Optimal Features Subset Selection and Classification for Iris Recognition

<p>Abstract</p> <p>The selection of the optimal features subset and the classification have become an important issue in the field of iris recognition. We propose a feature selection scheme based on the multiobjectives genetic algorithm (MOGA) to improve the recognition accuracy an...

Full description

Bibliographic Details
Main Authors: Roy Kaushik, Bhattacharya Prabir
Format: Article
Language:English
Published: SpringerOpen 2008-01-01
Series:EURASIP Journal on Image and Video Processing
Online Access:http://jivp.eurasipjournals.com/content/2008/743103
id doaj-cb779c5c34df435796cc35927ee2d89c
record_format Article
spelling doaj-cb779c5c34df435796cc35927ee2d89c2020-11-24T21:06:02ZengSpringerOpenEURASIP Journal on Image and Video Processing1687-51761687-52812008-01-0120081743103Optimal Features Subset Selection and Classification for Iris RecognitionRoy KaushikBhattacharya Prabir<p>Abstract</p> <p>The selection of the optimal features subset and the classification have become an important issue in the field of iris recognition. We propose a feature selection scheme based on the multiobjectives genetic algorithm (MOGA) to improve the recognition accuracy and asymmetrical support vector machine for the classification of iris patterns. We also suggest a segmentation scheme based on the collarette area localization. The deterministic feature sequence is extracted from the iris images using the 1D log-Gabor wavelet technique, and the extracted feature sequence is used to train the support vector machine (SVM). The MOGA is applied to optimize the features sequence and to increase the overall performance based on the matching accuracy of the SVM. The parameters of SVM are optimized to improve the overall generalization performance, and the traditional SVM is modified to an asymmetrical SVM to treat the false accept and false reject cases differently and to handle the unbalanced data of a specific class with respect to the other classes. Our experimental results indicate that the performance of SVM as a classifier is better than the performance of the classifiers based on the feedforward neural network, the <it>k</it>-nearest neighbor, and the Hamming and the Mahalanobis distances. The proposed technique is computationally effective with recognition rates of 99.81% and 96.43% on CASIA and ICE datasets, respectively.</p>http://jivp.eurasipjournals.com/content/2008/743103
collection DOAJ
language English
format Article
sources DOAJ
author Roy Kaushik
Bhattacharya Prabir
spellingShingle Roy Kaushik
Bhattacharya Prabir
Optimal Features Subset Selection and Classification for Iris Recognition
EURASIP Journal on Image and Video Processing
author_facet Roy Kaushik
Bhattacharya Prabir
author_sort Roy Kaushik
title Optimal Features Subset Selection and Classification for Iris Recognition
title_short Optimal Features Subset Selection and Classification for Iris Recognition
title_full Optimal Features Subset Selection and Classification for Iris Recognition
title_fullStr Optimal Features Subset Selection and Classification for Iris Recognition
title_full_unstemmed Optimal Features Subset Selection and Classification for Iris Recognition
title_sort optimal features subset selection and classification for iris recognition
publisher SpringerOpen
series EURASIP Journal on Image and Video Processing
issn 1687-5176
1687-5281
publishDate 2008-01-01
description <p>Abstract</p> <p>The selection of the optimal features subset and the classification have become an important issue in the field of iris recognition. We propose a feature selection scheme based on the multiobjectives genetic algorithm (MOGA) to improve the recognition accuracy and asymmetrical support vector machine for the classification of iris patterns. We also suggest a segmentation scheme based on the collarette area localization. The deterministic feature sequence is extracted from the iris images using the 1D log-Gabor wavelet technique, and the extracted feature sequence is used to train the support vector machine (SVM). The MOGA is applied to optimize the features sequence and to increase the overall performance based on the matching accuracy of the SVM. The parameters of SVM are optimized to improve the overall generalization performance, and the traditional SVM is modified to an asymmetrical SVM to treat the false accept and false reject cases differently and to handle the unbalanced data of a specific class with respect to the other classes. Our experimental results indicate that the performance of SVM as a classifier is better than the performance of the classifiers based on the feedforward neural network, the <it>k</it>-nearest neighbor, and the Hamming and the Mahalanobis distances. The proposed technique is computationally effective with recognition rates of 99.81% and 96.43% on CASIA and ICE datasets, respectively.</p>
url http://jivp.eurasipjournals.com/content/2008/743103
work_keys_str_mv AT roykaushik optimalfeaturessubsetselectionandclassificationforirisrecognition
AT bhattacharyaprabir optimalfeaturessubsetselectionandclassificationforirisrecognition
_version_ 1716766955427332096