieve good focusing results, an imaging method combined with multi-receiving technique and compressed sensing is proposed. The multi-receiving imaging model is firstly obtained based on the inverse process of a nonlinear chirp scaling imaging method. Then, the imaging problem of GEO-LEO SAR is converted to an L1 regularization problem. Finally, an effective recovery method named complex approximate message passing is applied to obtain the final nonambiguous image. The simulation results show that the proposed method can suppress 8 times Doppler ambiguity and obtain the well focused image with 3 receiving channels.
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多通道LEO SAR成像与GEO SAR光源
低地球轨道合成孔径雷达(SAR)利用地球同步(GEO)合成孔径雷达(SAR)照射器提供的大波束覆盖范围和对目标区域的长持续时间,可以实现先进的遥感应用。本文提出了一种GEO-LEO SAR成像方法。分析了GEO-LEO SAR的采样特性,发现在方位角方向上只能获得12.5%的采样数据。为了解决严重的次奈奎斯特采样问题并获得良好的聚焦效果,提出了一种多接收技术和压缩感知相结合的成像方法。首先基于非线性啁啾尺度成像方法的逆过程,得到了多接收成像模型。然后,将GEO-LEO SAR的成像问题转化为L1正则化问题。最后,采用一种有效的复近似消息传递恢复方法,得到最终的无二义图像。仿真结果表明,该方法可以抑制8倍多普勒模糊,在3个接收通道下获得聚焦良好的图像。
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