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Neuro signals: A future biomertic approach towards user identification

机译:神经信号:未来的用户识别生物组学方法

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摘要

Electroencephalography (EEG) have been receiving a lot of attention due to its recent use in the field of biometrics. Signals traced from the different parts of the brain has become an upsurge area of interest for the researchers. Evidences have been provided by the research communities where the uniqueness of neuro-signals can possibly be used for building a robust biometric identification system. In this paper, we investigate the robustness of EEG signals in two different scenario of data collection, namely, Eyes Open (EO) and Eyes Closed (EC) for building a person identification system. For this, a publicly available EEG signals dataset of 109 users have been used. The EEG signals have been modeled using two different classifier, namely, Support Vector Machine (SVM) and Random Forest (RF). Next, a feature selection approach has been applied to reduce the number of features and results have been computed to find optimal feature dimension. From experiments, person identification rates of 97.64% (EO) and 96.02% (EC) using SVM, and 98.16% (EO) and 97.30% (EC) have been recorded using RF classifiers.
机译:脑电图(EEG)由于其最近在生物识别领域的使用而受到了广泛的关注。从大脑的不同部位追踪到的信号已成为研究人员关注的热潮领域。研究社区提供的证据表明,神经信号的独特性可能可以用于构建健壮的生物识别系统。在本文中,我们研究了EEG信号在两种不同数据收集场景下的健壮性,即睁眼(EO)和闭眼(EC)用于构建人识别系统。为此,使用了109个用户的公共EEG信号数据集。使用两个不同的分类器,即支持向量机(SVM)和随机森林(RF),对EEG信号进行建模。接下来,已应用特征选择方法来减少特征数量,并已计算结果以找到最佳特征尺寸。根据实验,使用SVM的人员识别率分别为97.64%(EO)和96.02%(EC),以及使用RF分类器记录的人员识别率为98.16%(EO)和97.30%(EC)。

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