基于MUSIC和压缩感知的OFDM无源雷达目标检测研究

Watcharapong Ketpan, Seksan Phonsri, Rongrong Qian, M. Sellathurai
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引用次数: 3

摘要

无源雷达也被称为绿色雷达,利用可用的商业通信信号,通常用于目标跟踪和探测。最近的通信标准经常采用正交频分复用(OFDM)波形和宽带进行广播。本文重点介绍了OFDM无源雷达框架中目标检测算法的最新进展,其中OFDM无源雷达的信道估计是利用接收信号的信息,利用匹配滤波器的概念推导出来的。本文首先对MUSIC算法进行了改进,以解决二维延迟多普勒检测问题。由于目标检测问题可以用稀疏信号表示,本文采用压缩感知与二维MUSIC算法的检测能力进行比较。研究发现,以往提出的单时间样本压缩感知不能显著减少直接信号分量的泄漏。在此基础上,本文提出了基于多时间样本的压缩感知方法,即l1-SVD,用于多目标的检测。对比MUSIC和压缩感知,结果表明,11 - svd可以减少直接信号泄漏,但其对计算资源的要求仍然是一个主要问题。本文还介绍了这两种算法对近距离目标的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Target Detection in OFDM Passive Radar Using MUSIC and Compressive Sensing
The passive radar also known as Green Radar exploits the available commercial communication signals and is useful for target tracking and detection in general. Recent communications standards frequently employ Orthogonal Frequency Division Multiplexing (OFDM) waveforms and wideband for broadcasting. This paper focuses on the recent developments of the target detection algorithms in the OFDM passive radar framework where its channel estimates have been derived using the matched filter concept using the knowledge of the transmitted signals. The MUSIC algorithm, which has been modified to solve this two dimensional delay-Doppler detection problem, is first reviewed. As the target detection problem can be represented as sparse signals, this paper employs compressive sensing to compare with the detection capability of the 2-D MUSIC algorithm. It is found that the previously proposed single time sample compressive sensing cannot significantly reduce the leakage from the direct signal component. Furthermore, this paper proposes the compressive sensing method utilizing multiple time samples, namely l1-SVD, for the detection of multiple targets. In comparison between the MUSIC and compressive sensing, the results show that l1-SVD can decrease the direct signal leakage but its prerequisite of computational resources remains a major issue. This paper also presents the detection performance of these two algorithms for closely spaced targets.
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