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IRIS BIOMETRICS

Iris biometrics

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Page 1: Iris     biometrics

IRIS BIOMETRICS

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Retina•The retina is a thin layer of cells at the back of the eyeball.

•It is the part of the eye which converts light into nervous signals.

•The unique structure of the blood vessels in the retina has been used for biometric identification.

•Retina recognition technology captures and analyzes the patterns of blood vessels on the thin nerve on the back of the eyeball that processes light entering through the pupil. Retinal patterns are highly distinctive traits.

•Every eye has its own totally unique pattern of blood vessels; even the eyes of identical twins are distinct. Although each pattern normally remains stable over a person’s lifetime, it can be affected by disease such as glaucoma, diabetes, high blood pressure, and autoimmune deficiency syndrome.

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IRISIris is the area of the eye where the pigmented or colored circle, usually brown, blue, rings the dark pupil of the eye.

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Normal Eye Example of Irish

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Example of 10 Different People Iris

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Iris Recognition systemsThe iris-scan process begins with a photograph. A specialized camera, typically very close to the subject, not more than three feet, uses an infrared imager to illuminate the eye and capture a very high-resolution photograph. This process takes 1 to 2 seconds.

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Creating an Iris code•The picture of eye first is processed by software that localizes the inner and outer boundaries of the iris.

•And it is encoded by image-processing technologies.

•In less than few seconds, even on a database of millions of records, the iris code template generated from a live image is compared to previously enrolled ones to see if it matches to any of them.

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Characteristics of Iris recognitionIris is thin membrane on the interior of the eyeball.

Iris pattern remains unchanged after the age of two and does not degrade overtime or with the environment.

Iris patterns are extremely complex than other biometric patterns.

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Typical iris system configuration for taking a picture

An iris recognition camera takes a black and white picture from 5 to 24 inches away.

The camera uses non-invasive, near-infrared illumination that is barely visible and very safe.

And this iris recognition cannot take place without the person permission

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An Iris Recognition Process

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Techniques usedIris Localization

Iris Normalization

Image Enhancement

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Iris Localization Both the inner boundary and the outer boundary of a typical iris can be taken as circles. But the two circles are usually not co-centric. Compared with the other part of the eye, the pupil is much darker. We detect the inner boundary between the pupil and the iris. The outer boundary of the iris is more difficult to detect because of the low contrast between the two sides of the boundary. We detect the outer boundary by maximizing changes of the perimeter- normalized along the circle. The technique is found to be efficient and effective.

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Iris NormalizationThe size of the pupil may change due to the variation of the illumination and the associated elastic deformations in the iris texture may interface with the results of pattern matching. For the purpose of accurate texture analysis, it is necessary to compensate this deformation. Since both the inner and outer boundaries of the iris have been detected, it is easy to map the iris ring to a rectangular block of texture of a fixed size.

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Image EnhancementThe original image has low contrast and may have non-uniform illumination caused by the position of the light source. These may impair the result of the texture analysis. We enhance the iris image reduce the effect of non-uniform illumination.

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Image EnhancementThe original image has low contrast and may have non-uniform illumination caused by the position of the light source. These may impair the result of the texture analysis. We enhance the iris image reduce the effect of non-uniform illumination.

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Iris preprocessing: (a) original eye (b) iris localization

( c ) iris normalization (d) image enhancement

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Comparison Of Iris Recognition With Other BiometricsAccurate

Stability

Fast

Scalable

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ReferenceY.Zhu,T.Tan and Y.Wang,”Biometric Identification Based on Iris Pattern”.

Anil K Jain,”Biometric Authentication: How Do I Know Who You Are”.

D Maltoni, D.Maio, Anil K Jain, and S prabhakar”Handbook of Finger print Recognition”.