COOPERATION OF SUPPORT VECTOR MACHINES FOR HANDWRITTEN DIGIT RECOGNITION TROUGH PARTITIONING OF THE FEATURE SET
Dejan Gorgevik, Dusan Cakmakov
Abstract: In this
paper, various cooperation schemes of SVM (Support Vector Machine) classifiers
applied on two feature sets for handwritten digit recognition are examined. We
start with a feature set composed of structural and statistical features and
corresponding SVM classifier applied on the complete feature set. Later, we
investigate the various partitions of the feature set as well as the advantages
and weaknesses of various decision fusion schemes applied on SVM classifiers
designed for partitioned feature sets. The obtained results show that it is
difficult to exceed the recognition rate of a single SVM classifier applied
straightforwardly on the complete feature set. Additionally, we show that the
partitioning of the feature set according to feature nature (structural and
statistical features) is not always the best way for designing classifier
cooperation schemes. These results impose need of special feature selection
procedures for optimal partitioning of the feature set for classifier
cooperation schemes.
Keywords: classification, committee, features, rejection, reliability