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Direct-Path Interference and Noise Resistant Signal Detection and Estimation for Passive Sensing

机译:被动传感的直接路径干扰和抗噪声信号检测与估计

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摘要

Passive sensing has been employed in radar, underwater acoustics, seismology, and others. Fueled by the proliferation of wireless networks and devices, recent years have witnessed interest in a variety of emerging applications of passive sensing, e.g., using TV, cellular, or WiFi signals for home-based health monitoring, intruder detection, indoor tracking, etc. However, conventional passive signal processing techniques are sensitive to noise and interference inherent in passive sensing systems. This dissertation develops a series of new passive signal detection and estimation methods that are resistant to such impairments.;First, we consider the problem of joint delay-Doppler estimation of a moving target in passive radar that employs a non-cooperative illuminator of opportunity (IO), a reference channel (RC) to obtain a reference signal, and a surveillance channel (SC) for target monitoring. We consider a practically motivated scenario where the RC receives a noise-contaminated copy of the IO signal and the SC observation is polluted by a residual direct-path interference (DPI) that is usually neglected by prior studies. We propose an expectation-maximization (EM) based estimator and a modified cross-correlation (MCC) estimator. In addition, we derive the Cramer-Rao lower bound for the estimation problem. Second, the target detection problem in multistatic passive radar is examined. We explicitly consider the effect of the residual DPI and develop two new detectors. Another contribution is that the proposed detectors exploit the correlation of the IO waveform for passive detection. Proposed detectors are developed within generalized likelihood ratio test (GLRT) framework, which involves nonlinear estimation that is solved using EM algorithm. Last, a parametric approach is proposed by modeling the unknown signal transmitted from the IO as an auto-regressive (AR) process whose temporal correlation is jointly estimated and exploited for passive detection. The detection problem is formulated for multistatic passive radar where receivers are contaminated by non-negligible noise and DPI. The proposed solution is developed based on the GLRT principle and the EM algorithm. In addition, we extend several conventional passive detectors to provide them with an ability to handle the DPI problem. A clairvoyant matched filtering detector is derived as well assuming the knowledge of the IO waveform.
机译:被动感测已用于雷达,水下声学,地震学等领域。在无线网络和设备激增的推动下,近年来目睹了对无源感测的各种新兴应用的兴趣,例如,使用电视,蜂窝或WiFi信号进行基于家庭的健康监测,入侵者检测,室内跟踪等。然而,常规的无源信号处理技术对无源感测系统中固有的噪声和干扰敏感。本论文开发了一系列新的抗此类损伤的无源信号检测和估计方法。首先,我们考虑了使用非合作机会照明器的无源雷达中移动目标的联合时延-多普勒估计问题( IO),用于获取参考信号的参考通道(RC)和用于目标监视的监视通道(SC)。我们考虑一种实际可行的方案,其中RC接收到IO信号的噪声污染副本,而SC观测结果则被先前研究通常忽略的残余直接路径干扰(DPI)污染。我们提出了基于期望最大化(EM)的估计器和改进的互相关(MCC)估计器。此外,我们推导了估计问题的Cramer-Rao下界。其次,研究了多静态无源雷达中的目标检测问题。我们明确考虑了残留DPI的影响并开发了两个新的检测器。另一个贡献是,提出的检测器利用IO波形的相关性进行被动检测。拟议的探测器是在广义似然比测试(GLRT)框架内开发的,该框架涉及使用EM算法求解的非线性估计。最后,通过将自IO传输的未知信号建模为自回归(AR)过程,提出了一种参数化方法,该过程的时间相关性被联合估计并用于被动检测。针对多静态无源雷达提出了检测问题,其中接收机被不可忽略的噪声和DPI污染。该解决方案是基于GLRT原理和EM算法开发的。另外,我们扩展了几种常规的无源检测器,使其具有处理DPI问题的能力。假设IO波形是已知的,则导出了千里眼匹配滤波检测器。

著录项

  • 作者

    Zhang, Xin.;

  • 作者单位

    Stevens Institute of Technology.;

  • 授予单位 Stevens Institute of Technology.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:58

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