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首页> 外文期刊>Radar, Sonar & Navigation, IET >Novel compressive sensing-based Dechirp-Keystone algorithm for synthetic aperture radar imaging of moving target
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Novel compressive sensing-based Dechirp-Keystone algorithm for synthetic aperture radar imaging of moving target

机译:基于压缩感知的新型Dechirp-Keystone算法用于运动目标合成孔径雷达成像

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摘要

The authors propose a novel compressive sensing (CS)-based Dechirp-Keystone algorithm (DKA) for synthetic aperture radar (SAR) moving target imaging, which is called the CS-DKA. The DKA can focus on moving targets in range-Doppler domain efficiently through only keystone transform (KT), complex multiplication and Fourier transform (FT)/inverse Fourier transform (IFT) operations. It has been shown that the non-interpolation implementation of KT can be expressed by an orthonormal basis, and it is known that the complex multiplication and FT/IFT are linear and invertible; therefore, the Dechirp-Keystone operator (DKO) is also linear and invertible. In the proposed algorithm, the authors take the inverse of DKO (IDKO) rather than the exact SAR echo model to construct the representation basis in the CS frame owing to its high implementation efficiency. After that, a random transmitting/receiving scheme is considered, to implement the down-sampling operation, and then reconstruct the moving target image by solving a regularisation problem. Both simulated and real SAR data are processed to show that the CS-DKA with down-sampled data can focus the target as well as the conventional DKA does with full data, and at the same time can achieve much lower sidelobes.
机译:作者提出了一种基于压缩感知(CS)的Dechirp-Keystone算法(DKA),用于合成孔径雷达(SAR)运动目标成像,称为CS-DKA。通过仅进行梯形失真校正(KT),复数乘法和傅立叶变换(FT)/傅立叶逆变换(IFT)操作,DKA可以有效地专注于在距离多普勒域中移动目标。已经证明,KT的非插值实现可以用正交标准表示,并且众所周知,复数乘法和FT / IFT是线性且可逆的。因此,Dechirp-Keystone运算符(DKO)也是线性和可逆的。在该算法中,由于实现效率高,因此采用DKO的逆模型(IDKO)而不是精确的SAR回波模型来构造CS框架中的表示基础。此后,考虑使用随机发送/接收方案来执行下采样操作,然后通过解决正则化问题来重构运动目标图像。对模拟和实际SAR数据进行处理,结果表明,具有下采样数据的CS-DKA可以像常规DKA一样对目标进行聚焦,同时可以获得较低的旁瓣。

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