PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE

In the process of learning Arabic letters, recognizing Arabic letters is a very important part. In this phase, novice students will experience difficulties. Learning Arabic letters will be more effective if there is a system that is able to recognize Arabic letters, either in isolated form or in the...

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Main Author: RADHIAH , AINATUL
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/25223
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:25223
spelling id-itb.:252232018-01-26T14:12:43ZPRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE RADHIAH , AINATUL Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/25223 In the process of learning Arabic letters, recognizing Arabic letters is a very important part. In this phase, novice students will experience difficulties. Learning Arabic letters will be more effective if there is a system that is able to recognize Arabic letters, either in isolated form or in the sentence. <br /> <br /> In this thesis is designed a system that can recognize Arabic letters in the form of isolated and Arabic letters in the sentence. The system has five stages: binarization, <br /> <br /> segmentation, thinning, feature extraction and classification. Binarization stage is done by converting the image into a binary form that has a value of zero and one. In the segmentation stage is done with Zidouri algorithm which has several parameters, features and rules to segment a word. In the thinning stage is done by Stentiford algorithm which has four templates, end point and number of connectivity to check whether pixel image is deleted or not. In the feature extraction stage three features extracted, the first is the normalized chain code, the second is the number of dots, the third is the dots position. At the classification stage is done by comparing the two methods of Artificial Neural Network (ANN) and Hidden Markov Model (HMM). The result of the recognition of isolated Arabic letters using the ANN classification method <br /> <br /> for isolated letters reaches 100% accuracy and the result of letter recognition in the sentence reaches 69% accuracy. While the result of the recognition of Arabic letters <br /> <br /> using HMM for isolated letters reaches 71% accuracy and the result of letter recognition in the sentence reaches 50% accuracy. From the data obtained on the Arabic letters incorrectly identified with the ANN method, there are 5 letters that are always misidentified. The accuracy of the letters correctly identified is 50%, whereas from the data obtained on the Arabic letters incorrectly identified with the HMM method, there are 9 letters that are always misidentified. Correct accuracy of letters is 38%. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description In the process of learning Arabic letters, recognizing Arabic letters is a very important part. In this phase, novice students will experience difficulties. Learning Arabic letters will be more effective if there is a system that is able to recognize Arabic letters, either in isolated form or in the sentence. <br /> <br /> In this thesis is designed a system that can recognize Arabic letters in the form of isolated and Arabic letters in the sentence. The system has five stages: binarization, <br /> <br /> segmentation, thinning, feature extraction and classification. Binarization stage is done by converting the image into a binary form that has a value of zero and one. In the segmentation stage is done with Zidouri algorithm which has several parameters, features and rules to segment a word. In the thinning stage is done by Stentiford algorithm which has four templates, end point and number of connectivity to check whether pixel image is deleted or not. In the feature extraction stage three features extracted, the first is the normalized chain code, the second is the number of dots, the third is the dots position. At the classification stage is done by comparing the two methods of Artificial Neural Network (ANN) and Hidden Markov Model (HMM). The result of the recognition of isolated Arabic letters using the ANN classification method <br /> <br /> for isolated letters reaches 100% accuracy and the result of letter recognition in the sentence reaches 69% accuracy. While the result of the recognition of Arabic letters <br /> <br /> using HMM for isolated letters reaches 71% accuracy and the result of letter recognition in the sentence reaches 50% accuracy. From the data obtained on the Arabic letters incorrectly identified with the ANN method, there are 5 letters that are always misidentified. The accuracy of the letters correctly identified is 50%, whereas from the data obtained on the Arabic letters incorrectly identified with the HMM method, there are 9 letters that are always misidentified. Correct accuracy of letters is 38%.
format Theses
author RADHIAH , AINATUL
spellingShingle RADHIAH , AINATUL
PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE
author_facet RADHIAH , AINATUL
author_sort RADHIAH , AINATUL
title PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE
title_short PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE
title_full PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE
title_fullStr PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE
title_full_unstemmed PRINTED ARABIC LETTER RECOGNITION BASED ON IMAGE
title_sort printed arabic letter recognition based on image
url https://digilib.itb.ac.id/gdl/view/25223
_version_ 1822020626393595904