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Sensing and Assessing Cognitive Workload Across Multiple Tasks

机译:感知和评估跨多个任务的认知工作量

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摘要

Workload assessment models are an important tool to develop an understanding of an individual's limitations. Finding times of excess workload can help prevent an individual from continuing work that may result in human performance issues, such as an increase in errors or reaction time. Currently workload assessments are created on a task by task basis, varying drastically depending on sensors and task goals. Developing independent models for specific tasks is time consuming and not practical when being applied to real-world situations. In this experiment we collected physiological signals including electroencephalogram (EEG), Heart Rate and Heart Rate Variability (HR/HRV) and Eye-Tracking. Subjects were asked to perform two independent tasks performed at two distinct levels of difficulty, an easy level and a difficult level. We then developed and compared performance of multiple models using deep and shallow learning techniques to determine the best methods to increase generalization of the models across tasks.
机译:工作量评估模型是了解个人局限性的重要工具。查找工作量过多的时间可以帮助防止个人继续工作,这可能会导致人员绩效问题,例如错误或反应时间的增加。当前,工作负载评估是基于任务逐个任务创建的,具体取决于传感器和任务目标。为特定任务开发独立模型非常耗时,并且在应用于实际情况时不切实际。在本实验中,我们收集了包括脑电图(EEG),心率和心率变异性(HR / HRV)和眼动追踪在内的生理信号。要求受试者执行两个独立的任务,分别以两个不同的难度级别(一个简单级别和一个困难级别)执行。然后,我们使用深度学习和浅层学习技术开发并比较了多个模型的性能,以确定增加跨任务模型通用性的最佳方法。

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