Presentation Attack Detection for Cadaver Iris
Mateusz Trokielewicz, Adam Czajka, Piotr Maciejewicz

TL;DR
This paper introduces a deep learning method for detecting iris presentation attacks in post-mortem images, achieving high accuracy and addressing biases, thus pioneering in post-mortem iris PAD research.
Contribution
It presents the first PAD method specifically for post-mortem iris images, with detailed analysis and measures to ensure bias minimization and result reproducibility.
Findings
Achieves nearly 99% classification accuracy between live and dead irises.
Detection accuracy improves with time since death, especially after 16 hours.
Provides open-source code, trained models, and a dataset for future research.
Abstract
This paper presents a deep-learning-based method for iris presentation attack detection (PAD) when iris images are obtained from deceased people. Our approach is based on the VGG-16 architecture fine-tuned with a database of 574 post-mortem, near-infrared iris images from the Warsaw-BioBase-PostMortem-Iris-v1 database, complemented by a dataset of 256 images of live irises, collected within the scope of this study. Experiments described in this paper show that our approach is able to correctly classify iris images as either representing a live or a dead eye in almost 99% of the trials, averaged over 20 subject-disjoint, train/test splits. We also show that the post-mortem iris detection accuracy increases as time since death elapses, and that we are able to construct a classification system with APCER=0%@BPCER=1% (Attack Presentation and Bona Fide Presentation Classification Error…
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Taxonomy
TopicsForensic and Genetic Research · Biometric Identification and Security · Autopsy Techniques and Outcomes
