Evaluation of the Parameters Involved in the Iris Recognition System

Biometric recognition is an automatic identification method which is based on unique features or characteristics possessed by human beings and Iris recognition has proved itself as one of the most reliable biometric methods available owing to the accuracy provided by its unique epigenetic patterns....

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Main Author: Minakshi Boruah
Format: Article
Language:English
Published: Science and Research Branch,Islamic Azad University 2018-11-01
Series:Journal of Advances in Computer Engineering and Technology
Subjects:
Online Access:http://jacet.srbiau.ac.ir/article_13244_ec4e1a0ad217bc5301be4c9abd8beed2.pdf
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spelling doaj-dd8c1d8a1a28459f882ca8855e863a742020-11-25T00:05:02ZengScience and Research Branch,Islamic Azad UniversityJournal of Advances in Computer Engineering and Technology2423-41922423-42062018-11-014421922813244Evaluation of the Parameters Involved in the Iris Recognition SystemMinakshi Boruah0M. Tech. Research Scholar, Department of Computer Science and Engineering, Dr. B R Ambedkar National Institute of Technology, Jalandhar, IndiaBiometric recognition is an automatic identification method which is based on unique features or characteristics possessed by human beings and Iris recognition has proved itself as one of the most reliable biometric methods available owing to the accuracy provided by its unique epigenetic patterns. The main steps in any iris recognition system are image acquisition, iris segmentation, iris normalization, feature extraction and features matching. EER (Equal Error Rate) metric is considered the best metric for evaluating an iris recognition system.<br />In this paper, different parameters viz. the scaling factor to speed up the CHT (Circle Hough Transform), the sigma for blurring with Gaussian filter while detecting edges, the radius for weak edge suppression for the edge detector used during segmentation and the gamma correction factor for gamma correction; the central wavelength for convolving with Log-Gabor filter and the sigma upon central frequency during feature extraction have been thoroughly tested and evaluated over the CASIA-IrisV1 database to get an improved parameter set. This paper demonstrates how the parameters must be set to have an optimized Iris Recognition System.http://jacet.srbiau.ac.ir/article_13244_ec4e1a0ad217bc5301be4c9abd8beed2.pdfBiometric RecognitionCanny Edge DetectorCircle Hough TransformEqual Error RateGamma Correction
collection DOAJ
language English
format Article
sources DOAJ
author Minakshi Boruah
spellingShingle Minakshi Boruah
Evaluation of the Parameters Involved in the Iris Recognition System
Journal of Advances in Computer Engineering and Technology
Biometric Recognition
Canny Edge Detector
Circle Hough Transform
Equal Error Rate
Gamma Correction
author_facet Minakshi Boruah
author_sort Minakshi Boruah
title Evaluation of the Parameters Involved in the Iris Recognition System
title_short Evaluation of the Parameters Involved in the Iris Recognition System
title_full Evaluation of the Parameters Involved in the Iris Recognition System
title_fullStr Evaluation of the Parameters Involved in the Iris Recognition System
title_full_unstemmed Evaluation of the Parameters Involved in the Iris Recognition System
title_sort evaluation of the parameters involved in the iris recognition system
publisher Science and Research Branch,Islamic Azad University
series Journal of Advances in Computer Engineering and Technology
issn 2423-4192
2423-4206
publishDate 2018-11-01
description Biometric recognition is an automatic identification method which is based on unique features or characteristics possessed by human beings and Iris recognition has proved itself as one of the most reliable biometric methods available owing to the accuracy provided by its unique epigenetic patterns. The main steps in any iris recognition system are image acquisition, iris segmentation, iris normalization, feature extraction and features matching. EER (Equal Error Rate) metric is considered the best metric for evaluating an iris recognition system.<br />In this paper, different parameters viz. the scaling factor to speed up the CHT (Circle Hough Transform), the sigma for blurring with Gaussian filter while detecting edges, the radius for weak edge suppression for the edge detector used during segmentation and the gamma correction factor for gamma correction; the central wavelength for convolving with Log-Gabor filter and the sigma upon central frequency during feature extraction have been thoroughly tested and evaluated over the CASIA-IrisV1 database to get an improved parameter set. This paper demonstrates how the parameters must be set to have an optimized Iris Recognition System.
topic Biometric Recognition
Canny Edge Detector
Circle Hough Transform
Equal Error Rate
Gamma Correction
url http://jacet.srbiau.ac.ir/article_13244_ec4e1a0ad217bc5301be4c9abd8beed2.pdf
work_keys_str_mv AT minakshiboruah evaluationoftheparametersinvolvedintheirisrecognitionsystem
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