FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics

Multimodal biometric systems are preferred as a defense compared to unimodal systems. This study introduces an open access multimodal vein database named FYO with each letter dedicated to each author's name. The database involves three biometric traits; palm vein, dorsal vein and wrist vein of...

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Main Authors: Onsen Toygar, Felix O. Babalola, Yiltan Bitirim
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9082589/
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spelling doaj-7bdce4b3149b4c29910c7176560e48f42021-03-30T01:44:48ZengIEEEIEEE Access2169-35362020-01-018824618247010.1109/ACCESS.2020.29914759082589FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist BiometricsOnsen Toygar0https://orcid.org/0000-0001-7402-9058Felix O. Babalola1Yiltan Bitirim2https://orcid.org/0000-0002-1780-2806Computer Engineering Department, Faculty of Engineering, Eastern Mediterranean University, Famagusta, TurkeyComputer Engineering Department, Faculty of Engineering, Eastern Mediterranean University, Famagusta, TurkeyComputer Engineering Department, Faculty of Engineering, Eastern Mediterranean University, Famagusta, TurkeyMultimodal biometric systems are preferred as a defense compared to unimodal systems. This study introduces an open access multimodal vein database named FYO with each letter dedicated to each author's name. The database involves three biometric traits; palm vein, dorsal vein and wrist vein of the same individuals, to explore and enhance research in the area of using these traits to create a spoof-proof multimodal authentication system. The vein images of FYO are acquired using medical vein finder in a controlled environment. Comparisons are performed to show the differences with the existing well known databases and the state-of-the-art recognition algorithms. Hand-crafted feature extractors such as Binarized Statistical Image Features (BSIF), Gabor filter and Histogram of Oriented Gradients (HOG) are applied to show the viability of the vein datasets. Additionally, a deep learning based Convolutional Neural Networks (CNN) architecture is proposed with two models using decision-level fusion of palmar, dorsal and wrist biometric traits on vein images. Unimodal systems, multimodal systems and the proposed architecture are tested on several vein datasets including palmar, dorsal and wrist vein images. Experimental results based on accuracy and computation time on our FYO datasets showed competitive output with that of other databases such as Tongji Contactless Palm Vein database, VERA, PUT, Badawi and Bosphorus hand vein databases. Moreover, the proposed CNN architecture on three vein biometric traits show superior performance compared to hand-crafted methods.https://ieeexplore.ieee.org/document/9082589/Data fusiondeep learninghand-crafted featuresvein recognitionmultimodal biometrics
collection DOAJ
language English
format Article
sources DOAJ
author Onsen Toygar
Felix O. Babalola
Yiltan Bitirim
spellingShingle Onsen Toygar
Felix O. Babalola
Yiltan Bitirim
FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics
IEEE Access
Data fusion
deep learning
hand-crafted features
vein recognition
multimodal biometrics
author_facet Onsen Toygar
Felix O. Babalola
Yiltan Bitirim
author_sort Onsen Toygar
title FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics
title_short FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics
title_full FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics
title_fullStr FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics
title_full_unstemmed FYO: A Novel Multimodal Vein Database With Palmar, Dorsal and Wrist Biometrics
title_sort fyo: a novel multimodal vein database with palmar, dorsal and wrist biometrics
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Multimodal biometric systems are preferred as a defense compared to unimodal systems. This study introduces an open access multimodal vein database named FYO with each letter dedicated to each author's name. The database involves three biometric traits; palm vein, dorsal vein and wrist vein of the same individuals, to explore and enhance research in the area of using these traits to create a spoof-proof multimodal authentication system. The vein images of FYO are acquired using medical vein finder in a controlled environment. Comparisons are performed to show the differences with the existing well known databases and the state-of-the-art recognition algorithms. Hand-crafted feature extractors such as Binarized Statistical Image Features (BSIF), Gabor filter and Histogram of Oriented Gradients (HOG) are applied to show the viability of the vein datasets. Additionally, a deep learning based Convolutional Neural Networks (CNN) architecture is proposed with two models using decision-level fusion of palmar, dorsal and wrist biometric traits on vein images. Unimodal systems, multimodal systems and the proposed architecture are tested on several vein datasets including palmar, dorsal and wrist vein images. Experimental results based on accuracy and computation time on our FYO datasets showed competitive output with that of other databases such as Tongji Contactless Palm Vein database, VERA, PUT, Badawi and Bosphorus hand vein databases. Moreover, the proposed CNN architecture on three vein biometric traits show superior performance compared to hand-crafted methods.
topic Data fusion
deep learning
hand-crafted features
vein recognition
multimodal biometrics
url https://ieeexplore.ieee.org/document/9082589/
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AT felixobabalola fyoanovelmultimodalveindatabasewithpalmardorsalandwristbiometrics
AT yiltanbitirim fyoanovelmultimodalveindatabasewithpalmardorsalandwristbiometrics
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