基于眼动追踪的认知工作量水平估计:一种机器学习方法

Vasileios Skaramagkas, Emmanouil Ktistakis, D. Manousos, N. Tachos, E. Kazantzaki, E. Tripoliti, D. Fotiadis, M. Tsiknakis
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引用次数: 3

摘要

认知负荷是相关心理学、工效学和理解工作表现的人为因素的一个重要特征。然而,它仍然很难描述,因此,测量它。由于没有单一的传感器可以充分了解工作量,因此已经进行了广泛的研究,以提供强大的生物标志物。在过去的几年里,机器学习技术已经被用来预测基于各种特征的认知工作量。凝视提取的特征,如瞳孔大小、眨眼活动和跳眼测量,已被用作预测指标。本研究的目的是使用凝视提取的特征作为认知工作量的唯一预测因子。研究了两个因素:时间压力和多任务处理。本研究结果表明,眼睛和凝视特征是认知工作量水平的有用指标,准确率高达88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive workload level estimation based on eye tracking: A machine learning approach
Cognitive workload is a critical feature in related psychology, ergonomics, and human factors for understanding performance. However, it still is difficult to describe and thus, to measure it. Since there is no single sensor that can give a full understanding of workload, extended research has been conducted in order to present robust biomarkers. During the last years, machine learning techniques have been used to predict cognitive workload based on various features. Gaze extracted features, such as pupil size, blink activity and saccadic measures, have been used as predictors. The aim of this study is to use gaze extracted features as the only predictors of cognitive workload. Two factors were investigated: time pressure and multi tasking. The findings of this study showed that eye and gaze features are useful indicators of cognitive workload levels, reaching up to 88% accuracy.
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