An Efficient Optimization Technique of EEG Decomposition for User Authentication System

Zaid Abdi Alkareem Alyasseri, A. Khader, M. Al-Betar, J. Papa, O. Alomari, Sharif Naser Makhadme
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引用次数: 24

Abstract

Since the past years, the world is transformed into a digital society, where every individual is living with a unique digital identifier. The primary purpose of this identifier is to distinguish from others as well as to deal with digital machines which are surrounding the world. Recently, many researchers proved that the brain electrical activity or electroencephalogram (EEG) signals could provide robust and unique features that can be considered as a new biometric authentication technique. One of the most important things to extract the efficient and unique features from the input EEG signals is to find the optimal method to decompose the input EEG signals. Therefore, this paper proposed a novel method for EEG signal denoising based on multi-objective flower pollination algorithm with wavelet transform (MOFPA-WT) to extract such information from denoised signals. MOFPA-WT is evaluated using a standard EEG signal dataset, namely, Keirn EEG dataset, which has five mental tasks, includes baseline, multiplication two numbers, geometric figure rotation, letter composing, and visual counting. The performance of MOFPA-WT is evaluated using three criteria, namely, accuracy, true acceptance rate, and false acceptance rate. It is worth mentioning that the proposed method achieves the highest accuracy result which can be obtained using mental tasks based on geometric figure rotation compared with mental tasks.
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一种高效的用户认证系统脑电分解优化技术
自过去几年以来,世界已经转变为一个数字社会,每个人都生活在一个唯一的数字标识符下。这个标识符的主要目的是为了区别于其他标识符,以及处理世界各地的数字机器。近年来,许多研究人员证明,脑电活动或脑电图(EEG)信号具有鲁棒性和独特性,可以作为一种新的生物识别认证技术。如何从输入的脑电信号中提取出有效而独特的特征,最重要的是找到对输入的脑电信号进行最优分解的方法。为此,本文提出了一种基于多目标花授粉小波变换算法(MOFPA-WT)的脑电信号去噪方法,从去噪后的信号中提取脑电信号信息。使用标准脑电信号数据集,即Keirn脑电信号数据集,对MOFPA-WT进行评估,该数据集有五个心理任务,包括基线、两个数字相乘、几何图形旋转、字母组合和视觉计数。使用三个标准来评估MOFPA-WT的性能,即准确性、真接受率和假接受率。值得一提的是,与心理任务相比,基于几何图形旋转的心理任务可以获得最高的精度结果。
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