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Title: Face spoofing detection using Multi-Level Local Phase Quantization (ML-LPQ)
Authors: A. Benlamoudi
D. Samai
A. Ouafi
SE. Bekhouche
A. Taleb-Ahmed
A. Hadid
Keywords: biometrics, spoofing, ML-LPQ, CASIA , LibSVM
Issue Date: 19-Dec-2015
Abstract: Biometric technologies are becoming the foundation of an extensive array of highly secure identification and verification solution. Unfortunately, biometric systems are vulnerable to attacks made by persons showings photo, video or mask to spoof the real identity. In this paper we study a solution for those problems. We try to make solution to face spoofing for distinguishing between real face and fake one. Our approach called Multi-Level Local Phase Quantization (ML-LPQ) is focused in Local Phase Quantization (LPQ) descriptor for extracting features on face region of interest. In our approach, we use three levels for the LPQ descriptor to extract features and LibSVM for classification. Our experimental analysis on a publicly available CASIA face anti-spoofing database give us good result compared to other approaches using the same protocol.
Appears in Collections:Communications Internationales

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