An extended processing scheme for coherent integration and parameter estimation based on matched filtering in passive radar

Xin Guan, L. Zhong, Donghui Hu, Chibiao Ding
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引用次数: 7

Abstract

In passive radars, coherent integration is an essential method to achieve processing gain for target detection. The cross ambiguity function (CAF) and the method based on matched filtering are the most common approaches. The method based on matched filtering is an approximation to CAF and the procedure is: (1) divide the signal into snapshots; (2) perform matched filtering on each snapshot; (3) perform fast Fourier transform (FFT) across the snapshots. The matched filtering method is computationally affordable and can offer savings of an order of 1000 times in execution speed over that of CAF. However, matched filtering suffers from severe energy loss for high speed targets. In this paper we concentrate mainly on the matched filtering method and we use keystone transform to rectify range migration. Several factors affecting the performance of coherent integration are discussed based on the matched filtering method and keystone transform. Modified methods are introduced to improve the performance by analyzing the impacts of mismatching, precision of the keystone transform, and discretization. The modified discrete chirp Fourier transform (MDCFT) is adopted to rectify the Doppler expansion in a multi-target scenario. A novel velocity estimation method is proposed, and an extended processing scheme presented. Simulations show that the proposed algorithms improve the performance of matched filtering for high speed targets.
一种基于匹配滤波的无源雷达相干积分和参数估计扩展处理方案
在无源雷达中,相干积分是实现目标检测处理增益的重要手段。交叉模糊函数(CAF)和基于匹配滤波的方法是最常用的方法。基于匹配滤波的方法是一种近似于CAF的方法,其步骤是:(1)将信号分成快照;(2)对每个快照进行匹配过滤;(3)跨快照执行快速傅里叶变换(FFT)。匹配滤波方法在计算上是负担得起的,并且可以提供比CAF节省1000倍的执行速度。然而,匹配滤波对于高速目标具有严重的能量损失。本文主要研究匹配滤波方法,并利用梯形变换对距离偏移进行校正。基于匹配滤波方法和梯形变换,讨论了影响相干积分性能的几个因素。通过分析不匹配、keystone变换精度和离散化对算法性能的影响,提出了改进方法。采用改进的离散啁啾傅立叶变换(MDCFT)对多目标场景下的多普勒展开进行校正。提出了一种新的速度估计方法,并给出了一种扩展处理方案。仿真结果表明,该算法提高了高速目标匹配滤波的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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