HANDWRITTEN DIGIT RECOGNITION BY COMBINING SUPPORT VECTOR MACHINES USING RULE-BASED REASONING
Dejan Gorgevik, Dusan Cakmakov, Vladimir Radevski
Abstract: The
idea of combining classifiers in order to compensate their individual weakness
and to preserve their individual strength has been widely used in recent pattern
recognition applications. In this paper, the cooperation of two feature families
for handwritten digit recognition using SVM (Support Vector Machine) classifiers
will be examined. We investigate the advantages and weaknesses of various
decision fusion schemes using rule-based reasoning. The obtained results show
that it is difficult to exceed the recognition rate of the classifier applied
straightforwardly on the feature families as one set. However, the rule-based
cooperation schemes enable an easy and efficient implementation of various
rejection criteria that leads to high reliability recognition systems.
Keywords: structural, statistical, features, decision fusion, rejection, reliability