Department of Computer Science, Kristianstad University, 291 88 Kristianstad, Sweden.
Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518000, China.
Sensors (Basel). 2022 Mar 9;22(6):2101. doi: 10.3390/s22062101.
Secure and reliable sensing plays the key role for cognitive tracking i.e., activity identification and cognitive monitoring of every individual. Over the last years there has been an increasing interest from both academia and industry in cognitive authentication also known as biometric recognition. These are an effect of individuals' biological and physiological traits. Among various traditional biometric and physiological features, we include cognitive/brainwaves via electroencephalogram (EEG) which function as a unique performance indicator due to its reliable, flexible, and unique trait resulting in why it is hard for an un-authorized entity(ies) to breach the boundaries by stealing or mimicking them. Conventional security and privacy techniques in the medical domain are not the potential candidates to simultaneously provide both security and energy efficiency. Therefore, state-of-the art biometrics methods (i.e., machine learning, deep learning, etc.) their applications with novel solutions are investigated and recommended. The experimental setup considers EEG data analysis and interpretation of BCI. The key purpose of this setup is to reduce the number of electrodes and hence the computational power of the Random Forest (RF) classifier while testing EEG data. The performance of the random forest classifier was based on EEG datasets for 20 subjects. We found that the total number of occurred events revealed 96.1% precision in terms of chosen events.
安全可靠的感测在认知跟踪中起着关键作用,即对每个人的活动识别和认知监控。近年来,学术界和工业界对认知认证(也称为生物识别)越来越感兴趣。这些都是个人生物和生理特征的影响。在各种传统的生物识别和生理特征中,我们包括通过脑电图(EEG)进行的认知/脑波,由于其可靠、灵活和独特的特性,它是一种独特的性能指标,因此,未经授权的实体很难通过窃取或模仿来突破界限。传统的医疗领域的安全和隐私技术并不是同时提供安全性和能效的潜在候选技术。因此,研究并推荐了最先进的生物识别方法(例如机器学习、深度学习等)及其应用的新型解决方案。实验设置考虑了脑电数据分析和 BCI 的解释。该设置的主要目的是在测试 EEG 数据时减少电极的数量,从而降低随机森林(RF)分类器的计算能力。随机森林分类器的性能是基于 20 个受试者的 EEG 数据集进行评估的。我们发现,所选择的事件中,总共发生的事件的准确率达到了 96.1%。