Verification system based on long-range iris and Graph Siamese Neural
Networks
- URL: http://arxiv.org/abs/2208.00785v1
- Date: Thu, 28 Jul 2022 09:22:11 GMT
- Title: Verification system based on long-range iris and Graph Siamese Neural
Networks
- Authors: Francesco Zola, Jose Alvaro Fernandez-Carrasco, Jan Lukas Bruse, Mikel
Galar, Zeno Geradts
- Abstract summary: We present a novel methodology for converting LR iris images into graphs and then use Graph Siamese Neural Networks (GSNN) to predict whether two graphs belong to the same person.
Results demonstrate the suitability of this approach, encouraging the community to explore graph application in biometric systems.
- Score: 0.5480546613836199
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Biometric systems represent valid solutions in tasks like user authentication
and verification, since they are able to analyze physical and behavioural
features with high precision. However, especially when physical biometrics are
used, as is the case of iris recognition, they require specific hardware such
as retina scanners, sensors, or HD cameras to achieve relevant results. At the
same time, they require the users to be very close to the camera to extract
high-resolution information. For this reason, in this work, we propose a novel
approach that uses long-range (LR) distance images for implementing an iris
verification system. More specifically, we present a novel methodology for
converting LR iris images into graphs and then use Graph Siamese Neural
Networks (GSNN) to predict whether two graphs belong to the same person. In
this study, we not only describe this methodology but also evaluate how the
spectral components of these images can be used for improving the graph
extraction and the final classification task. Results demonstrate the
suitability of this approach, encouraging the community to explore graph
application in biometric systems.
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