On the use of convolutional neural networks for robust classification of multiple fingerprint captures
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Peralta, Daniel; Triguero, Isaac; García López, Salvador; Saeys, Yvan; Benítez Sánchez, José Manuel; Herrera Triguero, FranciscoEditorial
Wiley Periodicals
Materia
Convolutional neural networks Fingerprint classification Deep learning Deep neural networks
Date
2018-01Referencia bibliográfica
Peralta, D.; et. al. On the use of convolutional neural networks for robust classification of multiple fingerprint captures. Int J Intell Syst. , 33:213–230(2018)[http://hdl.handle.net/10481/50009]
Sponsorship
This work was partially supported by the Spanish Ministry of Science and Technology under the project TIN2014-57251-P and the Foundation BBVA project 75/2016 BigDaPTOOLS. Y. Saeys is an ISAC Marylou Ingram Scholar.Abstract
Fingerprint classification is one of the most common
approaches to accelerate the identification in large
databases of fingerprints. Fingerprints are grouped into disjoint
classes, so that an input fingerprint is compared only
with those belonging to the predicted class, reducing the
penetration rate of the search. The classification procedure
usually starts by the extraction of features from the fingerprint
image, frequently based on visual characteristics. In
this work, we propose an approach to fingerprint classification
using convolutional neural networks, which avoid the
necessity of an explicit feature extraction process by incorporating
the image processing within the training of the
classifier. Furthermore, such an approach is able to predict
a class even for low-quality fingerprints that are rejected
by commonly used algorithms, such as FingerCode. The
study gives special importance to the robustness of the classification
for different impressions of the same fingerprint,
aiming to minimize the penetration in the database. In our
experiments, convolutional neural networks yielded better
accuracy and penetration rate than state-of-the-art classifiers
based on explicit feature extraction. The tested networks
also improved on the runtime, as a result of the joint
optimization of both feature extraction and classification.