心率和瞳孔扩张是神经认知负荷分类的可靠指标

Usman Alhaji Abdurrahman, Lirong Zheng, Abdulrauf Garba Sharifai, I. D. Muraina
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引用次数: 0

摘要

由于它的容量有限,工作记忆可能会因为与学习没有直接关系的额外活动而超载。根据认知负荷理论,工作记忆超载会降低任务绩效。因此,监测个体当前的精神负荷对于避免处理认知超载的影响至关重要。心率和瞳孔扩张是两个重要的指标,可以适当地以低成本测量。在本研究中,这两种信号被用来对参与者的认知负荷水平进行分类。98名参与者自愿参加了研究,我们使用实验过程中产生的心理生理学测量值和虚拟驾驶系统获得的性能特征来评估他们的认知负荷。驾驶系统持续监测受试者的驾驶性能参数,包括心率和瞳孔扩张。该实验涉及虚拟环境中的驾驶任务,并应用了一些流行的机器学习算法进行用户分类。对信号的数据分析表明,心率和瞳孔扩张可以适当地用于确定个体的认知负荷。此外,利用多模态数据融合,可以提高认知负荷分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart Rate and Pupil Dilation As Reliable Measures of Neuro-Cognitive Load Classification
Due to its limited capacity, working memory can become overloaded with extra activities that do not directly contribute to learning. According to cognitive load theory, working memory overload reduces task performance. Thus, monitoring the individual's current mental workload is essential to avoid dealing with the effects of cognitive overload. Heart rate and pupil dilation are two important metrics that can appropriately be measured at a low cost. These two signals have been generated to classify the participants' cognitive load levels in this study. Ninety-eight (98) participants volunteered in the studies, and we assessed their cognitive workloads using psychophysiological measurements generated during the experiment and performance characteristics obtained from the virtual driving system. The driving system continuously monitored the subjects' driving performance parameters, including heart rate and pupil dilation. The experiment involved driving tasks in a virtual environment, and some popular machine learning algorithms have been applied for user classification. Data analysis of the signals reveals that the heart rate and pupil dilation could appropriately be used to determine the cognitive workload of the individuals. Also, using multimodal data fusion, the accuracy of the cognitive load classification can be improved.
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