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Cognitive workload classification using cardiovascular measures and dynamic features

机译:使用心血管测量和动态特征进行认知工作量分类

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Monitoring cognitive workload has the potential to improve performance and fidelity in human decision making through a real-time monitoring model. Multiple studies have shown a successful binary classification of high and low workload using various methods and often focused on multiple physiological signals. A more detailed detection of cognitive workload is needed for a meaningful and reliable workload monitoring tool. This study focuses on trinary workload classification of parameters extracted from the cardiovascular system. The experiment was validated with the use of a database containing 96 participants performing tasks designed to induce slight variations in cognitive workload. Two distinct supervised learning classifying methods were used and their likelihood score used for the classification schemes of (1) each heartbeat and (2) each task screen. The results show that the support vector classifier outperforms the random forest with the average misclassification rate of 20.44% using the whole screen classification scheme instead of individual heartbeat classification.
机译:监视认知工作量具有通过实时监视模型提高人类决策的性能和保真度的潜力。多项研究表明,使用各种方法可以成功地对高负荷和低负荷进行二元分类,并且通常将重点放在多种生理信号上。对于有意义且可靠的工作负载监视工具,需要更详细地检测认知工作负载。这项研究的重点是从心血管系统中提取的参数的三项工作量分类。通过使用包含96个参与者的数据库对实验进行了验证,该参与者执行旨在引起认知工作量稍有变化的任务。使用了两种不同的监督学习分类方法,并且它们的似然度分数用于(1)每个心跳和(2)每个任务屏幕的分类方案。结果表明,使用全屏分类方案而不是单个心跳分类方案,支持向量分类器的性能优于随机森林,平均错误分类率为20.44%。

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