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Retina verification system based on biometric graph matching

journal contribution
posted on 2024-11-01, 14:22 authored by Seyed Lajevardi, Arathi ArakalaArathi Arakala, Stephen DavisStephen Davis, Kathryn HoradamKathryn Horadam
This paper presents an automatic retina verification framework based on the biometric graph matching (BGM) algorithm. The retinal vasculature is extracted using a family of matched filters in the frequency domain and morphological operators. Then, retinal templates are defined as formal spatial graphs derived from the retinal vasculature. The BGM algorithm, a noisy graph matching algorithm, robust to translation, non-linear distortion, and small rotations, is used to compare retinal templates. The BGM algorithm uses graph topology to define three distance measures between a pair of graphs, two of which are new. A support vector machine (SVM) classifier is used to distinguish between genuine and imposter comparisons. Using single as well as multiple graph measures, the classifier achieves complete separation on a training set of images from the VARIA database (60% of the data), equaling the state-of-the-art for retina verification. Because the available data set is small, kernel density estimation (KDE) of the genuine and imposter score distributions of the training set are used to measure performance of the BGM algorithm. In the one dimensional case, the KDE model is validated with the testing set. A 0 EER on testing shows that the KDE model is a good fit for the empirical distribution. For the multiple graph measures, a novel combination of the SVM boundary and the KDE model is used to obtain a fair comparison with the KDE model for the single measure. A clear benefit in using multiple graph measures over a single measure to distinguish genuine and imposter comparisons is demonstrated by a drop in theoretical error of between 60% and more than two orders of magnitude.

History

Journal

IEEE Transactions on Image Processing

Volume

22

Issue

9

Start page

3625

End page

3635

Total pages

11

Publisher

IEEE

Place published

United States

Language

English

Copyright

© 2013 IEEE

Former Identifier

2006042460

Esploro creation date

2020-06-22

Fedora creation date

2013-10-21

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