IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Human Health Diagnosis System Based on Iris Features

Human Health Diagnosis System Based on Iris Features
View Sample PDF
Author(s): Poonguzhali N (Pondicherry Engineering College, India), M. Ezhilarasan (Pondicherry Engineering College, India), R. Hariharan (Pondicherry Engineering College, India)and N. Praveen Devaraajan (Pondicherry Engineering College, India)
Copyright: 2017
Pages: 28
Source title: Recent Advances in Applied Thermal Imaging for Industrial Applications
Source Author(s)/Editor(s): V. Santhi (VIT University, India)
DOI: 10.4018/978-1-5225-2423-6.ch005

Purchase

View Human Health Diagnosis System Based on Iris Features on the publisher's website for pricing and purchasing information.

Abstract

Iris feature has been used in authentication systems in many real time applications and is proved to provide high accuracy. Apart from authentication iris features can also be used for detecting pathological changes in human body and diagnose human health. The present study analyses the relationship between human iris anatomy and their health, as it is proved that changes in human health condition reflects the iris. Basically, in authentication system iris texture features are used for identification, in the proposed work iris texture and geometric features can also be deployed in diagnosing human health. The texture features present in the human iris are extracted using the mathematical statistical measure which is used to specify the characteristics of the texture of an image using gray-level co-occurrence matrix. The iris and pupil are extracted and correlated to the compactness features of the circle. Based on the comparison the system enables in prediction of abnormalities in the iris texture and identifies the affected person.

Related Content

Rastislav Róka. © 2020. 39 pages.
Amin Ebrahimzadeh, Martin Maier. © 2020. 29 pages.
Faisal Khan Khaskheli, Fahim Aziz Umrani, Attiya Baqai. © 2020. 31 pages.
Banibrata Bag, Akinchan Das, Aniruddha Chandra, Rastislav Róka. © 2020. 57 pages.
Muhammad Ishaq, Mohammad Kaleem, Numan Kifayat. © 2020. 43 pages.
Kim Ho Yeap, Kazuhiro Hirasawa, Humaira Nisar. © 2020. 32 pages.
Kim Ho Yeap, Kazuhiro Hirasawa. © 2020. 23 pages.
Body Bottom