Face spoofing detection and Authentication Using Linear Binary Patterns, Gabor Features and Support Vector Machine

Ahmed Mamoon Alkababji, Mustafa Haitham Alhabib, Mustafa Zuhaer Al-Dabagh
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Abstract

Face detection and authentication have become an active field of research material in recent years duo to the increased use of face dependent access control systems, which can be considered as a good alternative to other biometric features such as fingerprint duo to its easily accessible, non- intrusive nature that makes it very important during the ongoing pandemic years. However, this method doesn’t come without security risks related to adversaries seeking to gain unauthorized access to the system. Face spoofing is a security breach attempt occurs when the attacker tries to deceive the face-enabled access control system by displaying a photo, video or wearing a mask of an authorized person to gain access. The paper in hand suggests a method for face anti-spoofing by utilizing some of the well-known feature extraction techniques usually associated with face detection and recognition, namely the LBP and Gabor features, in addition to the commonly used SVM classifier for identifying real and spoofed feces. The algorithm is implemented successfully on multiple individuals, achieving performance levels comparable to other accredited methods in terms of FAR, FRR and HTER verification criteria, aspiring for more advancedand effective methods.
基于线性二值模式、Gabor特征和支持向量机的人脸欺骗检测与认证
近年来,由于依赖人脸的访问控制系统的使用越来越多,人脸检测和身份验证已成为一个活跃的研究材料领域,该系统可被视为指纹识别等其他生物特征的良好替代方案,其易于访问,非侵入性使其在持续的大流行时期非常重要。然而,这种方法并非没有安全风险,这些风险与试图获得对系统的未经授权访问的对手有关。人脸欺骗是一种安全漏洞企图,当攻击者试图通过显示照片、视频或戴上授权人员的面具来欺骗启用人脸的访问控制系统以获得访问权限。本文提出了一种人脸防欺骗的方法,该方法利用了人脸检测和识别中常用的一些众所周知的特征提取技术,即LBP和Gabor特征,以及常用的SVM分类器来识别真实和被欺骗的粪便。该算法在多个个体上成功实施,在FAR、FRR和HTER验证标准方面达到了与其他认证方法相当的性能水平,并渴望更先进、更有效的方法。
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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