Assessment of mental workload across cognitive tasks using a passive brain-computer interface based on mean negative theta-band amplitudes

Guillermo I. Gallegos Ayala, David Haslacher, L. R. Krol, S. Soekadar, T. Zander
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Abstract

Brain-computer interfaces (BCI) can provide real-time and continuous assessments of mental workload in different scenarios, which can subsequently be used to optimize human-computer interaction. However, assessment of mental workload is complicated by the task-dependent nature of the underlying neural signals. Thus, classifiers trained on data from one task do not generalize well to other tasks. Previous attempts at classifying mental workload across different cognitive tasks have therefore only been partially successful. Here we introduce a novel algorithm to extract frontal theta oscillations from electroencephalographic (EEG) recordings of brain activity and show that it can be used to detect mental workload across different cognitive tasks. We use a published data set that investigated subject dependent task transfer, based on Filter Bank Common Spatial Patterns. After testing, our approach enables a binary classification of mental workload with performances of 92.00 and 92.35%, respectively for either low or high workload vs. an initial no workload condition, with significantly better results than those of the previous approach. It, nevertheless, does not perform beyond chance level when comparing high vs. low workload conditions. Also, when an independent component analysis was done first with the data (and before any additional preprocessing procedure), even though we achieved more stable classification results above chance level across all tasks, it did not perform better than the previous approach. These mixed results illustrate that while the proposed algorithm cannot replace previous general-purpose classification methods, it may outperform state-of-the-art algorithms in specific (workload) comparisons.
利用基于平均负θ波段振幅的被动脑机接口评估认知任务中的心理工作量
脑机接口(BCI)可对不同场景下的脑力劳动负荷进行实时、连续的评估,随后可用于优化人机交互。然而,由于基础神经信号的任务依赖性,心理工作量的评估变得非常复杂。因此,根据一项任务的数据训练的分类器不能很好地推广到其他任务。因此,以前对不同认知任务的心理工作量进行分类的尝试只取得了部分成功。在这里,我们介绍了一种从脑电图(EEG)记录的大脑活动中提取额叶θ振荡的新型算法,并证明该算法可用于检测不同认知任务中的心理工作量。我们使用了一个已发表的数据集,该数据集基于滤波器库共同空间模式,调查了受试者的任务转移情况。经过测试,我们的方法可以对心理工作量进行二元分类,在低工作量或高工作量与初始无工作量条件下的表现分别为 92.00% 和 92.35%,明显优于之前的方法。不过,在比较高和低工作负荷条件时,该方法的表现并没有超出偶然水平。此外,当首先对数据进行独立成分分析时(在进行任何额外的预处理程序之前),尽管我们在所有任务中都取得了高于偶然水平的更稳定的分类结果,但其表现并没有优于前一种方法。这些喜忧参半的结果说明,虽然所提出的算法不能取代以前的通用分类方法,但在特定(工作量)比较中,它可能会优于最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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