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Exploring EEG based Authentication for Imaginary and Non-imaginary tasks using Power Spectral Density Method

机译:使用功率谱密度方法探索基于eEG的虚构和非虚构任务的身份验证

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Biometric technology has swiftly emerged as a go-to solution for improving cyber security especially in financial fraud and security threats. EEG based-authentication is best of security in cyber security application as it is unique and cannot be replicated. The aim of this study is to investigate the possibility of adopting imaginary or non-imaginary task for human authentication. In this study, twenty subjects were recruited from undergraduate students with age ranging from 19 to 30 years old. The subject must be healthy and right-handed. The subjects were required to perform non-imaginary task (left hand or right hand movement) and imaginary task (just need to imagine the movement of left hand or right hand). Duration for each task is 1 minute and take rest for 1 minute between the tasks. Truscan EEG device (Deymed Diagnostic, Alien Technic, Czech Republic) with 19 channels were used to collect EEG data with 1024 Hz frequency sampling and the impedance is kept below 5 kOhm. Bandpass filter was used in preprocessing to extract alpha (8-13Hz) and beta (14-30Hz) waves. The signal was segmented and the power spectral density were calculated by Welch's method and Burg's method. The statistical features (mean, median, mode, variance, standard deviation, minimum and maximum) were obtained from PSD were used as input of classifier. K-nearest neighbour classifier (KNN) and Linear Discriminant Analysis (LDA) were applied for classification. In conclusion, Welch method gives the highest classification accuracy which is 98% for beta waves from channel C4 with the K-nearest neighbour classifier. Imaginary task shows the higher classification accuracy which is 98.03% instead of non-imaginary task which is 94.95%. Thus, imaginary task is more suitable for authentication.
机译:生物识别技术迅速成为改善网络安全的进一步解决方案,特别是在金融欺诈和安全威胁中。基于EEG的身份验证是网络安全应用程序中最好的安全性,因为它是唯一的,无法复制。本研究的目的是调查采用人类认证的虚构或非虚构任务的可能性。在这项研究中,从19至30岁的年龄的大学生招募了二十个科目。主题必须是健康和右手的。要求受试者执行非虚构的任务(左手或右手运动)和虚构的任务(只需要想象左手或右手的运动)。每个任务的持续时间为1分钟,并在任务之间休息1分钟。使用19个频道的Truscan EEG器件(DEYMED诊断,外星技术,捷克共和国)用于收集1024 Hz频率采样的EEG数据,阻抗保持在5 kohm以下。带通滤波器用于预处理以提取α(8-13Hz)和β(14-30Hz)波。信号被分段,通过Welch的方法和Burg方法计算功率谱密度。从PSD获得统计特征(平均值,中值,模式,方差,标准偏差,最小和最大值,用作分类器的输入。 k最近邻分类器(KNN)和线性判别分析(LDA)用于分类。总之,韦尔奇方法提供了最高的分类精度,其与来自K-Collect邻分类器的通道C4的β波的98%。虚构的任务显示较高的分类准确性,即98.03%而不是非虚构任务,而是94.95%。因此,虚构的任务更适合身份验证。

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