Personalized user authentication system using wireless EEG headset and machine learning

Tron Baraku , Christos Stergiadis , Simos Veloudis , Manousos A. Klados
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Abstract

In the realm of authentication, biometric verification has gained widespread adoption, especially within high-security user authentication systems. Although convenient, existing biometric systems are susceptible to a number of security vulnerabilities, including spoofing tools such as gummy fingers for fingerprint systems and voice coders for voice recognition systems. In this regard, brainwave-based authentication has emerged as a novel form of biometric scheme that has the potential to overcome the security limitations of existing systems while facilitating additional capabilities, such as continuous user authentication. In this study, we focus on a data-driven approach to Electroencephalography (EEG)-based authentication, guided by the power of machine learning algorithms. Our methodology addresses the fundamental challenge of distinguishing real users from intruders by training classification algorithms to the unique EEG signatures of every individual. The system is characterized by its convenience, ensuring real-time applicability without compromising its efficiency. By employing a commercially available single-channel EEG sensor and extracting a set of 8 power spectral features (delta [0–4 Hz], theta [4–8 Hz], low alpha [8–10 Hz], high alpha [10–12 Hz], low beta [12–20 Hz], high beta [20–30 Hz], low gamma [30–60 Hz], high gamma [60–100 Hz]), a commendable mean accuracy of 85.4% was achieved.

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使用无线脑电图耳机和机器学习的个性化用户认证系统
在身份验证领域,生物识别验证已得到广泛采用,特别是在高安全性用户身份验证系统中。现有的生物识别系统虽然方便,但容易受到一些安全漏洞的影响,包括欺骗工具,如指纹系统中的软手指和语音识别系统中的语音编码器。在这方面,基于脑电波的身份验证已成为一种新型的生物识别方案,它有可能克服现有系统的安全限制,同时促进附加功能的实现,如持续的用户身份验证。在本研究中,我们将重点放在基于脑电图(EEG)认证的数据驱动方法上,并以机器学习算法的强大功能为指导。我们的方法针对每个人独特的脑电图特征训练分类算法,从而解决了区分真实用户和入侵者的基本挑战。该系统的特点是方便快捷,在确保实时适用性的同时不降低效率。通过采用市售的单通道脑电图传感器并提取一组 8 个功率谱特征(δ[0-4 Hz]、θ[4-8 Hz]、低α[8-10 Hz]、高α[10-12 Hz]、低β[12-20 Hz]、高β[20-30 Hz]、低γ[30-60 Hz]、高γ[60-100 Hz]),达到了值得称道的 85.4% 的平均准确率。
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