Lexicon-based word recognition using support vector machine and Hidden Markov Model

Hybrid of Neural Network (NN) and Hidden Markov Model (HMM) has been popular in word recognition, taking advantage of NN discriminative property and HMM representational capability. However, NN does not guarantee good generalization due to Empirical Risk minimization (ERM) principle that it uses. In...

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Main Authors: Ahmad A.R., Viard-Gaudin C., Khalid M.
Other Authors: 35589598800
Format: Conference paper
Published: 2023
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spelling my.uniten.dspace-306872023-12-29T15:51:21Z Lexicon-based word recognition using support vector machine and Hidden Markov Model Ahmad A.R. Viard-Gaudin C. Khalid M. 35589598800 9133978000 7101640051 Character recognition Hidden Markov models Hybrid systems Image retrieval Neural networks Optimization Vocabulary control Character database Empirical risk minimization Practical issues Simultaneous optimization Structural risk minimization principle Word recognition Support vector machines Hybrid of Neural Network (NN) and Hidden Markov Model (HMM) has been popular in word recognition, taking advantage of NN discriminative property and HMM representational capability. However, NN does not guarantee good generalization due to Empirical Risk minimization (ERM) principle that it uses. In our work, we focus on online word recognition using the support vector machine (SVM) for character recognition. SVM's use of structural risk minimization (SRM) principle has allowed simultaneous optimization of representational and discriminative capability of the character recognizer. We evaluated SVM in isolated character recognition environment using IRONOFF and UNIPEN character database. We then demonstrate the practical issues in using SVM within a hybrid setting with HMM for word recognition by testing the hybrid system on the IRONOFF word database and obtained commendable results. � 2009 IEEE. Final 2023-12-29T07:51:21Z 2023-12-29T07:51:21Z 2009 Conference paper 10.1109/ICDAR.2009.248 2-s2.0-71249127581 https://www.scopus.com/inward/record.uri?eid=2-s2.0-71249127581&doi=10.1109%2fICDAR.2009.248&partnerID=40&md5=fcef44f1bfc15cd8b376e113ca7b3288 https://irepository.uniten.edu.my/handle/123456789/30687 5277749 161 165 Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Character recognition
Hidden Markov models
Hybrid systems
Image retrieval
Neural networks
Optimization
Vocabulary control
Character database
Empirical risk minimization
Practical issues
Simultaneous optimization
Structural risk minimization principle
Word recognition
Support vector machines
spellingShingle Character recognition
Hidden Markov models
Hybrid systems
Image retrieval
Neural networks
Optimization
Vocabulary control
Character database
Empirical risk minimization
Practical issues
Simultaneous optimization
Structural risk minimization principle
Word recognition
Support vector machines
Ahmad A.R.
Viard-Gaudin C.
Khalid M.
Lexicon-based word recognition using support vector machine and Hidden Markov Model
description Hybrid of Neural Network (NN) and Hidden Markov Model (HMM) has been popular in word recognition, taking advantage of NN discriminative property and HMM representational capability. However, NN does not guarantee good generalization due to Empirical Risk minimization (ERM) principle that it uses. In our work, we focus on online word recognition using the support vector machine (SVM) for character recognition. SVM's use of structural risk minimization (SRM) principle has allowed simultaneous optimization of representational and discriminative capability of the character recognizer. We evaluated SVM in isolated character recognition environment using IRONOFF and UNIPEN character database. We then demonstrate the practical issues in using SVM within a hybrid setting with HMM for word recognition by testing the hybrid system on the IRONOFF word database and obtained commendable results. � 2009 IEEE.
author2 35589598800
author_facet 35589598800
Ahmad A.R.
Viard-Gaudin C.
Khalid M.
format Conference paper
author Ahmad A.R.
Viard-Gaudin C.
Khalid M.
author_sort Ahmad A.R.
title Lexicon-based word recognition using support vector machine and Hidden Markov Model
title_short Lexicon-based word recognition using support vector machine and Hidden Markov Model
title_full Lexicon-based word recognition using support vector machine and Hidden Markov Model
title_fullStr Lexicon-based word recognition using support vector machine and Hidden Markov Model
title_full_unstemmed Lexicon-based word recognition using support vector machine and Hidden Markov Model
title_sort lexicon-based word recognition using support vector machine and hidden markov model
publishDate 2023
_version_ 1806428058359431168
score 13.214268