基于局部不变特征集的人脸欺骗检测系统

Bineet Kaur
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引用次数: 0

摘要

人脸是一种广泛使用的生物识别方式,因为它很容易被数码相机捕捉到。然而,由于其广泛的可及性和普及性,它成为最脆弱的生物识别方式。这些天,欺骗攻击已经变得很普遍,通过一个假用户冒充一个真正的用户。这些攻击包括照片攻击、视频攻击和3D面具攻击。为此,部署了一个由手工特征组成的鲁棒人脸欺骗检测系统。这些特征包括旋转不变泽尼克矩、极调和变换、由Krawtchouk、Tchebichef和Dual-Hahn组成的离散正交矩。特征集不受旋转、缩放和平移的影响。这些局部特征捕捉图像中的微小变化,使系统能够区分真假欺骗样本。为了进行性能评估,已经部署了公开可用的数据库:CASIA-FASD、REPLAY-ATTACK和OULU-NPU。该方法对CASIA-FASD、Replay-Attack和OULU-NPU数据库的准确率分别为99.98%、99.98%和99.95%。以OULU-NPU数据库为例,ACER至少达到1.95%,APCER达到2.34%,BPCER达到1.56%。此外,REPLAY-ATTACK数据库的EER为0.063%,HTER为0.165%。对于CASIA-FASD数据库,EER达到1.698%。因此,与文献调查中可用的技术相比,所提出的方法显示出优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Spoofing Detection System using Local Invariant Feature Set
Face is a widely used biometric modality because of ease with which it can be captured by digital cameras. However, because of its wider accessibility and popularity, it becomes the most vulnerable biometric modality. These days spoofing attacks have become prevelant by which a fake user impersonates a genuine user. These attacks include photo attacks, video attacks and 3D mask attacks. For this a robust face spoofing detection system has been deployed consisting of handcrafted features. These features include rotation invariant Zernike moments, Polar Harmonic Transforms, discrete orthogonal moments consisting of Krawtchouk, Tchebichef and Dual-Hahn. The feature-set is invariant to rotation, scale and translation. These local features capture micro variations in an image that makes it possible for the system to differentiate between a genuine and a fake spoofed sample. For performance evaluation, publicly available databases: CASIA-FASD, REPLAY-ATTACK and OULU-NPU have been deployed. The proposed methodology shows an accuracy of 99.98% for CASIA-FASD, 99.98% for Replay-Attack and 99.95% for OULU-NPU databases. In case of OULU-NPU database, an ACER of as minimum as 1.95%, an APCER of 2.34% and BPCER of 1.56% is achieved. In addition to this, an EER of 0.063% and HTER of 0.165% is achieved for REPLAY-ATTACK database. For CASIA-FASD database, an EER of 1.698% is achieved. Thus, the proposed methodology shows a superior performance in comparison to techniques available in the literature survey.
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