Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout

Text recognition in Arabic handwritten scripts is an active research field. These recognition systems face numerous challenges, including enormous open data-bases, infinite variation in people’s handwriting, and freestyle. In this manuscript, Authors model deep learning architecture which can effici...

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Main Authors: Amani Ali Ahmed Ali, Suresha Mallaiah
Format: Article
Language:English
Published: Elsevier 2022-06-01
Series:Journal of King Saud University: Computer and Information Sciences
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1319157821000148
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author Amani Ali Ahmed Ali
Suresha Mallaiah
author_facet Amani Ali Ahmed Ali
Suresha Mallaiah
author_sort Amani Ali Ahmed Ali
collection DOAJ
description Text recognition in Arabic handwritten scripts is an active research field. These recognition systems face numerous challenges, including enormous open data-bases, infinite variation in people’s handwriting, and freestyle. In this manuscript, Authors model deep learning architecture which can efficiently be utilized to recognizing Arabic handwritten scripts. This work explored a new model for both single font and multi-font type which concentrate on two common classifiers which are: Support Vector Machine (SVM) along with Convolutional Neural Network (CNN). Furthermore, authors protected the proposed model against the issue of over-fitting because of the strong performance of dropout technique. Both classification and feature extraction are done automatically. In the light of the error backpropagation method analysis, authors also have been proposed an innovative depth neural network training rule for maximum interval minimum classification error. In the meantime, max-margin minimum classification error (M3CE) and cross entropy are analyzed and hybridized to obtain better outcomes. Authors tested the proposed model on AHDB, AHCD, HACDB, and IFN/ENIT databases. The proposed model performance is compared with the accuracies of text recognition gained from state-of-the-art Arabic text recognition. The proposed model delivers favorable results.
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spelling doaj.art-0c8e6d0a646e46dbb8566f571dfdfd452022-12-22T00:19:16ZengElsevierJournal of King Saud University: Computer and Information Sciences1319-15782022-06-0134632943300Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropoutAmani Ali Ahmed Ali0Suresha Mallaiah1Taiz University, Department of Computer Science, Taiz, Yemen; Kuvempu University, Department of MCA and Computer Science, Shimoga, India; Corresponding author at: Taiz University, Department of Computer Science, Taiz, Yemen.Kuvempu University, Department of MCA and Computer Science, Shimoga, IndiaText recognition in Arabic handwritten scripts is an active research field. These recognition systems face numerous challenges, including enormous open data-bases, infinite variation in people’s handwriting, and freestyle. In this manuscript, Authors model deep learning architecture which can efficiently be utilized to recognizing Arabic handwritten scripts. This work explored a new model for both single font and multi-font type which concentrate on two common classifiers which are: Support Vector Machine (SVM) along with Convolutional Neural Network (CNN). Furthermore, authors protected the proposed model against the issue of over-fitting because of the strong performance of dropout technique. Both classification and feature extraction are done automatically. In the light of the error backpropagation method analysis, authors also have been proposed an innovative depth neural network training rule for maximum interval minimum classification error. In the meantime, max-margin minimum classification error (M3CE) and cross entropy are analyzed and hybridized to obtain better outcomes. Authors tested the proposed model on AHDB, AHCD, HACDB, and IFN/ENIT databases. The proposed model performance is compared with the accuracies of text recognition gained from state-of-the-art Arabic text recognition. The proposed model delivers favorable results.http://www.sciencedirect.com/science/article/pii/S1319157821000148Arabic handwritten recognitionCNNDeep convolution neural networkDeep learningDropoutImage classification
spellingShingle Amani Ali Ahmed Ali
Suresha Mallaiah
Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout
Journal of King Saud University: Computer and Information Sciences
Arabic handwritten recognition
CNN
Deep convolution neural network
Deep learning
Dropout
Image classification
title Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout
title_full Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout
title_fullStr Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout
title_full_unstemmed Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout
title_short Intelligent handwritten recognition using hybrid CNN architectures based-SVM classifier with dropout
title_sort intelligent handwritten recognition using hybrid cnn architectures based svm classifier with dropout
topic Arabic handwritten recognition
CNN
Deep convolution neural network
Deep learning
Dropout
Image classification
url http://www.sciencedirect.com/science/article/pii/S1319157821000148
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AT sureshamallaiah intelligenthandwrittenrecognitionusinghybridcnnarchitecturesbasedsvmclassifierwithdropout