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Multimodal Biometric Fusion: Performance under Spoof Attacks

机译:多模式生物识别融合:欺骗攻击下的性能

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Biometrics is essentially a pattern recognition system that recognizes an individual using their unique anatomical or behavioral patterns such as face, fingerprint, iris, signature etc. Recent researches have shown that many biometric traits are vulnerable to spoof attacks. Moreover, recent works showed that, contrary to a common belief, multimodal biometric systems in parallel fusion mode can be intruded even if only one trait is spoofed. However, most of the results were obtained using simulated spoof attacks, under the assumption that the spoofed and genuine samples are indistinguishable, which may not be true for all biometric traits. In addition, so far vulnerability of multimodal biometric systems in serial fusion mode against spoof attacks has not been investigated. These issues raise a demand to investigate the robustness of multimodal systems under realistic spoof attacks. In this paper, we empirically investigate the performance of serial and parallel biometric fusion modes under realistic spoof attacks. Preliminary empirical results on real biometric systems made up of face, fingerprint and iris confirm that multimodal biometric systems in both fusion modes are not intrinsically robust against spoof attacks as believed so far. In particular, multimodal biometric systems in serial fusion mode can be even less robust than systems in-parallel mode. We also experimentally found that incorporating the biometric sample quality in biometric fusion increases the robustness of the multimodal systems against spoof attacks. In the end, we study the trade-off between performance and robustness of the biometric systems under spoof attacks.
机译:生物识别技术本质上是一种模式识别系统,可使用其独特的解剖或行为模式(例如面部,指纹,虹膜,签名等)识别个人。最近的研究表明,许多生物识别特征易受欺骗攻击。此外,最近的研究表明,与通常的看法相反,即使仅欺骗了一个特征,也可以侵入并行融合模式下的多模式生物识别系统。但是,大多数结果是使用模拟的欺骗攻击获得的,前提是假定欺骗性样本与真实样本是无法区分的,这可能并非对所有生物特征都是正确的。此外,到目前为止,尚未研究串行融合模式下多模式生物识别系统针对欺骗攻击的脆弱性。这些问题提出了在现实的欺骗攻击下调查多模式系统的鲁棒性的需求。在本文中,我们根据经验研究了串行和并行生物特征识别融合模式在实际欺骗攻击下的性能。由面部,指纹和虹膜组成的真实生物识别系统的初步经验结果证实,到目前为止,两种融合模式下的多模式生物识别系统在本质上都无法抵御欺骗攻击。尤其是,串行融合模式下的多峰生物识别系统可能比并行模式下的系统更不可靠。我们还通过实验发现,将生物特征样本质量纳入生物特征融合中可以提高多模式系统抵御欺骗攻击的鲁棒性。最后,我们研究了在欺骗攻击下生物识别系统的性能和健壮性之间的权衡。

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