Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics

In the proposed study, we examined a multimodal biometric system having the utmost capability against spoof attacks. An enhanced anti-spoof capability is successfully demonstrated by choosing hand-related intrinsic modalities. In the proposed system, pulse response, hand geometry, and finger–vein bi...

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Main Authors: Syed Aqeel Haider, Yawar Rehman, S. M. Usman Ali
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/9/11/1916
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spelling doaj-9d8c8a7e85cf49979a94b1af981e9ca42020-11-25T04:07:52ZengMDPI AGElectronics2079-92922020-11-0191916191610.3390/electronics9111916Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand BiometricsSyed Aqeel Haider0Yawar Rehman1S. M. Usman Ali2Department of Computer & Information Systems Engineering, Faculty of Electrical & Computer Engineering, NEDUET, Karachi 75270, PakistanDepartment of Electronic Engineering, Faculty of Electrical & Computer Engineering, NEDUET, Karachi 75270, PakistanDepartment of Electronic Engineering, Faculty of Electrical & Computer Engineering, NEDUET, Karachi 75270, PakistanIn the proposed study, we examined a multimodal biometric system having the utmost capability against spoof attacks. An enhanced anti-spoof capability is successfully demonstrated by choosing hand-related intrinsic modalities. In the proposed system, pulse response, hand geometry, and finger–vein biometrics are the three modalities of focus. The three modalities are combined using a fuzzy rule-based system that provides an accuracy of 92% on near-infrared (NIR) images. Besides that, we propose a new NIR hand images dataset containing a total of 111,000 images. In this research, hand geometry is treated as an intrinsic biometric modality by employing near-infrared imaging for human hands to locate the interphalangeal joints of human fingers. The L2 norm is calculated using the centroid of four pixel clusters obtained from the finger joint locations. This method produced an accuracy of 86% on the new NIR image dataset. We also propose finger–vein biometric identification using convolutional neural networks (CNNs). The CNN provided 90% accuracy on the new NIR image dataset. Moreover, we propose a robust system known as the pulse response biometric against spoof attacks involving fake or artificial human hands. The pulse response system identifies a live human body by applying a specific frequency pulse on the human hand. About 99% of the frequency response samples obtained from the human and non-human subjects were correctly classified by the pulse response biometric. Finally, we propose to combine all three modalities using the fuzzy inference system on the confidence score level, yielding 92% accuracy on the new near-infrared hand images dataset.https://www.mdpi.com/2079-9292/9/11/1916convolutional neural networkintrinsic modalitiesmultimodal biometric systemthe fuzzy inference system
collection DOAJ
language English
format Article
sources DOAJ
author Syed Aqeel Haider
Yawar Rehman
S. M. Usman Ali
spellingShingle Syed Aqeel Haider
Yawar Rehman
S. M. Usman Ali
Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics
Electronics
convolutional neural network
intrinsic modalities
multimodal biometric system
the fuzzy inference system
author_facet Syed Aqeel Haider
Yawar Rehman
S. M. Usman Ali
author_sort Syed Aqeel Haider
title Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics
title_short Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics
title_full Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics
title_fullStr Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics
title_full_unstemmed Enhanced Multimodal Biometric Recognition Based upon Intrinsic Hand Biometrics
title_sort enhanced multimodal biometric recognition based upon intrinsic hand biometrics
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2020-11-01
description In the proposed study, we examined a multimodal biometric system having the utmost capability against spoof attacks. An enhanced anti-spoof capability is successfully demonstrated by choosing hand-related intrinsic modalities. In the proposed system, pulse response, hand geometry, and finger–vein biometrics are the three modalities of focus. The three modalities are combined using a fuzzy rule-based system that provides an accuracy of 92% on near-infrared (NIR) images. Besides that, we propose a new NIR hand images dataset containing a total of 111,000 images. In this research, hand geometry is treated as an intrinsic biometric modality by employing near-infrared imaging for human hands to locate the interphalangeal joints of human fingers. The L2 norm is calculated using the centroid of four pixel clusters obtained from the finger joint locations. This method produced an accuracy of 86% on the new NIR image dataset. We also propose finger–vein biometric identification using convolutional neural networks (CNNs). The CNN provided 90% accuracy on the new NIR image dataset. Moreover, we propose a robust system known as the pulse response biometric against spoof attacks involving fake or artificial human hands. The pulse response system identifies a live human body by applying a specific frequency pulse on the human hand. About 99% of the frequency response samples obtained from the human and non-human subjects were correctly classified by the pulse response biometric. Finally, we propose to combine all three modalities using the fuzzy inference system on the confidence score level, yielding 92% accuracy on the new near-infrared hand images dataset.
topic convolutional neural network
intrinsic modalities
multimodal biometric system
the fuzzy inference system
url https://www.mdpi.com/2079-9292/9/11/1916
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