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An EEG-Based Identity Authentication System with Audiovisual Paradigm in IoT

机译:物联网中基于视听范例的基于EEG的身份认证系统

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摘要

With the continuous increment of security risks and the limitations of traditional modes, it is necessary to design a universal and trustworthy identity authentication system for intelligent Internet of Things (IoT) applications such as an intelligent entrance guard. The characteristics of EEG (electroencephalography) have gained the confidence of researchers due to its uniqueness, stability, and universality. However, the limited usability of the experimental paradigm and the unsatisfactory classification accuracy have so far prevented the identity authentication system based on EEG to become commonplace in IoT scenarios. To address these problems, an audiovisual presentation paradigm is proposed to record the EEG signals of subjects. In the pre-processing stage, the reference electrode, ensemble averaging, and independent component analysis methods are used to remove artifacts. In the feature extraction stage, adaptive feature selection and bagging ensemble learning algorithms establish the optimal classification model. The experimental result shows that our proposal achieves the best classification accuracy when compared with other paradigms and typical EEG-based authentication methods, and the test evaluation on a login scenario is designed to further demonstrate that the proposed system is feasible, effective, and reliable.
机译:随着安全风险的不断增加和传统模式的局限性,有必要设计一种通用且可信赖的身份认证系统,用于智能物联网(IoT)应用程序,例如智能门禁。脑电图(EEG)的特点由于其独特性,稳定性和通用性而赢得了研究人员的信任。然而,迄今为止,实验范式的有限可用性和令人不满意的分类精度,都阻止了基于EEG的身份认证系统在物联网场景中的普及。为了解决这些问题,提出了视听呈现范例来记录对象的EEG信号。在预处理阶段,参考电极,整体平均法和独立的成分分析方法用于去除伪影。在特征提取阶段,自适应特征选择和装袋集成学习算法建立了最优的分类模型。实验结果表明,与其他范式和典型的基于EEG的身份验证方法相比,我们的建议具有最佳的分类精度,并且针对登录场景的测试评估旨在进一步证明该系统是可行,有效和可靠的。

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