基于脑电图的生物识别系统的有效通道放置分析

M. K. Abdullah, K. S. Subari, Justin Leo Cheang Loong, N. N. Ahmad
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引用次数: 52

摘要

本文讨论了脑电图信号的潜力,以实现一个实际的生物识别系统使用4个或更少的通道的2种不同类型的脑电图记录。研究表明,脑电图信号具有生物识别潜力,因为信号因人而异,不可能复制和窃取。数据来自10名男性受试者,他们在两周的时间里分五次睁眼和闭眼休息。利用自回归(AR)模型提取特征并进行分析,得到特征集。结果表明,睁眼和闭眼4个通道的数据分类率分别为96%和97%,2个通道的数据分类率为90% ~ 95%。1个通道的分类率从70%到87%不等。在识别点,平均识别时间为0.38秒。基于这些结果,有可能实现基于脑电图的生物识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of effective channel placement for an EEG-based biometric system
This paper discusses the potential of the EEG signal for implementation of a practical biometric system using 4 or less channels of 2 different types of EEG recordings. Studies have shown that the EEG signal has biometric potential because the signal varies from person to person and is impossible to replicate and steal. Data were collected from 10 male subjects while resting with eyes open and eyes closed in 5 separate sessions conducted over a course of 2 weeks. Features were extracted using the autoregressive (AR) model and analyzed to obtain the feature set. Results show that data from eyes open and eyes closed using 4 channels gave good classification rates of 96% and 97% respectively and that data recorded from 2 channels gave classification rates from 90% to 95%. Classification rates from 1 channel ranged from 70% to 87%. The average time taken for recognition was 0.38 seconds at the point of recognition. Based on these results, there is potential for implementation of an EEG-based biometric system.
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