Barzut, Srđan

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  • Barzut, Srđan (1)
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Author's Bibliography

A Novel Fingerprint Biometric Cryptosystem Based on Convolutional Neural Networks

Barzut, Srđan; Milosavljević, Milan; Adamović, Saša; Saračević, Muzafer; Maček, Nemanja; Gnjatović, Milan

(Basel, Switzerland : MDPI, 2021)

TY  - JOUR
AU  - Barzut, Srđan
AU  - Milosavljević, Milan
AU  - Adamović, Saša
AU  - Saračević, Muzafer
AU  - Maček, Nemanja
AU  - Gnjatović, Milan
PY  - 2021
UR  - http://jakov.kpu.edu.rs/handle/123456789/1511
AB  - Modern access controls employ biometrics as a means of authentication to a great extent.
For example, biometrics is used as an authentication mechanism implemented on commercial devices
such as smartphones and laptops. This paper presents a fingerprint biometric cryptosystem based on
the fuzzy commitment scheme and convolutional neural networks. One of its main contributions
is a novel approach to automatic discretization of fingerprint texture descriptors, entirely based on
a convolutional neural network, and designed to generate fixed-length templates. By converting
templates into the binary domain, we developed the biometric cryptosystem that can be used in
key-release systems or as a template protection mechanism in fingerprint matching biometric systems.
The problem of biometric data variability is marginalized by applying the secure block-level Bose–
Chaudhuri–Hocquenghem error correction codes, resistant to statistical-based attacks. The evaluation
shows significant performance gains when compared to other texture-based fingerprint matching
and biometric cryptosystems.
PB  - Basel, Switzerland : MDPI
T2  - Mathematics
T1  - A Novel Fingerprint Biometric Cryptosystem Based on Convolutional Neural Networks
VL  - 9
IS  - 7
SP  - 730
DO  - 10.3390/math9070730
ER  - 
@article{
author = "Barzut, Srđan and Milosavljević, Milan and Adamović, Saša and Saračević, Muzafer and Maček, Nemanja and Gnjatović, Milan",
year = "2021",
abstract = "Modern access controls employ biometrics as a means of authentication to a great extent.
For example, biometrics is used as an authentication mechanism implemented on commercial devices
such as smartphones and laptops. This paper presents a fingerprint biometric cryptosystem based on
the fuzzy commitment scheme and convolutional neural networks. One of its main contributions
is a novel approach to automatic discretization of fingerprint texture descriptors, entirely based on
a convolutional neural network, and designed to generate fixed-length templates. By converting
templates into the binary domain, we developed the biometric cryptosystem that can be used in
key-release systems or as a template protection mechanism in fingerprint matching biometric systems.
The problem of biometric data variability is marginalized by applying the secure block-level Bose–
Chaudhuri–Hocquenghem error correction codes, resistant to statistical-based attacks. The evaluation
shows significant performance gains when compared to other texture-based fingerprint matching
and biometric cryptosystems.",
publisher = "Basel, Switzerland : MDPI",
journal = "Mathematics",
title = "A Novel Fingerprint Biometric Cryptosystem Based on Convolutional Neural Networks",
volume = "9",
number = "7",
pages = "730",
doi = "10.3390/math9070730"
}
Barzut, S., Milosavljević, M., Adamović, S., Saračević, M., Maček, N.,& Gnjatović, M.. (2021). A Novel Fingerprint Biometric Cryptosystem Based on Convolutional Neural Networks. in Mathematics
Basel, Switzerland : MDPI., 9(7), 730.
https://doi.org/10.3390/math9070730
Barzut S, Milosavljević M, Adamović S, Saračević M, Maček N, Gnjatović M. A Novel Fingerprint Biometric Cryptosystem Based on Convolutional Neural Networks. in Mathematics. 2021;9(7):730.
doi:10.3390/math9070730 .
Barzut, Srđan, Milosavljević, Milan, Adamović, Saša, Saračević, Muzafer, Maček, Nemanja, Gnjatović, Milan, "A Novel Fingerprint Biometric Cryptosystem Based on Convolutional Neural Networks" in Mathematics, 9, no. 7 (2021):730,
https://doi.org/10.3390/math9070730 . .
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