Analysis of 'goat' within user population of an offline signature biometrics

Intra - user variability inherent in human handwritten signatures remains one of the main challenges for a robust biometrics signature based authentication system. The existence of a subset of users classified as 'goats' in the Doddington's menagerie whose signature samples are highly...

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Main Authors: Sharifah M.S.A., Asma S., Masyura A.F., Rina M.A.
Other Authors: 36680916600
Format: Conference Paper
Published: 2023
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spelling my.uniten.dspace-296252024-04-17T10:16:00Z Analysis of 'goat' within user population of an offline signature biometrics Sharifah M.S.A. Asma S. Masyura A.F. Rina M.A. 36680916600 24722081200 35193815200 24721188400 Doddignton's menagerie Hidden markov model (HMM) Z-Score analysis Hidden Markov models Information science Population statistics Signal processing Authentication systems Biometric systems Centre of gravity Computational approach Doddignton's menagerie False rejection rate Handwritten signatures Hidden markov model (HMM) Input sample Local feature Offline signatures Prime-focus Reference models Signature images System accuracy Z-score analysis Biometrics Intra - user variability inherent in human handwritten signatures remains one of the main challenges for a robust biometrics signature based authentication system. The existence of a subset of users classified as 'goats' in the Doddington's menagerie whose signature samples are highly inconsistent and often rejected by the biometrics system may degrade the system accuracy by contributing a large portion to the False Rejection Rate (FRR). However, little is known on the level of the intra user variability and percentage of the 'goats' in the overall user population, which in turns remains the prime focus of this paper. An HMM-based computational approach is used to build the reference model and verifY the authenticity of an input sample based on a series of a local feature extracted from signature images. Here, four different goat populations are identified for offline signature biometric system which is based on four different local features ( namely pixel density, centre of gravity, angle, and distance) and are analysed for their co-relationship. The overall analysis is carried out on Sigma database which is compiled to reflect the signatures of a target user population. � 2010 IEEE. Final 2023-12-28T07:17:47Z 2023-12-28T07:17:47Z 2010 Conference Paper 10.1109/ISSPA.2010.5605415 2-s2.0-78650276249 https://www.scopus.com/inward/record.uri?eid=2-s2.0-78650276249&doi=10.1109%2fISSPA.2010.5605415&partnerID=40&md5=24f638ca9ca035f88774e99a8a3f6b08 https://irepository.uniten.edu.my/handle/123456789/29625 5605415 765 769 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 Doddignton's menagerie
Hidden markov model (HMM)
Z-Score analysis
Hidden Markov models
Information science
Population statistics
Signal processing
Authentication systems
Biometric systems
Centre of gravity
Computational approach
Doddignton's menagerie
False rejection rate
Handwritten signatures
Hidden markov model (HMM)
Input sample
Local feature
Offline signatures
Prime-focus
Reference models
Signature images
System accuracy
Z-score analysis
Biometrics
spellingShingle Doddignton's menagerie
Hidden markov model (HMM)
Z-Score analysis
Hidden Markov models
Information science
Population statistics
Signal processing
Authentication systems
Biometric systems
Centre of gravity
Computational approach
Doddignton's menagerie
False rejection rate
Handwritten signatures
Hidden markov model (HMM)
Input sample
Local feature
Offline signatures
Prime-focus
Reference models
Signature images
System accuracy
Z-score analysis
Biometrics
Sharifah M.S.A.
Asma S.
Masyura A.F.
Rina M.A.
Analysis of 'goat' within user population of an offline signature biometrics
description Intra - user variability inherent in human handwritten signatures remains one of the main challenges for a robust biometrics signature based authentication system. The existence of a subset of users classified as 'goats' in the Doddington's menagerie whose signature samples are highly inconsistent and often rejected by the biometrics system may degrade the system accuracy by contributing a large portion to the False Rejection Rate (FRR). However, little is known on the level of the intra user variability and percentage of the 'goats' in the overall user population, which in turns remains the prime focus of this paper. An HMM-based computational approach is used to build the reference model and verifY the authenticity of an input sample based on a series of a local feature extracted from signature images. Here, four different goat populations are identified for offline signature biometric system which is based on four different local features ( namely pixel density, centre of gravity, angle, and distance) and are analysed for their co-relationship. The overall analysis is carried out on Sigma database which is compiled to reflect the signatures of a target user population. � 2010 IEEE.
author2 36680916600
author_facet 36680916600
Sharifah M.S.A.
Asma S.
Masyura A.F.
Rina M.A.
format Conference Paper
author Sharifah M.S.A.
Asma S.
Masyura A.F.
Rina M.A.
author_sort Sharifah M.S.A.
title Analysis of 'goat' within user population of an offline signature biometrics
title_short Analysis of 'goat' within user population of an offline signature biometrics
title_full Analysis of 'goat' within user population of an offline signature biometrics
title_fullStr Analysis of 'goat' within user population of an offline signature biometrics
title_full_unstemmed Analysis of 'goat' within user population of an offline signature biometrics
title_sort analysis of 'goat' within user population of an offline signature biometrics
publishDate 2023
_version_ 1806426116384096256
score 13.214268