Title :
The Estimated Ocean Detector: Derivation and Predicted Performance under Gaussian Assumptions
Author :
Ballard, J.A. ; Jemmott, C.W. ; Sibul, L.H. ; Culver, R.L. ; Camin, H.J.
Author_Institution :
Graduate Program in Acoustics & Appl. Res. Lab., Pennsylvania State Univ., University Park, PA
Abstract :
This paper presents a derivation of the Maximum Likelihood (ML) detector for acoustic signals that have propagated through a random or uncertain ocean environment. The derivation requires probability distribution functions (pdfs) of relevant signal and noise parameters belonging to the exponential class. (A companion paper describes how available knowledge of the environment and the Maximum Entropy method can be used to calculate exponential class pdfs for signal and noise parameters.) The resultant ML detector operates on the observations to compute parameter means, referred to as conditional mean estimates (CMEs), and then correlates the CME with the observations to obtain a detection statistic. For this reason, the detector is referred to as an Estimated Ocean Detector (EOD). For Gaussian signal and noise, the EOD reduces to the weighted sum of a correlation detector (CD) and an energy detector (ED), which agrees with Van Trees´ result. When the signal variance is low the weights strongly favor the CD, while for high signal variance the weights strongly favor the ED. A closed-form solution is not available for the Gaussian EOD. However, results obtained using a Monte Carlo simulation show that when the signal variance is low, EOD performance equals that of the CD, while under high signal variance, performance equals the ED. For intermediate signal variance, the simulation shows that the EOD weights the CD and ED outputs so as to perform better than either detector by itself. Finally, EOD robustness to incorrect estimates of received signal and noise parameters pdfs is investigated using the Monte Carlo simulation. The EOD is shown to be a promising method for improving passive sonar performance by directly incorporating available information about the ocean environment without sacrificing robustness to errors in the signal parameter distributions
Keywords :
Monte Carlo methods; acoustic signal detection; maximum entropy methods; maximum likelihood detection; oceanography; sonar signal processing; CD; CME; ED; EOD; Estimated Ocean Detector; Gaussian signal; ML detector; Maximum Entropy method; Maximum Likelihood detector; Monte Carlo simulation; Van Trees; acoustic signals; conditional mean estimates; correlation detector; energy detector; noise parameter; ocean environment; passive sonar; probability distribution functions; signal parameter distributions; signal variance; Acoustic propagation; Acoustic signal detection; Detectors; Maximum likelihood detection; Maximum likelihood estimation; Noise robustness; Oceans; Probability distribution; Signal detection; Working environment noise;
Conference_Titel :
OCEANS 2006
Conference_Location :
Boston, MA
Print_ISBN :
1-4244-0114-3
Electronic_ISBN :
1-4244-0115-1
DOI :
10.1109/OCEANS.2006.306821