Title :
Sonar Array Detection of Gaussian Signals in Gaussian Noise of Unknown Power
Author :
Bershad, N.J. ; Feintuch, P.L.
Author_Institution :
University of California Irvine, Calif. 92664
Abstract :
A statistical test is postulated for detecting, with an M-element hydrophone array, a Gaussian signal in spatially independent Gaussian noise of unknown power. The test is an extension of the uniformly-most-powerful (UMP) unbiased test for a two-element array. The output signal-to-noise ratio of the test is calculated and, for a large number of independent space-time samples, is shown to be no better than a mean-level detector (MLD). Receiver operating characteristic curves (ROC) for the MLD are computed and compared to the ROC curves for the optimum (Bayes) parametric detector. The input signal-to-noise power ratios required to provide a detection probability of 0.5 differ by less than 0.2 dB for a fifty-element array with wide variation in false-alarm probability and time-bandwidth product. This result suggests that both the extended bivariate UMP unbiased test and the MLD perform close to the unknown UMP unbiased test for independence of a multivariate Gaussian distribution.
Keywords :
Aircraft; Covariance matrix; Detectors; Gaussian distribution; Gaussian noise; Performance evaluation; Signal detection; Sonar detection; Sonar equipment; Testing;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.1974.307968