Menu Content/Inhalt
Inicio arrow Publicaciones arrow revista arrow Comparing Feature Extraction Techniques and Classifiers in the Handwritten Letters ... (2010)

Investigación

GeneralPublicaciones
Comparing Feature Extraction Techniques and Classifiers in the Handwritten Letters ... (2010) PDF
Título:Comparing Feature Extraction Techniques and Classifiers in the Handwritten Letters Classification Problem
Autores: Antonio García-Manso, Carlos J. García-Orellana, Horacio González-Velasco, Miguel Macías-Macías, Ramón Gallardo-Caballero

Revista: 

Lecture Notes in Computer Science

Vol./Pag.: 

6354, 106-109
Ed./Año: Springer Verlag, 2010
DOI:
10.1007/978-3-642-15825-4_12
Abstract:The aim of this study is to compare the performance of two feature extraction techniques, Independent Component Analysis (ICA) and Principal Component Analysis (PCA) and also to compare two different kinds of classifiers, Neural Networks and Support Vector Machine (SVM). To this aim, a system for handwritten letters recognition was developed, which consist of two stages: a feature extraction stage using either ICA or PCA, and a classifier based on neural networks or SVM. To test the performance of the system, the subset of uppercase letters of the NIST#19 database was used. From the results of our tests, it can be concluded that when a neural network is used as classifier, the results are very similar with the two feature extraction techniques (ICA and PCA). But when the SVM classifier is used, the results are quite different, performing better the feature extractor based on ICA.
 

Noticias

Relacionados