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Optimal Design of the Adaptive Normalized Matched Filter Detector

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TLDR
In this paper, the adaptive normalized matched filter (ANMF) for radar detection has been improved for high dimensional problems with a limited number of secondary data samples than traditional sample covariance estimates.
Abstract
This article addresses improvements on the design of the adaptive normalized matched filter (ANMF) for radar detection. It is well-acknowledged that the estimation of the noise-clutter covariance matrix is a fundamental step in adaptive radar detection. In this paper, we consider regularized estimation methods which force by construction the eigenvalues of the scatter estimates to be greater than a positive regularization parameter rho. This makes them more suitable for high dimensional problems with a limited number of secondary data samples than traditional sample covariance estimates. While an increase of rho seems to improve the conditioning of the estimate, it might however cause it to significantly deviate from the true covariance matrix. The setting of the optimal regularization parameter is a difficult question for which no convincing answers have thus far been provided. This constitutes the major motivation behind our work. More specifically, we consider the design of the ANMF detector for two kinds of regularized estimators, namely the regularized sample covariance matrix (RSCM), appropriate when the clutter follows a Gaussian distribution and the regularized Tyler estimator (RTE) for non-Gaussian spherically invariant distributed clutters. Based on recent random matrix theory results studying the asymptotic fluctuations of the statistics of the ANMF detector when the number of samples and their dimension grow together to infinity, we propose a design for the regularization parameter that maximizes the detection probability under constant false alarm rates. Simulation results which support the efficiency of the proposed method are provided in order to illustrate the gain of the proposed optimal design over conventional settings of the regularization parameter.

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Citations
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K. D. Ward
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Closed Form Analysis of the Normalized Matched Filter With a Test Case for Detection of Underwater Acoustic Signals

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Second order statistics of robust estimators of scatter. Application to GLRT detection for elliptical signals

TL;DR: In this paper, a central limit theorem for bilinear forms of the type a? C? N (? ) - 1 b, where a, b? C N are unit norm deterministic vectors and C? n (?) is a robust shrinkage estimator of scatter parametrized by? and built upon n independent elliptical vector observations, is presented.
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Théorie des matrices aléatoires robustes et applications à la détection radar

TL;DR: Des simulations Monte-Carlo montrent la pertinence de cette approche avec la comparaison aux methodes traditionnellement utilisees a des problemes de detection en radar ainsi grâce a l’analyse statistique de ce dernier.
References
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Robust Estimation of a Location Parameter

TL;DR: In this article, a new approach toward a theory of robust estimation is presented, which treats in detail the asymptotic theory of estimating a location parameter for contaminated normal distributions, and exhibits estimators that are asyptotically most robust (in a sense to be specified) among all translation invariant estimators.
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Rapid Convergence Rate in Adaptive Arrays

TL;DR: A direct method of adaptive weight computation, based on a sample covariance matrix of the noise field, has been found to provide very rapid convergence in all cases, i.e., independent of the eigenvalue distribution.
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Covariance matrix estimation errors and diagonal loading in adaptive arrays

TL;DR: In this paper, the effect of covariance matrix sample size on the system performance of adaptive arrays using the sample matrix inversion (SMI) algorithm has been investigated, and a technique to reduce these effects by modifying the covariance matrices estimate is described from the point of view of eigenvector decomposition.
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Matched subspace detectors

TL;DR: The generalized likelihood ratio (GLR) is the uniformly most powerful invariant detector and the utility of this finding is illustrated by solving a number of problems for detecting subspace signals in subspace interference and broadband noise.
Journal ArticleDOI

Robust $M$-Estimators of Multivariate Location and Scatter

TL;DR: In this article, the robust estimation of the location vector and scatter matrix by means of "$M$-estimators," defined as solutions of the system: √ √ u_1(d_i)(\math{x}_i - \mathbf{t}) = \mathBF{0}$ and $n^{-1]-sum_i u_2(d-i^2)
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