基于雾的医疗信息物理系统生物模态欺骗的二值化多因素认知检测

Nishat I. Mowla, Inshil Doh, K. Chae
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引用次数: 3

摘要

生物模式是医疗信息物理系统中用户认证的理想选择。各种形式的生物形态,如面部、虹膜、指纹,通常用于安全用户身份验证。同时,随着时间的推移,各种欺骗方法也被开发出来,这些方法可能会使传统的生物模态检测系统失效。用橡皮泥、明胶、ecooflex等合成图像是一些用于欺骗生物可识别特性的方法。由于生物模态检测传感器体积小且资源有限,重型检测机制不适合这些传感器。最近,人们提出了基于雾的架构来支持医疗信息物理系统(MCPS)中的传感器管理。在这些资源受限的传感器中运行的瘦软件客户机可以实现与雾节点的通信,以便更好地进行管理和分析。因此,我们提出了一种基于雾的安全应用程序来检测基于雾的MCPS中的生物模态欺骗。在这方面,我们提出了一种基于机器学习的安全算法,使用二值化多因素增强集成学习算法与特征选择相结合,作为雾节点上的应用程序运行。我们的建议在真实数据集上进行了验证,这些数据集由Replay Attack, Warsaw和LiveDet 2015交叉匹配基准提供,用于人脸,虹膜和指纹模态欺骗检测,用于MCPS中的身份验证。实验分析表明,我们的方法比最先进的方法获得了显着的性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binarized Multi-Factor Cognitive Detection of Bio-Modality Spoofing in Fog Based Medical Cyber-Physical System
Bio-modalities are ideal for user authentication in Medical Cyber-Physical Systems. Various forms of bio-modalities, such as the face, iris, fingerprint, are commonly used for secure user authentication. Concurrently, various spoofing approaches have also been developed over time which can fail traditional bio-modality detection systems. Image synthesis with play-doh, gelatin, ecoflex etc. are some of the ways used in spoofing bio-identifiable property. Since the bio-modality detection sensors are small and resource constrained, heavy-weight detection mechanisms are not suitable for these sensors. Recently, Fog based architectures are proposed to support sensor management in the Medical Cyber-Physical Systems (MCPS). A thin software client running in these resource-constrained sensors can enable communication with fog nodes for better management and analysis. Therefore, we propose a fog-based security application to detect bio-modality spoofing in a Fog based MCPS. In this regard, we propose a machine learning based security algorithm run as an application at the fog node using a binarized multi-factor boosted ensemble learner algorithm coupled with feature selection. Our proposal is verified on real datasets provided by the Replay Attack, Warsaw and LiveDet 2015 Crossmatch benchmark for face, iris and fingerprint modality spoofing detection used for authentication in an MCPS. The experimental analysis shows that our approach achieves significant performance gain over the state-of-the-art approaches.
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