Title :
Improving the parametric Gaussian classifier using neural networks
Author :
Sorady, Hala El ; Shoukry, Amin ; Bassiouny, Soheir
Author_Institution :
Fac. of Eng., Comput.. Sci. Dept., Alexandria, Egypt
Abstract :
The statistical approach to pattern recognition is among the early approaches applied in this field of research. This paper presents a mixed statistical parametric and neural networks approach for classifiers design. Statistical parametric techniques have the advantage of being mathematically tractable but are often non-optimal due to the need of making some assumptions about the shape of the distribution of the input data samples (e.g. being a multivariate normal distribution) and the need to estimate the distribution parameters (e.g. the mean vector and the covariance matrix) from the training data. On the other hand, neural networks classifiers are model (distribution) free. Therefore, they can be used to improve the performance of an initially given statistical classifier. Computer simulation results are given that show the efficiency of the proposed technique
Keywords :
Gaussian processes; backpropagation; covariance matrices; neural nets; parameter estimation; pattern classification; statistical analysis; backpropagation; classifiers design; computer simulation results; covariance matrix; distribution parameter estimation; efficiency; input data samples distribution; mean vector; multivariate normal distribution; network learning algorithm; neural networks classifiers; parametric Gaussian classifier; pattern recognition; perceptron; sigma-pi networks; statistical classifier performance; statistical parametric techniques; training data; Computer networks; Computer simulation; Covariance matrix; Gaussian distribution; Neural networks; Parameter estimation; Pattern analysis; Pattern recognition; Shape; Training data;
Conference_Titel :
Radio Science Conference, 1996. NRSC '96., Thirteenth National
Conference_Location :
Cairo
Print_ISBN :
0-7803-3656-9
DOI :
10.1109/NRSC.1996.551118