13
1

High-Dimensional Covariance Shrinkage for Signal Detection

Abstract

In this paper, we consider the problem of determining the presence of a given signal in a high-dimensional observation with unknown covariance matrix by using an adaptive matched filter. Traditionally such filters are formed from the sample covariance matrix of some given training data, but, as is well-known, the performance of such filters is poor when the number of training data nn is not much larger than the data dimension pp. We thus seek a covariance estimator to replace sample covariance. To account for the fact that nn and pp may be of comparable size, we adopt the "large-dimensional asymptotic model" in which nn and pp go to infinity in a fixed ratio. Under this assumption, we identify a covariance estimator that is asymptotically detection-theoretic optimal within a general shrinkage class inspired by C. Stein, and we give consistent estimates for conditional false-alarm and detection rate of the corresponding adaptive matched filter.

View on arXiv
Comments on this paper