Trade off between variable and fixed size normalization in orthogonal polynomials based iris recognition system

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Abstract

Iris normalization is an important stage in any iris biometric, as it has a propensity to trim down the consequences of iris distortion. To indemnify the variation in size of the iris owing to the action of stretching or enlarging the pupil in iris acquisition process and camera to eyeball distance, two normalization schemes has been proposed in this work. In the first method, the iris region of interest is normalized by converting the iris into the variable size rectangular model in order to avoid the under samples near the limbus border. In the second method, the iris region of interest is normalized by converting the iris region into a fixed size rectangular model in order to avoid the dimensional discrepancies between the eye images. The performance of the proposed normalization methods is evaluated with orthogonal polynomials based iris recognition in terms of FAR, FRR, GAR, CRR and EER.

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Krishnamoorthi, R., & Anna Poorani, G. (2016). Trade off between variable and fixed size normalization in orthogonal polynomials based iris recognition system. SpringerPlus, 5(1). https://doi.org/10.1186/s40064-016-1909-y

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