Low-quality fingerprint classification using deep neural network
journal contribution
posted on 2019-06-10, 10:09authored byPavlo Tertychnyi, Cagri Ozcinar, Gholamreza Anbarjafari
Fingerprint recognition systems mainly use minutiae points information. As shown in many previous research works,
fingerprint images do not always have good quality to be used by automatic fingerprint recognition systems. To tackle this
challenge, in this work, the authors are focusing on very low-quality fingerprint images, which contain several well-known
distortions such as dryness, wetness, physical damage, presence of dots, and blurriness. They develop an efficient, with high
accuracy, deep neural network algorithm, which recognises such low-quality fingerprints. The experimental results have been
obtained from the real low-quality fingerprint database, and the achieved results show the high performance and robustness of
the introduced deep network technique. The VGG16-based deep network achieves the highest performance of 93% for dry and
the lowest performance of 84% for blurred fingerprint classes.
Funding
This work was partially supported by Estonian Research Council
Grant PUT638, the Scientific and Technological Research Council
of Turkey (TÜBITAK) 1001 Project (116E097), the COST Action
IC1307 iV&L Net (European Network on Integrating Vision and
Language) supported by COST (European Cooperation in Science
and Technology), and the Estonian Centre of Excellence in IT
(EXCITE) funded by the European Regional Development Fund
History
School
Loughborough University London
Published in
IET Biometrics
Volume
7
Pages
550 - 556
Citation
TERTYCHNYI, P., OZCINAR, C. and ANBARJAFARI, G., 2018. Low-quality fingerprint classification using deep neural network. IET Biometrics, 7(6), pp. 550 - 556.
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