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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >A Generalized Omega-K Algorithm to Process Translationally Variant Bistatic-SAR Data Based on Two-Dimensional Stolt Mapping
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A Generalized Omega-K Algorithm to Process Translationally Variant Bistatic-SAR Data Based on Two-Dimensional Stolt Mapping

机译:基于二维Stolt映射的平移变异双站SAR数据的通用Omega-K算法

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摘要

In translationally variant (TV) bistatic synthetic aperture radar (BSAR), 2-D spatial variation is a major problem to be tackled. In this paper, a generalized Omega-K imaging algorithm to deal with this problem is proposed. The method utilizes a point target reference spectrum of the generalized Loffeld's bistatic formula (LBF) (GLBF). Without the bistatic-deformation term, GLBF is the latest development of LBF. Similar to the monostatic case, it has a much simpler form than other point target reference spectra. Based on the spatial linearization of GLBF, the Stolt mapping relationship is derived. Different from the traditional Omega-K algorithms for monostatic SAR and translationally invariant BSAR, this approach uses a 2-D Stolt frequency transformation. Through this transformation, the method can deal with the 2-D spatial variation. It can also consider the linear spatial variation of Doppler parameters, which is usually not considered in the previous publications on bistatic Omega-K algorithms. This method can handle the cases of TV-BSAR with different trajectories, different velocities, high squint angles, and large bistatic angles. In addition, a compensation method for the phase error caused by the linearization is discussed. Numerical simulations and experimental data processing verify the effectiveness of the proposed method.
机译:在平移型(TV)双基地合成孔径雷达(BSAR)中,二维空间变化是要解决的主要问题。本文提出了一种通用的Omega-K成像算法来解决这个问题。该方法利用了广义洛夫菲尔德双基地公式(LBF)(GLBF)的点目标参考光谱。没有双静态变形项,GLBF是LBF的最新发展。与单静态情况类似,它的形式比其他点目标参考光谱要简单得多。基于GLBF的空间线性化,推导了Stolt映射关系。与用于单静态SAR和平移不变BSAR的传统Omega-K算法不同,此方法使用了二维Stolt频率变换。通过这种变换,该方法可以处理二维空间变化。它还可以考虑多普勒参数的线性空间变化,这在以前有关双基地Omega-K算法的出版物中通常没有考虑。这种方法可以处理轨迹,速度,斜视角度大和双基地角度大的TV-BSAR情况。此外,讨论了由线性化引起的相位误差的补偿方法。数值模拟和实验数据处理验证了该方法的有效性。

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