State Of The Art In Open-Set Iris Presentation Attack Detection
Aidan Boyd, Jeremy Speth, Lucas Parzianello, Kevin Bowyer, Adam Czajka

TL;DR
This paper evaluates the current state of open-set iris presentation attack detection, highlighting the challenges of generalizing to unseen attack types and providing a large dataset, new algorithms, and an evaluation protocol for future research.
Contribution
It introduces the largest publicly available iris PAD dataset, a new evaluation protocol, and demonstrates that open-set iris PAD remains a challenging problem despite advances in closed-set scenarios.
Findings
Closed-set iris PAD algorithms perform well when all attack types are known.
Open-set iris PAD algorithms struggle with unseen attack types, showing catastrophic failures.
A new ensemble method outperforms previous best algorithms in open-set evaluation.
Abstract
Research in presentation attack detection (PAD) for iris recognition has largely moved beyond evaluation in "closed-set" scenarios, to emphasize ability to generalize to presentation attack types not present in the training data. This paper offers several contributions to understand and extend the state-of-the-art in open-set iris PAD. First, it describes the most authoritative evaluation to date of iris PAD. We have curated the largest publicly-available image dataset for this problem, drawing from 26 benchmarks previously released by various groups, and adding 150,000 images being released with the journal version of this paper, to create a set of 450,000 images representing authentic iris and seven types of presentation attack instrument (PAI). We formulate a leave-one-PAI-out evaluation protocol, and show that even the best algorithms in the closed-set evaluations exhibit…
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Taxonomy
TopicsBiometric Identification and Security · Face recognition and analysis · Forensic and Genetic Research
