Presentation Attack Detection with Advanced CNN Models for
Noncontact-based Fingerprint Systems
- URL: http://arxiv.org/abs/2303.05459v1
- Date: Thu, 9 Mar 2023 18:01:10 GMT
- Title: Presentation Attack Detection with Advanced CNN Models for
Noncontact-based Fingerprint Systems
- Authors: Sandip Purnapatra, Conor Miller-Lynch, Stephen Miner, Yu Liu, Keivan
Bahmani, Soumyabrata Dey, Stephanie Schuckers
- Abstract summary: We develop a Presentation attack detection (PAD) dataset of more than 7500 four-finger images.
PAD accuracy of Attack presentation classification error rate (APCER) 0.14% and Bonafide presentation classification error rate (BPCER) 0.18%.
- Score: 5.022332693793425
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Touch-based fingerprint biometrics is one of the most popular biometric
modalities with applications in several fields. Problems associated with
touch-based techniques such as the presence of latent fingerprints and hygiene
issues due to many people touching the same surface motivated the community to
look for non-contact-based solutions. For the last few years, contactless
fingerprint systems are on the rise and in demand because of the ability to
turn any device with a camera into a fingerprint reader. Yet, before we can
fully utilize the benefit of noncontact-based methods, the biometric community
needs to resolve a few concerns such as the resiliency of the system against
presentation attacks. One of the major obstacles is the limited publicly
available data sets with inadequate spoof and live data. In this publication,
we have developed a Presentation attack detection (PAD) dataset of more than
7500 four-finger images and more than 14,000 manually segmented
single-fingertip images, and 10,000 synthetic fingertips (deepfakes). The PAD
dataset was collected from six different Presentation Attack Instruments (PAI)
of three different difficulty levels according to FIDO protocols, with five
different types of PAI materials, and different smartphone cameras with manual
focusing. We have utilized DenseNet-121 and NasNetMobile models and our
proposed dataset to develop PAD algorithms and achieved PAD accuracy of Attack
presentation classification error rate (APCER) 0.14\% and Bonafide presentation
classification error rate (BPCER) 0.18\%. We have also reported the test
results of the models against unseen spoof types to replicate uncertain
real-world testing scenarios.
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