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High performance classifiers combination for handwritten digit recognition

Identifieur interne : 005F50 ( Main/Merge ); précédent : 005F49; suivant : 005F51

High performance classifiers combination for handwritten digit recognition

Auteurs : Hubert Cecotti ; Szilard Vajda ; Abdel Belaïd [France]

Source :

RBID : CRIN:cecotti05f

English descriptors

Abstract

This paper presents a multi-classifier system using classifiers based on two different approaches. A stochastic model using Markov Random Field is combined with different kind of neural networks by several fusing rules. It has been proved that the combination of different classifiers can lead to improve the global recognition rate. We propose to compare different fusing rules in a framework composed of classifiers with high accuracies. We show that even there still remains a complementarity between classifiers, even from the same approach, that improves the global recognition rate. The combinations have been tested on handwritten digits. The overall recognition rate has reached 99.03========percnt; without using any rejection criteria.

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CRIN:cecotti05f

Le document en format XML

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<title xml:lang="en" wicri:score="570">High performance classifiers combination for handwritten digit recognition</title>
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<name sortKey="Vajda, Szilard" sort="Vajda, Szilard" uniqKey="Vajda S" first="Szilard" last="Vajda">Szilard Vajda</name>
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<name sortKey="Belaid, Abdel" sort="Belaid, Abdel" uniqKey="Belaid A" first="Abdel" last="Belaid">Abdel Belaïd</name>
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<country>France</country>
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<region type="region" nuts="2">Grand Est</region>
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<orgName type="laboratoire" n="5">Laboratoire lorrain de recherche en informatique et ses applications</orgName>
<orgName type="university">Université de Lorraine</orgName>
<orgName type="institution">Centre national de la recherche scientifique</orgName>
<orgName type="institution">Institut national de recherche en informatique et en automatique</orgName>
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<term>ancient document</term>
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<term>character recognition</term>
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<div type="abstract" xml:lang="en" wicri:score="2075">This paper presents a multi-classifier system using classifiers based on two different approaches. A stochastic model using Markov Random Field is combined with different kind of neural networks by several fusing rules. It has been proved that the combination of different classifiers can lead to improve the global recognition rate. We propose to compare different fusing rules in a framework composed of classifiers with high accuracies. We show that even there still remains a complementarity between classifiers, even from the same approach, that improves the global recognition rate. The combinations have been tested on handwritten digits. The overall recognition rate has reached 99.03========percnt; without using any rejection criteria.</div>
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{{Explor lien
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   |texte=   High performance classifiers combination for handwritten digit recognition
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