共轭梯度参数自适应匹配滤波器

Chaoshu Jiang, Hongbin Li, M. Rangaswamy
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引用次数: 8

摘要

本文对时空自适应处理(STAP)检测中的参数自适应匹配滤波器(PAMF)检测器进行了重新研究。最初,PAMF检测器是通过对STAP检测中的干扰信号使用多通道自回归(AR)参数模型引入的。与完全自适应STAP检测器相比,参数化方法带来的好处包括显著减少训练和计算需求,但PAMF检测器作为一种降维解决方案仍不清楚。本文采用共轭梯度(CG)算法解决了PAMF检测器的线性预测问题。结果表明,CG不仅为PAMF检测器提供了一种新的计算效率实现,而且为PAMF作为降秩子空间检测器提供了新的视角。当干扰信号的协方差矩阵已知时,首先引入CG算法来提供匹配滤波器(MF)和参数匹配滤波器(PMF)的替代实现。然后将其推广到从训练数据估计协方差矩阵的自适应情况。讨论了未知模型阶数和收敛速度等重要问题。通过使用KASSPER和其他计算机生成的数据来检查所提出的CG-PAMF检测器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conjugate gradient parametric adaptive matched filter
The parametric adaptive matched filter (PAMF) detector for space-time adaptive processing (STAP) detection is re-examined in this paper. Originally, the PAMF detector was introduced by using a multichannel autoregressive (AR) parametric model for the disturbance signal in STAP detection. While the parametric approach brings in benefits such as significantly reduced training and computational requirements as compared with fully adaptive STAP detectors, the PAMF detector as a reduced-dimensional solution remains unclear. This paper employs the conjugate-gradient (CG) algorithm to solve the linear prediction problem arising in the PAMF detector. It is shown that CG yields not only a new computationally efficient implementation of the PAMF detector, but it also offers new perspectives of PAMF as a reduced-rank subspace detector. The CG algorithm is first introduced to provide alternative implementations for the matched filter (MF) and parametric matched filter (PMF) when the covariance matrix of the disturbance signal is known. It is then extended to the adaptive case where the covariance matrix is estimated from training data. Important issues such as unknown model order and convergence rate are discussed. Performance of the proposed CG-PAMF detector is examined by using the KASSPER and other computer generated data.
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