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2016 | OriginalPaper | Chapter

An Amalgamated Strategy for Iris Recognition Employing Neural Network and Hamming Distance

Author : Madhulika Pandey

Published in: Information Systems Design and Intelligent Applications

Publisher: Springer India

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Abstract

Biometric comprises of strategies for particularly perceiving people based upon one or more inherent physical or behavioral characteristics. Iris recognition system is one of the fundamental techniques that are used in biometrics for access control, identification system. It is essentially a pattern distinguishment technique that utilizes iris structures and patterns that are measurably novel, with the goal of user identification. It is relentless for the term of the life and serves as a living visa or a code word that one need not remember and recall however is present always. This study concentrates on the novel approach that emphasizes on the characterization methodology of the iris designs by utilizing a collaborative methodology of neural networks and hamming distance. The proposed system additionally uses the support vector machine with the end goal of grouping of the iris as the left iris design or as the right iris of a person.

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Metadata
Title
An Amalgamated Strategy for Iris Recognition Employing Neural Network and Hamming Distance
Author
Madhulika Pandey
Copyright Year
2016
Publisher
Springer India
DOI
https://doi.org/10.1007/978-81-322-2752-6_73

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