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A Review Study of Brian Activity-Based Biometric Authentication

机译:基于脑活动的生物特征认证研究综述

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摘要

Biometrics is the process of identifying an individual among others by biological means. Concerning security, biometric system is one of the best options available in this technology driven era. Places such as nuclear facilities, airports, banks etc. are on the frontline of security threats. Therefore, biometrics such as Iris, face and fingerprint recognition is frequently used to avoid any security breach. However, the possibility of imitating, replicating or even the stealing of original data has made these tools unreliable. As a result, there has been a growing interest in finding a better biometric system and brain activity- based biometrics such as Electroencephalography (EEG) and Functional Near-Infrared Spectroscopy (fNIRS) come with the advantage of being quite impossible to mimic. This paper presents a thorough and in depth review of the state of the art studies and research on brain activity-based biometrics. These studies and selected research projects are reviewed based on their feature extraction, methods, classification and most importantly, performance. Reviewing the most recent studies and research, we have found that time and frequency based features are better to be considered together for a brain activity-based biometric system. Together they are effective and efficient and give us a higher performance rate. Furthermore, we have found that Support Vector Machine (SVM) classifier is the best classification option with 100% accuracy and it can be used for a higher number of users for a biometric system. Our review lays a foundation for future investigation into the use of a combination of EEG and fNIRS for a biometric based authentication system.
机译:生物识别是通过生物手段识别个人的过程。关于安全性,生物识别系统是在此技术驱动时代中可用的最佳选择之一。诸如核设施,机场,银行等场所都处于安全威胁的前线。因此,经常使用虹膜,面部和指纹识别等生物识别技术来避免任何安全漏洞。但是,模仿,复制甚至窃取原始数据的可能性使这些工具不可靠。结果,人们对寻找更好的生物识别系统和基于脑活动的生物识别(例如脑电图(EEG)和功能性近红外光谱(fNIRS))的兴趣与日俱增,其优点是几乎无法模仿。本文对基于脑活动的生物特征识别技术的研究和研究现状进行了全面而深入的综述。这些研究和选定的研究项目将根据其特征提取,方法,分类以及最重要的性能进行审查。回顾最近的研究和研究,我们发现基于大脑活动的生物识别系统最好结合考虑基于时间和频率的功能。它们共同有效,使我们获得更高的性能。此外,我们发现支持向量机(SVM)分类器是100%准确度的最佳分类选项,可用于更多的生物识别系统用户。我们的审查为将来的研究奠定基础,以研究将EEG和fNIRS结合用于基于生物特征的身份验证系统。

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