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EEG biometrics based on small intra-individual and large inter-individual difference of extracted features

机译:基于小个体内个体差异和大个体间差异的脑电生物识别

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摘要

Biometrics refers to the process of identifying an individual from others by biological means. Most of the biometric systems are unreliable, can be imitated or even can be stolen. As a result, we need to search for a new biometrics and Electroencephalogram (EEG) based biometrics is a promising field in this aspect. By using the small intra-individual and large inter-individual difference in features with different trials, individuals can be identified with more accuracy. In this paper, a methodology for identifying an individual is proposed by determining the most effective domain and features of EEG signal. Three feed forward, back propagation multi-layer neural networks were built using the most effective features. The relative comparison shows that the network designed using the features of time domain gives the worst performance whereas the network designed using the features of both time and frequency domain gives the best performance for identifying an individual having relatively lower mean square error.
机译:生物特征识别是指通过生物学手段从一个人中识别一个人的过程。大多数生物识别系统都是不可靠的,可以被模仿甚至被盗。因此,我们需要寻找一种新的生物识别技术,而基于脑电图(EEG)的生物识别技术在这方面是一个有前途的领域。通过在不同的试验中使用较小的个体内部差异和较大的个体间差异,可以更准确地识别个体。在本文中,通过确定脑电信号的最有效域和特征,提出了一种识别个人的方法。利用最有效的功能构建了三个前馈,反向传播的多层神经网络。相对比较表明,使用时域特征设计的网络性能最差,而使用时域和频域特征设计的网络性能最好,可以识别均方误差相对较低的个人。

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