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Presentation attack detection based on score level fusion and challenge-response technique

机译:基于分数水平融合和挑战 - 响应技术的演示攻击检测

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摘要

Biometrics is the state of the art in dealing with identity identification and verification based on the physical and behavioral characteristics and widely used in the fields of Fintech, such as mobile payment and online banking due to its security and convenience. However, there are various attacks against the biometrics system. The presentation attack is one of the most common attacks that an imposter presents fake biometrics to the sensor trying to fool the system. This paper proposes a multimodal presentation attack detection (PAD) method against photo-attack and video-attack in face recognition system by using score level fusion and challenge-response scenario. The proposed challenge-response scenario is that requesting the user to speak out the randomly prompted words. Then, the recognized speech text and the user's mouth motion are detected simultaneously to verify if the user is liveness. Two weighted score level fusion rules, namely weighted sum and weight product, are used to combine the speech and mouth motion traits as a matching score. The final score is fed into supervised machine learning algorithms and trained for classifying spoofing. The experiments are conducted in the self-built database. Experimental results show that the proposed method can achieve the best half total error rate at 3.64% and can effectively improve facial recognition system security.
机译:生物识别技术是在处理身份识别和验证的基础上,基于物理和行为特征,广泛应用于金融技术的领域,例如由于其安全性和便利性,如移动支付和网上银行。然而,对生物识别系统存在各种攻击。演示攻击是冒名者将假生物识别的最常见的攻击之一是试图欺骗系统的传感器。本文通过使用分数水平融合和挑战 - 响应情景,提出了对面部识别系统的光攻击和视频攻击的多模式呈现攻击检测(PAD)方法。拟议的挑战 - 响应方案是要求用户讲述随机提示的单词。然后,同时检测识别的语音文本和用户的口腔运动以验证用户是否是活力。两个加权分数级融合规则,即加权和重量产品,用于将语音和口动运动组合为匹配分数。最终得分被送入监督机器学习算法并培训,用于对欺骗进行分类。实验是在自建立的数据库中进行的。实验结果表明,该方法可以达到3.64%的最佳误差率,可有效提高面部识别系统安全性。

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