Verification system based on long-range iris and Graph Siamese Neural Networks

Francesco Zola, Jose Alvaro Fernandez-Carrasco, J. L. Bruse, M. Galar, Z. Geradts
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引用次数: 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.
基于远程虹膜和图连体神经网络的验证系统
生物识别系统在用户认证和验证等任务中代表了有效的解决方案,因为它们能够高精度地分析身体和行为特征。然而,特别是当使用物理生物识别技术时,如虹膜识别,它们需要特定的硬件,如视网膜扫描仪、传感器或高清摄像头来实现相关结果。同时,它们要求用户非常靠近相机以提取高分辨率信息。因此,在这项工作中,我们提出了一种使用远程(LR)距离图像实现虹膜验证系统的新方法。更具体地说,我们提出了一种将LR虹膜图像转换为图形的新方法,然后使用图连体神经网络(GSNN)来预测两个图形是否属于同一个人。在本研究中,我们不仅描述了这种方法,而且还评估了如何利用这些图像的光谱成分来改进图提取和最终的分类任务。结果证明了这种方法的适用性,鼓励社区探索图形在生物识别系统中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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