基于异常的多单类分类器人脸欺骗攻击检测

Soroush Fatemifar, Muhammad Awais, S. R. Arashloo, J. Kittler
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引用次数: 28

摘要

一类欺骗检测方法在人脸表示攻击检测中,特别是在看不见的攻击场景中,已成为两类学习器的有效替代方法。提出了一种适用于单类分类器的基于集成的异常检测方法。提出了一种新的分数归一化方法,在融合前对单个离群检测器的输出进行归一化。为了满足组件分类器的准确性和多样性目标,采用了三种不同的策略来构建异常专家库。为了提高性能,我们还在单个专家的设计以及为每个客户设置不同的阈值时使用特定于客户的信息。我们在三个面抗欺骗数据集上进行了广泛的实验,并表明所提出的集成方法比基于两类公式或类独立设置的技术更优越。*
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Combining Multiple one-class Classifiers for Anomaly based Face Spoofing Attack Detection
One-class spoofing detection approaches have been an effective alternative to the two-class learners in the face presentation attack detection particularly in unseen attack scenarios. We propose an ensemble based anomaly detection approach applicable to one-class classifiers. A new score normalisation method is proposed to normalise the output of individual outlier detectors before fusion. To comply with the accuracy and diversity objectives for the component classifiers, three different strategies are utilised to build a pool of anomaly experts. To boost the performance, we also make use of the client-specific information both in the design of individual experts as well as in setting a distinct threshold for each client. We carry out extensive experiments on three face anti-spoofing datasets and show that the proposed ensemble approaches are comparable superior to the techniques based on the two-class formulation or class-independent settings. *
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