Deep Learning for Iris Recognition: A Survey

Author:

Nguyen Kien1ORCID,Proença Hugo2ORCID,Alonso-Fernandez Fernando3ORCID

Affiliation:

1. Queensland University of Technology, Brisbane, Australia

2. University of Beira Interior, IT: Instituto de Telecomunicações, Covilhã, Portugal

3. Halmstad University, Halmstad, Sweden

Abstract

In this survey, we provide a comprehensive review of more than 200 articles, technical reports, and GitHub repositories published over the last 10 years on the recent developments of deep learning techniques for iris recognition, covering broad topics on algorithm designs, open-source tools, open challenges, and emerging research. First, we conduct a comprehensive analysis of deep learning techniques developed for two main sub-tasks in iris biometrics: segmentation and recognition. Second, we focus on deep learning techniques for the robustness of iris recognition systems against presentation attacks and via human-machine pairing. Third, we delve deep into deep learning techniques for forensic application, especially in post-mortem iris recognition. Fourth, we review open-source resources and tools in deep learning techniques for iris recognition. Finally, we highlight the technical challenges, emerging research trends, and outlook for the future of deep learning in iris recognition.

Funder

FCT/MEC through national funds and co-funded by FEDER - PT2020

Swedish Innovation Agency VINNOVA

Swedish Research Council

Publisher

Association for Computing Machinery (ACM)

Reference212 articles.

1. Enhanced iris presentation attack detection via contraction-expansion CNN

2. Generalized contact lens iris presentation attack detection;Agarwal A.;IEEE Transactions on Biometrics, Behavior, and Identity Science,2022

3. ThirdEye: Triplet Based Iris Recognition without Normalization

4. A survey on periocular biometrics research

5. Quality Measures in Biometric Systems

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