An Open Patch Generator based Fingerprint Presentation Attack Detection
using Generative Adversarial Network
- URL: http://arxiv.org/abs/2306.03577v1
- Date: Tue, 6 Jun 2023 10:52:06 GMT
- Title: An Open Patch Generator based Fingerprint Presentation Attack Detection
using Generative Adversarial Network
- Authors: Anuj Rai, Ashutosh Anshul, Ashwini Jha, Prayag Jain, Ramprakash
Sharma, Somnath Dey
- Abstract summary: Presentation Attack (PA) or spoofing is one of the threats caused by presenting a spoof of a genuine fingerprint to the sensor of Automatic Fingerprint Recognition Systems (AFRS)
This paper proposes a CNN based technique that uses a Generative Adversarial Network (GAN) to augment the dataset with spoof samples generated from the proposed Open Patch Generator (OPG)
An overall accuracy of 96.20%, 94.97%, and 92.90% has been achieved on the LivDet 2015, 2017, and 2019 databases, respectively under the LivDet protocol scenarios.
- Score: 3.5558308387389626
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The low-cost, user-friendly, and convenient nature of Automatic Fingerprint
Recognition Systems (AFRS) makes them suitable for a wide range of
applications. This spreading use of AFRS also makes them vulnerable to various
security threats. Presentation Attack (PA) or spoofing is one of the threats
which is caused by presenting a spoof of a genuine fingerprint to the sensor of
AFRS. Fingerprint Presentation Attack Detection (FPAD) is a countermeasure
intended to protect AFRS against fake or spoof fingerprints created using
various fabrication materials. In this paper, we have proposed a Convolutional
Neural Network (CNN) based technique that uses a Generative Adversarial Network
(GAN) to augment the dataset with spoof samples generated from the proposed
Open Patch Generator (OPG). This OPG is capable of generating realistic
fingerprint samples which have no resemblance to the existing spoof fingerprint
samples generated with other materials. The augmented dataset is fed to the
DenseNet classifier which helps in increasing the performance of the
Presentation Attack Detection (PAD) module for the various real-world attacks
possible with unknown spoof materials. Experimental evaluations of the proposed
approach are carried out on the Liveness Detection (LivDet) 2015, 2017, and
2019 competition databases. An overall accuracy of 96.20\%, 94.97\%, and
92.90\% has been achieved on the LivDet 2015, 2017, and 2019 databases,
respectively under the LivDet protocol scenarios. The performance of the
proposed PAD model is also validated in the cross-material and cross-sensor
attack paradigm which further exhibits its capability to be used under
real-world attack scenarios.
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