工作量
原始数据
人为因素与人体工程学
原始分数
心理学
毒物控制
应用心理学
计算机科学
工程类
医学
医疗急救
程序设计语言
操作系统
作者
David Eniyandunmo,MinJu Shin,Chaeyoung Lee,Alvee Anwar,Eun‐Sik Kim,Kyongwon Kim,Yong Hoon Kim,Chris Lee
出处
期刊:Ergonomics
[Taylor & Francis]
日期:2024-07-22
卷期号:: 1-17
标识
DOI:10.1080/00140139.2024.2379949
摘要
Recent studies have focused on accurately estimating mental workload using machine learning algorithms and extracting features from physiological measures. However, feature extraction leads to the loss of valuable information and often results in binary classifications that lack specificity in the identification of optimum mental workload. This study investigates the feasibility of using raw physiological data (EEG, facial EMG, ECG, EDA, pupillometry) combined with Functional Data Analysis (FDA) to estimate the mental workload of human drivers. A driving scenario with five tasks was employed, and subjective ratings were collected. Results demonstrate that the FDA applied nine different combinations of raw physiological signals achieving a maximum 90% accuracy, outperforming extracted features by 73%. This study shows that the mental workload of human drivers can be accurately estimated without utilising burdensome feature extraction. The approach proposed in this study offers promise for mental workload assessment in real-world applications.
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