Article ID Journal Published Year Pages File Type
526093 Computer Vision and Image Understanding 2011 13 Pages PDF
Abstract

The random distribution of features in an iris image texture allows to perform iris-based personal authentication with high confidence. We propose three new iris representations that are based on a multi-scale Taylor expansion of the iris texture. The first one is a phase-based representation that is based on binarized first and second order multi-scale Taylor coefficient. The second one is based on the most significant local extremum points of the first two Taylor expansion coefficients. The third method is a combination of the first two representations. Furthermore, we provide efficient similarity measures for the three representations that are robust to moderate inaccuracies in iris segmentation. In a thorough validation using the three iris data-sets Casia 2.0 (device 1), ICE-1 and MBGC-3l, we show that the first two representations perform very well while the third one, i.e., the combination of the first two, significantly outperforms state-of-art iris recognition approaches.

Research highlights► Novel iris representations based on binary features from the multi-scale Taylor expansion. ► Enhancement of the local extrema-based approach with efficient matching. ► Combination of the above two performs with highest recognition rates. ► Evaluation results provided for each using Casia 2.0 (device 1), ICE-1 and MBGC-3l.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
Authors
, , ,