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EEG-based discrimination of different cognitive workload levels from mental arithmetic

机译:基于脑电图的脑力算术对不同认知工作量水平的区分

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Cognitive workload, which is the level of mental effort required for a cognitive task, can be assessed by monitoring the changes in neurophysiological measures such as electroencephalogram (EEG). This study investigates the performance of an EEG-based Brain-Computer Interface (BCI) to discriminate different difficulty levels in performing a mental arithmetic task. EEG data from 10 subjects were collected while performing mental addition with 3 difficulty levels (easy, medium and hard). EEG features were then extracted using band power and Common Spatial Pattern features and subsequently features were selected using Fisher Ratio to train a Linear Discriminant Classifier. The results from 10-fold cross-validation yielded averaged accuracy of 90% for 2 classes (easy versus hard tasks) and 66% for 3 classes (easy versus medium versus hard tasks). Hence the results showed the feasibility of using EEG-based BCI to measure cognitive workload in performing mental arithmetic.
机译:认知工作量是一项认知任务所需的精神努力水平,可以通过监视神经生理学指标(如脑电图(EEG))的变化来评估。这项研究调查了基于脑电图的脑机接口(BCI)的性能,以区分执行心理算术任务的不同难度级别。收集来自10位受试者的EEG数据,同时进行3种难度级别(容易,中等和困难)的心理加法。然后使用带功率和“公共空间模式”特征提取EEG特征,然后使用Fisher比率选择特征以训练线性判别分类器。 10倍交叉验证的结果得出2类(简单任务与艰巨任务)的平均准确度为90%,而3类(简单任务与中等任务与硬任务的相似)为66%。因此,结果表明了使用基于EEG的BCI来测量执行心理算术的认知工作量的可行性。

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