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Main Authors: Zhang, Jingxuan, Hart, Robert J., Bi, Ziqian, Fang, Shiaofen, Walsh, Susan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.11930
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author Zhang, Jingxuan
Hart, Robert J.
Bi, Ziqian
Fang, Shiaofen
Walsh, Susan
author_facet Zhang, Jingxuan
Hart, Robert J.
Bi, Ziqian
Fang, Shiaofen
Walsh, Susan
contents The use of the iris as a biometric identifier has increased dramatically over the last 30 years, prompting privacy and security concerns about the use of iris images in research. It can be difficult to acquire iris image databases due to ethical concerns, and this can be a barrier for those performing biometrics research. In this paper, we describe and show how to create a database of realistic, biometrically unidentifiable colored iris images by training a diffusion model within an open-source diffusion framework. Not only were we able to verify that our model is capable of creating iris textures that are biometrically unique from the training data, but we were also able to verify that our model output creates a full distribution of realistic iris pigmentations. We highlight the fact that the utility of diffusion networks to achieve these criteria with relative ease, warrants additional research in its use within the context of iris database generation and presentation attack security.
format Preprint
id arxiv_https___arxiv_org_abs_2503_11930
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Generating a Biometrically Unique and Realistic Iris Database
Zhang, Jingxuan
Hart, Robert J.
Bi, Ziqian
Fang, Shiaofen
Walsh, Susan
Computer Vision and Pattern Recognition
Machine Learning
The use of the iris as a biometric identifier has increased dramatically over the last 30 years, prompting privacy and security concerns about the use of iris images in research. It can be difficult to acquire iris image databases due to ethical concerns, and this can be a barrier for those performing biometrics research. In this paper, we describe and show how to create a database of realistic, biometrically unidentifiable colored iris images by training a diffusion model within an open-source diffusion framework. Not only were we able to verify that our model is capable of creating iris textures that are biometrically unique from the training data, but we were also able to verify that our model output creates a full distribution of realistic iris pigmentations. We highlight the fact that the utility of diffusion networks to achieve these criteria with relative ease, warrants additional research in its use within the context of iris database generation and presentation attack security.
title Generating a Biometrically Unique and Realistic Iris Database
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2503.11930