On Detection and Estimation of Wave Fields for Surveillance

H. Urkowitz
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引用次数: 3

Abstract

This paper considers the detection and estimation of a signal field in the presence of a noise field. The wave field, which is a continuous space-time function, is converted into a discrete set of time functions by an array of transducer elements which convert the physical field quantities into other quantities appropriate for processing. The resulting set of time functions makes up a vector random process. A generalization of the one-dimensional Karhunen-Loeve expansion applied to the vector random process yields a series representation with uncorrelated coefficients. The effects of complex element weighting and of internal noise are considered in describing the noise and signal vector processes. If the noise field is Gaussian, the conditional probability density functions of the vector processes, under the hypotheses of noise alone and of signal pulse noise, are straightforwardly written, leading directly to the likelihood ratio for a completely known signal. The operation to obtain a test statistic based upon the likelihood ratio is interpreted as a set of filtering operations, time-varying in the general case where the noise field is not wide-sense stationary. When the noise field is wide-sense stationary, the field may be described by a spectral density matrix whose elements are the cross-spectral densities of the total noise at the transducers taken in pairs. The operation to obtain the test statistic is now interpreted as a set of filtering operations described by a filtering matrix.
监测用波场的检测与估计
本文研究了存在噪声的信号场的检测与估计问题。波场是一个连续的时空函数,通过一组换能器元件转换成离散的时间函数集,换能器元件将物理场量转换成适合处理的其他量。得到的时间函数集合构成了一个向量随机过程。将一维Karhunen-Loeve展开式推广到向量随机过程,得到系数不相关的级数表示。在描述噪声和信号矢量过程时,考虑了复元加权和内部噪声的影响。如果噪声场是高斯的,则在单独噪声和信号脉冲噪声的假设下,向量过程的条件概率密度函数可以直接写成,从而直接得到一个完全已知信号的似然比。基于似然比获得检验统计量的操作被解释为一组滤波操作,在噪声场不是广义平稳的一般情况下是时变的。当噪声场是广义平稳时,可以用谱密度矩阵来描述该场,谱密度矩阵的元素是成对的换能器处总噪声的交叉谱密度。获得测试统计量的操作现在被解释为由过滤矩阵描述的一组过滤操作。
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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