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Detection of broadband planewaves in the presence of Gaussian noise of unknown covariance: asymptotically optimum tests using the 2-D autoregressive noise model

机译:在存在未知协方差的高斯噪声的情况下检测宽带平面波:使用二维自回归噪声模型的渐近最优检验

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This paper addresses the problem of detecting a broadband planewave in noise of unknown spatial and temporal covariance at a linear array of sensors. Results of asymptotic detection theory are applied to derive detectors that approach optimal performance for large data records. A parametric approach is used to model the statistics of the data. A 2-D autoregressive (2DAR) model is chosen to model the noise process. Two broadband planewave signal models are considered. Both models represent the signal as a sum of monochromatic planewaves. In the Gaussian model, the amplitudes are assumed to be Gaussian with a single variance parameter, whereas in the deterministic assumption, they are individual unknown parameters. Detectors based on asymptotic theory are derived for both models. As part of the development of the asymptotically (AS) optimum detector, the Fisher information matrix (FIM) is derived. A proof of the locally asymptotic normal (LAN) property is provided for the Gaussian model probability density function (PDF). Both detectors, however, are AS equivalent to the generalized likelihood ratio test (GLRT), are AS of constant false alarm rate (CFAR), and perform AS as well as the GLRT constructed with full knowledge of the noise statistics. The performance of both detectors are compared with each other and to a standard spatially normalized beamformer in a computer simulation.
机译:本文解决了在线性传感器阵列中检测未知时空协方差噪声中的宽带平面波的问题。渐近检测理论的结果可用于推导接近大型数据记录最佳性能的检测器。参数化方法用于对数据的统计进行建模。选择二维自回归(2DAR)模型来对噪声过程进行建模。考虑了两个宽带平面波信号模型。两种模型都将信号表示为单色平面波之和。在高斯模型中,振幅被假定为具有单个方差参数的高斯,而在确定性假设中,它们是各个未知参数。两种模型都基于渐近理论推导了检波器。作为渐近(AS)最佳检测器开发的一部分,派生了Fisher信息矩阵(FIM)。为高斯模型概率密度函数(PDF)提供了局部渐近法线(LAN)属性的证明。但是,这两个检测器的AS等同于广义似然比测试(GLRT),具有恒定的误报率(CFAR)的AS,并且执行AS以及在充分了解噪声统计信息的情况下构造的GLRT。在计算机仿真中,将两个检测器的性能相互比较,并与标准的空间归一化波束形成器进行比较。

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