A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system
This paper presents an automatic off-line signature verification system that is built using several statistical techniques .The learning phase involves the use of Hidden Markov Modelling (HMM) technique to build a reference model for each local feature extracted from a set of signature samples of a...
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my.uniten.dspace-296742023-12-28T15:30:44Z A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system Ahmad S.M.S. Shakil A. Faudzi M.A. Anwar R.Md. Balbed M.A.M. 24721182400 24722081200 35193815200 24721188400 24721384800 Bayesian inference Hidden Markov Model (HMM) Computer science Hidden Markov models Inference engines Probability density function Bayesian inference Final decision Hidden Markov Model (HMM) Learning phase Local feature Log likelihood Match score Off-line signature verification Reference models Second layer Statistical modelling Statistical techniques Three-layer Z-score analysis Bayesian networks This paper presents an automatic off-line signature verification system that is built using several statistical techniques .The learning phase involves the use of Hidden Markov Modelling (HMM) technique to build a reference model for each local feature extracted from a set of signature samples of a particular user. The verification phase uses three layers of statistical techniques.. The first layer involves the computation of the HMM-based log-likelihood probability match score. The second layer performs the mapping of this score into soft boundary ranges of acceptance or rejection through the use of z-score analysis and normalization function. Next Bayesian inference technique is used to arrive at the final decision of accepting or rejecting a given signature sample. � 2008 IEEE. Final 2023-12-28T07:30:44Z 2023-12-28T07:30:44Z 2009 Conference paper 10.1109/CSIE.2009.973 2-s2.0-71049169291 https://www.scopus.com/inward/record.uri?eid=2-s2.0-71049169291&doi=10.1109%2fCSIE.2009.973&partnerID=40&md5=7fc2316377f5f6eae42c4feb1da1899a https://irepository.uniten.edu.my/handle/123456789/29674 6 5170651 6 11 Scopus |
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Bayesian inference Hidden Markov Model (HMM) Computer science Hidden Markov models Inference engines Probability density function Bayesian inference Final decision Hidden Markov Model (HMM) Learning phase Local feature Log likelihood Match score Off-line signature verification Reference models Second layer Statistical modelling Statistical techniques Three-layer Z-score analysis Bayesian networks |
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Bayesian inference Hidden Markov Model (HMM) Computer science Hidden Markov models Inference engines Probability density function Bayesian inference Final decision Hidden Markov Model (HMM) Learning phase Local feature Log likelihood Match score Off-line signature verification Reference models Second layer Statistical modelling Statistical techniques Three-layer Z-score analysis Bayesian networks Ahmad S.M.S. Shakil A. Faudzi M.A. Anwar R.Md. Balbed M.A.M. A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
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This paper presents an automatic off-line signature verification system that is built using several statistical techniques .The learning phase involves the use of Hidden Markov Modelling (HMM) technique to build a reference model for each local feature extracted from a set of signature samples of a particular user. The verification phase uses three layers of statistical techniques.. The first layer involves the computation of the HMM-based log-likelihood probability match score. The second layer performs the mapping of this score into soft boundary ranges of acceptance or rejection through the use of z-score analysis and normalization function. Next Bayesian inference technique is used to arrive at the final decision of accepting or rejecting a given signature sample. � 2008 IEEE. |
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24721182400 |
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24721182400 Ahmad S.M.S. Shakil A. Faudzi M.A. Anwar R.Md. Balbed M.A.M. |
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Conference paper |
author |
Ahmad S.M.S. Shakil A. Faudzi M.A. Anwar R.Md. Balbed M.A.M. |
author_sort |
Ahmad S.M.S. |
title |
A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
title_short |
A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
title_full |
A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
title_fullStr |
A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
title_full_unstemmed |
A hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
title_sort |
hybrid statistical modelling, normalization and inferencing techniques of an off-line signature verification system |
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2023 |
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1806424560553164800 |