Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network

The fact that English language is a universal language, so it is necessary to propose  a computerized  ways to recognize the texts written in English language, which will simplifies the reading  of any text, treat it, and deal with it in a least possible time.             The BAM (Bidirectional Asso...

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Main Author: Aseel Ali
Format: Article
Language:Arabic
Published: Mosul University 2013-07-01
Series:Al-Rafidain Journal of Computer Sciences and Mathematics
Subjects:
Online Access:https://csmj.mosuljournals.com/article_163487_df6b20195f9088da98ab31c74efabe74.pdf
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author Aseel Ali
author_facet Aseel Ali
author_sort Aseel Ali
collection DOAJ
description The fact that English language is a universal language, so it is necessary to propose  a computerized  ways to recognize the texts written in English language, which will simplifies the reading  of any text, treat it, and deal with it in a least possible time.             The BAM (Bidirectional Associative Memory) network was used to recognize the printed English letters, because it process the small size images of letters in an easy way, also BAM is working in two ways (forward and backward) and store the weights without any amendment, therefore BAM is considered as one of the networks of education controller (Supervised learning). The recognition of the printed English text was done using the network BAM, while the printed English text was entered to the computer using the scanner, also BAM network used to recognize the letters that have some noise and after training; it gives successful results of recognition about 84.6%.   The aim of this research is to segment and recognize the printed English text, wither it is clear or it have some noise, Matlab R2008a language is used to accomplish this work.
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spelling doaj.art-03d5fe0932e24a88a20ed92ac4b37cb92022-12-22T03:09:16ZaraMosul UniversityAl-Rafidain Journal of Computer Sciences and Mathematics1815-48162311-79902013-07-01102819410.33899/csmj.2013.163487163487Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory NetworkAseel Ali0College of Computer sciences and Mathematics University of Mosul, Mosul, IraqThe fact that English language is a universal language, so it is necessary to propose  a computerized  ways to recognize the texts written in English language, which will simplifies the reading  of any text, treat it, and deal with it in a least possible time.             The BAM (Bidirectional Associative Memory) network was used to recognize the printed English letters, because it process the small size images of letters in an easy way, also BAM is working in two ways (forward and backward) and store the weights without any amendment, therefore BAM is considered as one of the networks of education controller (Supervised learning). The recognition of the printed English text was done using the network BAM, while the printed English text was entered to the computer using the scanner, also BAM network used to recognize the letters that have some noise and after training; it gives successful results of recognition about 84.6%.   The aim of this research is to segment and recognize the printed English text, wither it is clear or it have some noise, Matlab R2008a language is used to accomplish this work.https://csmj.mosuljournals.com/article_163487_df6b20195f9088da98ab31c74efabe74.pdfpattern recognitionsneural networksbidirectional associative memory
spellingShingle Aseel Ali
Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network
Al-Rafidain Journal of Computer Sciences and Mathematics
pattern recognitions
neural networks
bidirectional associative memory
title Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network
title_full Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network
title_fullStr Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network
title_full_unstemmed Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network
title_short Scansion Text Written in English language and Recognized Printed English Character using Bidirectional Associative Memory Network
title_sort scansion text written in english language and recognized printed english character using bidirectional associative memory network
topic pattern recognitions
neural networks
bidirectional associative memory
url https://csmj.mosuljournals.com/article_163487_df6b20195f9088da98ab31c74efabe74.pdf
work_keys_str_mv AT aseelali scansiontextwritteninenglishlanguageandrecognizedprintedenglishcharacterusingbidirectionalassociativememorynetwork