Hierarchical optical character recognition system design based on the Hopfield neural networks

Pattern recognition is a scientific discipline dealing with the methods for object description and classification and the Optical Character Recognition (OCR) is one of its fields of research. In this paper a hierarchical optical character system design is presented. Classification strategy based on...

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Main Authors: Kljajić Nataša, Đurović Željko
Format: Article
Language:English
Published: Military Technical Institute, Belgrade 2015-01-01
Series:Scientific Technical Review
Subjects:
Online Access:https://scindeks-clanci.ceon.rs/data/pdf/1820-0206/2015/1820-02061503019K.pdf
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spelling doaj-e57485b1eb45491db4f1df1fa93f8f262020-11-25T02:12:33ZengMilitary Technical Institute, BelgradeScientific Technical Review1820-02062683-57702015-01-0165319261820-02061503019KHierarchical optical character recognition system design based on the Hopfield neural networksKljajić Nataša0https://orcid.org/0000-0001-9708-0964Đurović Željko1https://orcid.org/0000-0002-6076-442XMilitary Technical Institute (VTI), BelgradeUniversity of Belgrade, Faculty of Electrical Engineering, BelgradePattern recognition is a scientific discipline dealing with the methods for object description and classification and the Optical Character Recognition (OCR) is one of its fields of research. In this paper a hierarchical optical character system design is presented. Classification strategy based on the Hopfield neural networks and image processing methods are described. The characters for recognition are Cyrillic alphabet capital letters. The first step in the design is a neural network testing with the real scanned document in order to see how the network works. Based on the results of testing with one Hopfield neural network, some common sources of error in this system were found. These sources of error were a base for new improvements in the system. Next step is, therefore, the addition of new binary image processing parameters and new pre-processing and post-processing techniques for a typical error's elimination. After testing the same real scanned document again, the obtained results showed that this new and improved system decreased an error probability significantly.https://scindeks-clanci.ceon.rs/data/pdf/1820-0206/2015/1820-02061503019K.pdfpattern recognitioncharacter recognitionoptical recognitionpattern recognition systemhierarchy systemneural networkassociative memory
collection DOAJ
language English
format Article
sources DOAJ
author Kljajić Nataša
Đurović Željko
spellingShingle Kljajić Nataša
Đurović Željko
Hierarchical optical character recognition system design based on the Hopfield neural networks
Scientific Technical Review
pattern recognition
character recognition
optical recognition
pattern recognition system
hierarchy system
neural network
associative memory
author_facet Kljajić Nataša
Đurović Željko
author_sort Kljajić Nataša
title Hierarchical optical character recognition system design based on the Hopfield neural networks
title_short Hierarchical optical character recognition system design based on the Hopfield neural networks
title_full Hierarchical optical character recognition system design based on the Hopfield neural networks
title_fullStr Hierarchical optical character recognition system design based on the Hopfield neural networks
title_full_unstemmed Hierarchical optical character recognition system design based on the Hopfield neural networks
title_sort hierarchical optical character recognition system design based on the hopfield neural networks
publisher Military Technical Institute, Belgrade
series Scientific Technical Review
issn 1820-0206
2683-5770
publishDate 2015-01-01
description Pattern recognition is a scientific discipline dealing with the methods for object description and classification and the Optical Character Recognition (OCR) is one of its fields of research. In this paper a hierarchical optical character system design is presented. Classification strategy based on the Hopfield neural networks and image processing methods are described. The characters for recognition are Cyrillic alphabet capital letters. The first step in the design is a neural network testing with the real scanned document in order to see how the network works. Based on the results of testing with one Hopfield neural network, some common sources of error in this system were found. These sources of error were a base for new improvements in the system. Next step is, therefore, the addition of new binary image processing parameters and new pre-processing and post-processing techniques for a typical error's elimination. After testing the same real scanned document again, the obtained results showed that this new and improved system decreased an error probability significantly.
topic pattern recognition
character recognition
optical recognition
pattern recognition system
hierarchy system
neural network
associative memory
url https://scindeks-clanci.ceon.rs/data/pdf/1820-0206/2015/1820-02061503019K.pdf
work_keys_str_mv AT kljajicnatasa hierarchicalopticalcharacterrecognitionsystemdesignbasedonthehopfieldneuralnetworks
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