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Convolutional Neural Network Approach for Multispectral Facial Presentation Attack Detection in Automated Border Control Systems
Authors:M Araceli Snchez-Snchez  Cristina Conde  Beatriz Gmez-Aylln  David Ortega-DelCampo  Aristeidis Tsitiridis  Daniel Palacios-Alonso  Enrique Cabello
Institution:1.Departamento de Informática y Automática—Universidad de Salamanca, Avda. Fernando Ballesteros, 2, 37008 Salamanca, Spain;2.Escuela Técnica Superior de Ingeniería Informática—Universidad Rey Juan Carlos, Tulipán, s/n, 28933 Móstoles, Madrid, Spain; (C.C.); (B.G.-A.); (D.O.-D.); (A.T.); (E.C.)
Abstract:Automated border control systems are the first critical infrastructure point when crossing a border country. Crossing border lines for unauthorized passengers is a high security risk to any country. This paper presents a multispectral analysis of presentation attack detection for facial biometrics using the learned features from a convolutional neural network. Three sensors are considered to design and develop a new database that is composed of visible (VIS), near-infrared (NIR), and thermal images. Most studies are based on laboratory or ideal conditions-controlled environments. However, in a real scenario, a subject’s situation is completely modified due to diverse physiological conditions, such as stress, temperature changes, sweating, and increased blood pressure. For this reason, the added value of this study is that this database was acquired in situ. The attacks considered were printed, masked, and displayed images. In addition, five classifiers were used to detect the presentation attack. Note that thermal sensors provide better performance than other solutions. The results present better outputs when all sensors are used together, regardless of whether classifier or feature-level fusion is considered. Finally, classifiers such as KNN or SVM show high performance and low computational level.
Keywords:biometrics  presentation attack detection  Anti-spoofing  automatic border crossing systems  convolutional neural network  Bio-inspired systems
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