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An analysis of eye-tracking and electroencephalography data for cognitive load measurement during arithmetic tasks

机译:用于算术任务中认知负荷测量的眼动和脑电图数据分析

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The paper presents multiple features analysis of cognitive load case study. The set of features applied in the research covers response times, committed errors, EEG spectral data as well as pupillometry and eye-tracking (ET) data including fixations, saccades and blinks. The experiment took the form of eleven intervals: six containing arithmetic tasks and five breaks. Two correlation analyses were performed. The first one aimed in finding correlation between cognitive measure, EEG and ET features in each interval. The second analysis was performed to find correlation of cognitive workload and EEG and ET features. The results proved that the best cognitive workload measures are selected eye movement and pupil dilation measures.
机译:本文提出了认知负荷案例研究的多特征分析。研究中应用的一组功能涵盖了响应时间,承诺错误,EEG光谱数据以及瞳孔测定和眼动(ET)数据,包括注视,扫视和眨眼。实验采用11个间隔的形式:6个包含算术任务和5个中断。进行了两个相关性分析。第一个旨在发现每个区间的认知测度,EEG和ET特征之间的相关性。进行第二次分析以发现认知负荷与EEG和ET特征之间的相关性。结果证明,最佳的认知工作量测度是眼球运动和瞳孔散大度测度。

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