Classification of Graffiti digits by using Computational Intelligence

Classification of Graffiti digits by using Computational Intelligence

Several architectures and techniques to optimize the performance of the Neural Networks in the Pattern Recognition.

Noor Publishing ( 15.05.2017 )

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The technological advances and the massive flood of papers have motivated many researchers and companies to innovate new methods and technologies. They build automatic readers to recognize handwritten documents. In particular, handwriting recognition is very useful technology to support applications like electronic books (eBooks), postcode readers (that sort the mail in post offices), and some bank’s applications. This book proposed systems to discriminate handwritten graffiti digits and some commands with different architectures and abilities. It introduced three classifiers, namely single neural network (SNN) classifier, parallel neural networks (PNN) classifier and tree-structured (TS) classifier. The three classifiers have been designed through adopting feed-forward neural networks. The back-propagation algorithm has been used to optimize the network’s parameters (connection weights). Several architectures are applied and examined to present a comparative study about the three systems from different perspectives.

Détails du livre:

ISBN-13:

978-3-330-96936-0

ISBN-10:

3330969369

EAN:

9783330969360

Langue du Livre:

English

de (auteur) :

Ali H. Al-Fatlawi

Nombre de pages:

96

Publié le:

15.05.2017

Catégorie:

Informatique