Evaluation of Pattern Classifiers for Fingerprint and OCR Applications (1993)
| Venue: | Pattern Recognition |
| Citations: | 26 - 2 self |
BibTeX
@ARTICLE{Blue93evaluationof,
author = {J.L. Blue and G.T. Candela and P.J. Grother and R. Chellappa and C.L. Wilson},
title = {Evaluation of Pattern Classifiers for Fingerprint and OCR Applications},
journal = {Pattern Recognition},
year = {1993},
volume = {27},
pages = {485--501}
}
Years of Citing Articles
OpenURL
Abstract
In this paper we evaluate the classification accuracy of four statistical and three neural network classifiers for two image based pattern classification problems. These are fingerprint classification and optical character recognition (OCR) for isolated handprinted digits. The evaluation results reported here should be useful for designers of practical systems for these two important commercial applications. For the OCR problem, the Karhunen-Lo`eve (K-L) transform of the images is used to generate the input feature set. Similarly for the fingerprint problem, the K-L transform of the ridge directions is used to generate the input feature set. The statistical classifiers used were Euclidean minimum distance, quadratic minimum distance, normal, and k-nearest neighbor. The neural network classifiers used were multilayer perceptron, radial basis function, and probabilistic. The OCR data consisted of 7,480 digit images for training and 23,140 digit images for testing. The fingerprint data co...







