SEFL: Selective Ensemble Fuzzy Learner for Cognitive Detection of Bio-Modality Spoofing in MCPS

Nishat I. Mowla, Inshil Doh, K. Chae
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Abstract

User authentication in a Medical Cyber Physical Systems (MCPS) can be effectively done using biometric features. Biometric features, widely used for user authentication, are equally important to national and global technology systems. Biometric features, such as face, iris, fingerprint, are commonly used while more recently palm, vein and gait are also getting attention. To fail the traditional biometric detection systems, various spoofing approaches have also been developed over time. Among various methods, image synthesis with play-doh, gelatin, ecoflex etc. are some of the more common ways for spoofing bio-modalities. Success of traditional detection systems are related to custom tailored solutions where feature engineering for each attack type must be developed. However, this is not a feasible process when we consider countless attack possibilities. Also, a slight change in the attack can cause the whole system to be redesigned and therefore becomes a limiting constraint. The recent success of machine learning inspires this paper to explore weak and strong learners with ensemble learning approaches using AdaBoost. In essence, the paper proposes a selective ensemble fuzzy learner approach using Ada Boost, feature selection and combination of weak and strong learners to enhance the detection of bio-modality spoofing for MCPS. Our proposal was experimented on real datasets and verified on the fingerprint and iris benchmark.
基于选择性集成模糊学习器的MCPS生物模态欺骗认知检测
医疗网络物理系统(MCPS)中的用户身份验证可以使用生物特征有效地完成。广泛用于用户身份验证的生物特征对国家和全球技术系统同样重要。生物特征,如面部、虹膜、指纹,是常用的,最近手掌、静脉和步态也受到关注。为了使传统的生物识别检测系统失效,各种欺骗方法也随着时间的推移而发展。在各种方法中,用play-doh、明胶、ecoflex等进行图像合成是一些较常见的欺骗生物形态的方法。传统检测系统的成功与定制解决方案有关,必须为每种攻击类型开发特征工程。然而,当我们考虑到无数的攻击可能性时,这并不是一个可行的过程。此外,攻击中的一个微小变化可能导致整个系统被重新设计,从而成为一个限制性约束。最近机器学习的成功激发了本文使用AdaBoost探索集成学习方法的弱学习器和强学习器。本质上,本文提出了一种利用Ada Boost、特征选择和弱学习器与强学习器相结合的选择性集成模糊学习器方法来增强MCPS生物模态欺骗的检测。我们的建议在真实数据集上进行了实验,并在指纹和虹膜基准上进行了验证。
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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