GENERALIZED-APPROACH TO THE RECOGNITION OF STRUCTURALLY SIMILAR HANDWRITTEN CHARACTERS USING MULTIPLE EXPERT CLASSIFIERS

Citation
Mc. Fairhurst et Afr. Rahman, GENERALIZED-APPROACH TO THE RECOGNITION OF STRUCTURALLY SIMILAR HANDWRITTEN CHARACTERS USING MULTIPLE EXPERT CLASSIFIERS, IEE proceedings. Vision, image and signal processing, 144(1), 1997, pp. 15-22
Citations number
12
Categorie Soggetti
Engineering, Eletrical & Electronic
ISSN journal
1350245X
Volume
144
Issue
1
Year of publication
1997
Pages
15 - 22
Database
ISI
SICI code
1350-245X(1997)144:1<15:GTTROS>2.0.ZU;2-N
Abstract
It is observed that a particular classifier using a particular set of features will generally exhibit a greater probability of confusion amo ng certain character classes than among others. In general these confu sion classes are a substantial source of error in the overall performa nce of the problem is to separate these characters and reprocess them further in an independent secondary stage in the framework of a multip le expert configuration. The philosophy is to use multiple classifiers to re-evaluate these relatively difficult characters by treating them as special and specific problem cases. In extending special treatment to these characters, advantage can be taken of distinctive structural features to design tailor-made algorithms suited to a particular prob lem. Since such classifiers are required to deal only with a limited n umber of classes, very versatile classifiers can be implemented. The m ain difficulty of this philosophy is to devise a way to group characte rs together to make sure that these specialised classifiers receive a stream of input characters which indeed belong to the particular group of characters associated with that particular classifier. The authors present a general philosophy for multi-expert classification and deal with the specific problem of formation of distinctive character strea ms with a high degree of confidence. It then elaborates on other techn iques and variations that can be adopted to make this type of multiple expert configuration more effective.