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Distinguishing mental attention states of humans via an EEG-based passive BCI using machine learning methods

机译:使用机器学习方法通​​过基于EEG的被动BCI来区分人类的精神注意力状态

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Recent advances in technology bring about novel operating environments where the role of human participants is reduced to passive observation. While opening new frontiers in productivity and lifestyle, such environments also create hazards related to the inability of human individuals to maintain focus and concentration during passive control tasks. A passive brain-computer interface for monitoring mental attention states of human individuals (focused, unfocused, and drowsy) by using electroencephalographic (EEG) brain activity imaging and machine learning data analysis methods is developed in this work. An EEG data processing pipeline and a machine learning mental state detection algorithm using the Support Vector Machine (SVM) method were designed and compared with k-Nearest Neighbor and Adaptive Neuro-Fuzzy System methods. To collect 25 h of EEG data from 5 participants, a classic EEG headset was modified. We found that the changes in EEG activity in frontal and parietal lobes occurring at 1-5 Hz and 10-15 Hz frequency bands were associated with the changes in individuals' attention state. We demonstrated the ability to use such changes to identify individuals' attention state with 96.70% (best) and 91.72% (avg.) accuracy in experimental settings using a version of continuous performance task with SVM-based mental state detector. The findings help guide the design of future systems for monitoring the state of human individuals by means of EEG brain activity data. (C) 2019 Elsevier Ltd. All rights reserved.
机译:技术的最新进展带来了人类参与者的作用降低到被动观察的新颖操作环境。在开辟生产力和生活方式中的新边界的同时,这种环境也会产生与人类无能为力相关的危险,以保持被动控制任务期间的焦点和集中。通过使用脑电图(EEG)脑活动成像和机器学习数据分析方法,用于监测人体(聚焦,未聚焦和昏昏欲睡)的心理脑电脑界面(重点,未聚焦和昏昏欲睡)。在这项工作中开发了机器学习数据分析方法。设计了使用支持向量机(SVM)方法的EEG数据处理流水线和机器学习精神状态检测算法,并与K最近邻和自适应神经模糊系统方法进行比较。要从5名参与者收集25小时,经典EEG耳机被修改。我们发现,在1-5Hz和10-15赫兹频段为1-5Hz和10-15赫兹频段发生的前部和垂体裂片中的脑电图活动的变化与个人注意力状态的变化有关。我们展示了使用此类变更的能力,以确定具有96.70%(最佳)和91.72%(AVG。)精度的个人的关注状态,使用与基于SVM的精神状态检测器的连续性能任务的版本进行实验设置。该研究结果有助于指导通过EEG脑活动数据监测人类状态的未来系统的设计。 (c)2019 Elsevier Ltd.保留所有权利。

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