FINGER KNUCKLE RECOGNITION WITH PCANET

This paper presents finger knuckle recognition system using feature extraction method, Principal Component Analysis Network (PCANet). Finger knuckle is one of the most secure traits in biometric system and convenient for personal recognition. In this work, a very simple deep learning network, PCANet...

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Published in:IET Conference Proceedings
Main Author: Mukahar N.
Format: Conference paper
Language:English
Published: Institution of Engineering and Technology 2022
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85174648057&doi=10.1049%2ficp.2022.2634&partnerID=40&md5=cf1bc27d52636f9a70709f88dd069475
id 2-s2.0-85174648057
spelling 2-s2.0-85174648057
Mukahar N.
FINGER KNUCKLE RECOGNITION WITH PCANET
2022
IET Conference Proceedings
2022
22
10.1049/icp.2022.2634
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85174648057&doi=10.1049%2ficp.2022.2634&partnerID=40&md5=cf1bc27d52636f9a70709f88dd069475
This paper presents finger knuckle recognition system using feature extraction method, Principal Component Analysis Network (PCANet). Finger knuckle is one of the most secure traits in biometric system and convenient for personal recognition. In this work, a very simple deep learning network, PCANet is employed to extract discriminative features from the original grayscale of finger knuckle image. PCANet utilises whole input knuckle image to generate the filter and images are convolved with the filter bank. The final feature vectors generated from the output of the last convolutional layer are used for the classification. Experiments were conducted on finger knuckles images from two databases (USM and THU-FDT2) to verify the performance of finger knuckle recognition system with PCANet as feature extraction method. Experimental results on two databases exhibit the robustness and superiority of the PCANet method over the other feature extraction methods (PCA, 2DPCA, Pooling raw). The findings also show that the number of filters in PCANet affects the classification accuracy of the finger knuckle recognition system. Accuracy increases as the number of filters increase. The classification accuracies using PCANet are 99.33% and 100% for finger knuckle images USM database and THU-FDT2, respectively. © 2022 IET Conference Proceedings. All rights reserved.
Institution of Engineering and Technology
27324494
English
Conference paper

author Mukahar N.
spellingShingle Mukahar N.
FINGER KNUCKLE RECOGNITION WITH PCANET
author_facet Mukahar N.
author_sort Mukahar N.
title FINGER KNUCKLE RECOGNITION WITH PCANET
title_short FINGER KNUCKLE RECOGNITION WITH PCANET
title_full FINGER KNUCKLE RECOGNITION WITH PCANET
title_fullStr FINGER KNUCKLE RECOGNITION WITH PCANET
title_full_unstemmed FINGER KNUCKLE RECOGNITION WITH PCANET
title_sort FINGER KNUCKLE RECOGNITION WITH PCANET
publishDate 2022
container_title IET Conference Proceedings
container_volume 2022
container_issue 22
doi_str_mv 10.1049/icp.2022.2634
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85174648057&doi=10.1049%2ficp.2022.2634&partnerID=40&md5=cf1bc27d52636f9a70709f88dd069475
description This paper presents finger knuckle recognition system using feature extraction method, Principal Component Analysis Network (PCANet). Finger knuckle is one of the most secure traits in biometric system and convenient for personal recognition. In this work, a very simple deep learning network, PCANet is employed to extract discriminative features from the original grayscale of finger knuckle image. PCANet utilises whole input knuckle image to generate the filter and images are convolved with the filter bank. The final feature vectors generated from the output of the last convolutional layer are used for the classification. Experiments were conducted on finger knuckles images from two databases (USM and THU-FDT2) to verify the performance of finger knuckle recognition system with PCANet as feature extraction method. Experimental results on two databases exhibit the robustness and superiority of the PCANet method over the other feature extraction methods (PCA, 2DPCA, Pooling raw). The findings also show that the number of filters in PCANet affects the classification accuracy of the finger knuckle recognition system. Accuracy increases as the number of filters increase. The classification accuracies using PCANet are 99.33% and 100% for finger knuckle images USM database and THU-FDT2, respectively. © 2022 IET Conference Proceedings. All rights reserved.
publisher Institution of Engineering and Technology
issn 27324494
language English
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