Single architecture and multiple task deep neural network for altered
fingerprint analysis
- URL: http://arxiv.org/abs/2007.04931v1
- Date: Thu, 9 Jul 2020 17:02:09 GMT
- Title: Single architecture and multiple task deep neural network for altered
fingerprint analysis
- Authors: Oliver Giudice (1), Mattia Litrico (1), Sebastiano Battiato (1 and 2)
((1) University of Catania, (2) iCTLab s.r.l. - Spin-off of University of
Catania)
- Abstract summary: "Altered fingerprints", refers to intentionally damage of the friction ridge pattern.
This paper proposes a method for detection of altered fingerprints, identification of types of alterations and recognition of gender, hand and fingers.
The proposed approach achieves an accuracy of 98.21%, 98.46%, 92.52%, 97.53% and 92,18% for the classification of fakeness, alterations, gender, hand and fingers, respectively.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Fingerprints are one of the most copious evidence in a crime scene and, for
this reason, they are frequently used by law enforcement for identification of
individuals. But fingerprints can be altered. "Altered fingerprints", refers to
intentionally damage of the friction ridge pattern and they are often used by
smart criminals in hope to evade law enforcement. We use a deep neural network
approach training an Inception-v3 architecture. This paper proposes a method
for detection of altered fingerprints, identification of types of alterations
and recognition of gender, hand and fingers. We also produce activation maps
that show which part of a fingerprint the neural network has focused on, in
order to detect where alterations are positioned. The proposed approach
achieves an accuracy of 98.21%, 98.46%, 92.52%, 97.53% and 92,18% for the
classification of fakeness, alterations, gender, hand and fingers, respectively
on the SO.CO.FING. dataset.
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