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Using EEG and NIRS for brain-computer interface and cognitive performance measures: a pilot study

机译:使用EEG和NIRS进行脑机接口和认知表现测量:一项初步研究

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This study addresses two important problem statements, namely, selection of training datasets for online Brain-Computer Interface (BCI) classifier training and determination of participant concentration levels during an experiment. The work also attempted a pilot study to integrate electroencephalograms (EEGs) and Near Infra Red Spectroscopy (NIRS) for possible applications such as the BCI and for measuring cognitive levels. Two experiments are presented, the first being a mathematical task interleaved with rest states using NIRS only. In the next, integration of the EEG-NIRS with reference to P300-based BCI systems as well as the experimental conditions designed to elicit the concentration levels (denoted as ON and OFF states here) during the paradigm, are presented. The first experiment indicates that NIRS can be used to differentiate a concentrated (i.e., mental activity) level from the rest. However, the second experiment reveals statistically significant results using the EEG only. We present details about the equipment used, the participants as well as the signal processing and machine learning techniques implemented to analyse the EEG and NIRS data. After discussing the results, we conclude by describing the research scope as well as the possible pitfalls in this work from a NIRS viewpoint, which presents an opportunity for future research exploration for BCI and cognitive performance measures.
机译:这项研究解决了两个重要的问题陈述,即用于在线脑计算机接口(BCI)分类器训练的训练数据集的选择以及实验期间参与者浓度水平的确定。这项工作还尝试了将脑电图(EEG)和近红外光谱(NIRS)集成在一起以进行可能的应用(例如BCI)和测量认知水平的试点研究。提出了两个实验,第一个实验是仅使用NIRS与静止状态交错的数学任务。接下来,介绍了EEG-NIRS与基于P300的BCI系统的集成,以及旨在在范式中引发浓度水平(此处表示为ON和OFF状态)的实验条件。第一个实验表明,NIRS可用于区分其他人的集中(即精神活动)水平。但是,第二个实验仅使用EEG揭示了统计学上显着的结果。我们将介绍有关所用设备,参与者以及为分析EEG和NIRS数据而实施的信号处理和机器学习技术的详细信息。在讨论了结果之后,我们从NIRS的角度描述了研究范围以及这项工作可能遇到的陷阱,从而为BCI和认知表现指标的未来研究探索提供了机会。

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