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Automatic classification of eye activity for cognitive load measurement with emotion interference

机译:眼活动的自动分类,用于测量具有情感干扰的认知负荷

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摘要

Measuring cognitive load changes can contribute to better treatment of patients, can help design effective strategies to reduce medical errors among clinicians and can facilitate user evaluation of health care information systems. This paper proposes an eye-based automatic cognitive load measurement (CLM) system toward realizing these prospects. Three types of eye activity are investigated: pupillary response, blink and eye movement (fixation and saccade). Eye activity features are investigated in the presence of emotion interference, which is a source of undesirable variability, to determine the susceptibility of CLM systems to other factors. Results from an experiment combining arithmetic-based tasks and affective image stimuli demonstrate that arousal effects are dominated by cognitive load during task execution. To minimize the arousal effect on CLM, the choice of segments for eye-based features is examined. We then propose a feature set and classify three levels of cognitive load. The performance of cognitive load level prediction was found to be close to that of a reaction time measure, showing the feasibility of eye activity features for near-real time CLM.
机译:测量认知负荷变化可以有助于更好地治疗患者,可以帮助设计有效的策略来减少临床医生中的医疗错误,并可以帮助用户评估医疗保健信息系统。为实现这些前景,本文提出了一种基于眼睛的自动认知负荷测量(CLM)系统。研究了三种眼睛活动:瞳孔反应,眨眼和眼睛运动(注视和扫视)。在存在情绪干扰的情况下研究眼睛活动特征,情绪干扰是造成不良变化的原因,以确定CLM系统对其他因素的敏感性。一项基于算术的任务和情感图像刺激相结合的实验结果表明,任务执行过程中的认知负荷主导着唤醒效果。为了最大程度地降低对CLM的唤醒效果,应检查基于眼睛的特征的分段选择。然后,我们提出一个功能集并对认知负荷的三个级别进行分类。发现认知负荷水平预测的性能接近于反应时间量度,表明眼睛活动特征用于近实时CLM的可行性。

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