Title :
Generalized probabilistic neural network based classifiers
Author :
Kim, Moon W. ; Arozullah, Mohammed
Author_Institution :
US Naval Res. Lab., Washington, DC, USA
Abstract :
Two new probabilistic neural-network-based maximum-likelihood classifiers are presented. These classifiers are based on Gram-Charlier series expansion with and without Parzen´s windowing technique. The performance of the proposed classifiers are evaluated in terms of probability of target detection for a number of Gaussian and non-Gaussian noise source, and are compared with those of existing neural network classifiers, such as Bayesian and backpropagation classifiers. The new neural network classifiers performed better than existing classifiers in radar target detection. These classifiers are also applicable to many more practical situations than D.F. Specht´s (1988) Bayesian classifier
Keywords :
inference mechanisms; neural nets; pattern recognition; radar applications; Bayesian; Gram-Charlier series expansion; backpropagation; generalised probabilistic neural network based classifiers; maximum-likelihood classifiers; noise; probability of target detection; radar target detection; windowing technique; Bayesian methods; Density functional theory; Laboratories; Maximum likelihood detection; Maximum likelihood estimation; Moon; Neural networks; Object detection; Performance evaluation; Probability density function;
Conference_Titel :
Neural Networks, 1992. IJCNN., International Joint Conference on
Conference_Location :
Baltimore, MD
Print_ISBN :
0-7803-0559-0
DOI :
10.1109/IJCNN.1992.227100