This paper investigates the classical statistical signal processing problem
of detecting a signal in the presence of colored noise with an unknown
covariance matrix. In particular, we consider a scenario where m-dimensional p
possible signal-plus-noise samples and m-dimensional n noise-only samples are
available at the detector. Then the presence of a signal can be detected using
the largest generalized eigenvalue (l.g.e.) of the so called whitened sample
covariance matrix. This amounts to statistically characterizing the maximum
eigenvalue of the deformed Jacobi unitary ensemble (JUE). To this end, we
employ the powerful orthogonal polynomial approach to determine a new finite
dimensional expression for the cumulative distribution function (c.d.f.) of the
l.g.e. of the deformed JUE. This new c.d.f. expression facilitates the further
analysis of the receiver operating characteristics (ROC) of the detector. It
turns out that, for m=n, when m and p increase such that m/p attains a fixed
value, there exists an optimal ROC profile corresponding to each fixed
signal-to-noise ratio (SNR). In this respect, we have established a tight
approximation for the corresponding optimal ROC profile.Comment: Submitted to ISIT 201