Brain-Computer Interface based User Authentication System for Personal Device Security

Tabassum Hossain, Arnab Rakshit, A. Konar
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引用次数: 4

Abstract

The paper proposes a novel technique of EEG induced Brain-Computer Interface system for user authentication of personal devices. The scheme enables a human user to lock and unlock any personal device using his/her mind generated password. A two stage security verification is employed in the scheme. In the first stage, a $3 \times 3$ spatial matrix of flickering circles will appear on the screen of which, rows are blinked randomly and user has to mentally select a row which contains his desired circle.P300 is released when the desired row is blinked. Successful selection of row is followed by the selection of a flickering circle in the desired row. Gazing at a particular flickering circle generates SSVEP brain pattern which is decoded to trace the mentally selected circle. User is able to store mentally uttered number in the selected circle, later the number with it’s spatial position will serve as the password for the unlocking phase. Here, the user is equipped with a headphone where numbers starting from zero to nine are spelled randomly. Spelled number matching with the mentally uttered number generates auditory P300 in the subject’s brain. The particular choice of mentally uttered number is detected by successful detection of auditory P300. A novel weight update algorithm of Recurrent Neural Network (RNN), based on Extended-Kalman Filter and Particle Filter is used here for classifying the brain pattern. The proposed classifier achieves the best classification accuracy of 95.6%, 86.5% and 83.5% for SSVEP, visual P300 and auditory P300 respectively.
基于脑机接口的个人设备安全用户认证系统
提出了一种用于个人设备用户认证的脑机接口系统的新技术。该方案允许人类用户使用他/她的大脑生成的密码来锁定和解锁任何个人设备。该方案采用两阶段安全验证。在第一阶段,屏幕上将出现一个由闪烁的圆圈组成的$3 × 3$空间矩阵,其中的行随机闪烁,用户必须在心里选择包含他想要的圆圈的行。当需要的行闪烁时,释放P300。成功选择行之后,将在所需行中选择一个闪烁的圆圈。凝视一个特定的闪烁的圆圈会产生SSVEP大脑模式,该模式被解码以追踪心理选择的圆圈。用户可以在选定的圆圈中存储心口说出的数字,随后该数字的空间位置将作为解锁阶段的密码。在这里,用户配备了一个耳机,其中从0到9的数字是随机拼写的。拼写的数字与心中说出的数字相匹配,会在受试者的大脑中产生听觉P300。通过听觉P300的成功检测,可以检测到心理说出数字的特定选择。提出了一种基于扩展卡尔曼滤波和粒子滤波的递归神经网络(RNN)权值更新算法,用于脑模式分类。该分类器对SSVEP、视觉P300和听觉P300的分类准确率分别达到95.6%、86.5%和83.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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