Detection of partially correlated signals in clutter using a multichannel model-based approach

J. Michels
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引用次数: 2

Abstract

The author considers the Gaussian multichannel binary detection problem in which the signal and nonwhite clutter noise are Gaussian vector processes with unknown statistics. A generalized likelihood ratio using multichannel innovation processes is implemented via a model-based approach where the signal and clutter are assumed to be characterized by autoregressive vector processes with arbitrary temporal and cross-channel correlation. The innovations processes are obtained through linear estimation using multichannel parameter estimates. Detection performance is considered as the estimates approach steady state with increasing data block sample sizes. Results for two-channel signal and clutter noise vectors containing various temporal and cross-channel correlation are obtained using a Monte Carlo procedure. In the transient state (estimation with limited data), the detection results are considered as a function of the data sample window sizes used in the parameter estimation procedure. Furthermore, it is noted that the detection performance in the transient state is related to that of the estimator, which in turn has its own dependence upon process correlation.<>
基于多通道模型的杂波中部分相关信号检测方法
考虑了信号和非白杂波噪声均为统计量未知的高斯矢量过程的高斯多通道二值检测问题。使用多通道创新过程的广义似然比通过基于模型的方法实现,其中假设信号和杂波由具有任意时间和跨通道相关性的自回归向量过程表征。创新过程是通过多通道参数估计的线性估计得到的。检测性能被认为是随着数据块样本大小的增加,估计接近稳定状态。用蒙特卡罗方法得到了包含各种时间和跨通道相关的双通道信号和杂波噪声矢量的结果。在瞬态(有限数据的估计)中,检测结果被认为是参数估计过程中使用的数据样本窗口大小的函数。此外,我们注意到瞬态的检测性能与估计器的性能有关,而估计器的性能又依赖于过程相关性
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