迈向脑电图生物识别:用户识别的模式匹配方法

Qiong Gui, Zhanpeng Jin, Maria V. Ruiz-Blondet, Sarah Laszlo, Wenyao Xu
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引用次数: 17

摘要

脑电图脑电波最近成为一种很有前途的生物识别技术,可以用于个人身份识别,因为这些信号是机密的、敏感的、难以窃取和复制的。在这项研究中,我们提出了一个新的刺激驱动的、基于非意志大脑反应的个体识别框架。非意志机制提供了一种更安全的方式,在这种方式中,受试者没有意识到,因此无法操纵他们的大脑活动。我们提出了基于两种模式匹配方法的初步研究:欧几里得距离(ED)和动态时间翘曲(DTW)。我们使用四种不同的视觉刺激和四种不同脑电电极通道的潜在影响来研究我们提出的方法的性能。实验结果表明,在ED和DTW两种方法中,Oz通道都提供了最好的识别精度,并且非法字符串和单词的刺激似乎能触发更多可区分的大脑反应。ED方法识别30个受试者的准确率可达80%以上,优于DTW方法68%左右的最佳准确率。我们的研究为未来基于脑波的生物识别方法的研究奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards EEG biometrics: pattern matching approaches for user identification
EEG brainwaves have recently emerged as a promising biometric that can be used for individual identification, since those signals are confidential, sensitive, and hard to steal and replicate. In this study, we propose a new stimuli-driven, non-volitional brain responses based framework towards individual identification. The non-volitional mechanism provides an even more secure way in which the subjects are not aware of and thus can not manipulate their brain activities. We present our preliminary investigations based on two pattern matching approaches: Euclidean Distance (ED) and Dynamic Time Warping (DTW). We investigate the performance of our proposed methods using four different visual stimuli and the potential impacts from four different EEG electrode channels. Experimental results show that, the Oz channel provides the best identification accuracy for both ED and DTW methods, and the stimuli of illegal strings and words seem to trigger more distinguishable brain responses. For ED method, the accuracy of identifying 30 subjects could reach over 80%, which is better than the best accuracy of about 68% that can be achieved by DTW method. Our study lays a foundation for future investigation of brainwave-based biometric approaches.
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