English

Space-Time Adaptive Detection at Low Sample Support

Signal Processing 2021-07-26 v1

Abstract

An important problem in space-time adaptive detection is the estimation of the large p-by-p interference covariance matrix from training signals. When the number of training signals n is greater than 2p, existing estimators are generally considered to be adequate, as demonstrated by fixed-dimensional asymptotics. But in the low-sample-support regime (n < 2p or even n < p) fixed-dimensional asymptotics are no longer applicable. The remedy undertaken in this paper is to consider the "large dimensional limit" in which n and p go to infinity together. In this asymptotic regime, a new type of estimator is defined (Definition 2), shown to exist (Theorem 1), and shown to be detection-theoretically ideal (Theorem 2). Further, asymptotic conditional detection and false-alarm rates of filters formed from this type of estimator are characterized (Theorems 3 and 4) and shown to depend only on data that is given, even for non-Gaussian interference statistics. The paper concludes with several Monte Carlo simulations that compare the performance of the estimator in Theorem 1 to the predictions of Theorems 2-4, showing in particular higher detection probability than Steiner and Gerlach's Fast Maximum Likelihood estimator.

Keywords

Cite

@article{arxiv.2010.03388,
  title  = {Space-Time Adaptive Detection at Low Sample Support},
  author = {Benjamin D. Robinson and Robert Malinas and Alfred O. Hero},
  journal= {arXiv preprint arXiv:2010.03388},
  year   = {2021}
}

Comments

13 pages, 3 figures

R2 v1 2026-06-23T19:07:46.039Z