DocumentCode
1121789
Title
A Posteriori Estimation of Correlated Jointly Gaussian Mean Vectors
Author
Lasry, Moshe J. ; Stern, Richard M.
Author_Institution
Departments of Electrical Engineering and Computer Science, Carnegie-Mellon University, Pittsburgh, PA 15213.
Issue
4
fYear
1984
fDate
7/1/1984 12:00:00 AM
Firstpage
530
Lastpage
535
Abstract
This paper describes the use of maximum a posteriori probability (MAP) techniques to estimate the mean values of features used in statistical pattern classification problems, when these mean feature values from the various decision classes are jointly Gaussian random vectors that are correlated across the decision classes. A set of mathematical formalisms is proposed and used to derive closed-form expressions for the estimates of the class-conditional mean vectors, and for the covariance matrix of the errors of these estimates. Finally, the performance of these algorithms is described for the simple case of a two-class one-feature pattern recognition problem, and compared to the performance of classical estimators that do not exploit the class-to-class correlations of the features´ mean values.
Keywords
Closed-form solution; Computerized monitoring; Covariance matrix; Loudspeakers; Parameter estimation; Pattern classification; Pattern recognition; Probability distribution; Speech recognition; US Department of Defense; Bayesian learning; dynamic speaker adaptation; maximum a posteriori probability; multivariate normal probability densities; speech recognition; statistical parameter estimation; statistical pattern recognition;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.1984.4767559
Filename
4767559
Link To Document