Department of Building and Real Estate, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong Special Administrative Region.
Department of Architecture and Built Environment, Northumbria University, Newcastle upon Tyne NE1 8ST, United Kingdom.
J Safety Res. 2024 Jun;89:234-250. doi: 10.1016/j.jsr.2024.01.013. Epub 2024 Feb 22.
Prolonged operation of construction equipment could lead to mental fatigue, which can increase the chances of human error-related accidents as well as operators' ill-health. The objective detection of operators' mental fatigue is crucial for reducing accident risk and ensuring operator health. Electroencephalography, photoplethysmography, electrodermal activity, and eye-tracking technology have been used to mitigate this issue. These technologies are invasive and wearable sensors that can cause irritation and discomfort. Geometric measurements of facial features can serve as a noninvasive alternative approach. Its application in detecting mental fatigue of construction equipment operators has not been reported in the literature. Although the application of facial features has been widespread in other domains, such as drivers and other occupation scenarios, their ecological validity for construction excavator operators remains a knowledge gap.
This study proposed employing geometric measurements of facial features to detect mental fatigue in construction equipment operators' facial features. In this study, seventeen operators performed excavation operations. Mental fatigue was labeled subjectively and objectively using NASA-TLX scores and EDA values. Based on geometric measurements, facial features (eyebrow, mouth outer, mouth corners, head motion, eye area, and face area) were extracted.
The results showed that there was significant difference in the measured metrics for high fatigue compared to low fatigue. Specifically, the most noteworthy variation was for the eye and face area metrics, with mean differences of 45.88% and 26.9%, respectively.
The findings showed that geometrical measurements of facial features are a useful, noninvasive approach for detecting the mental fatigue of construction equipment operators.
建筑设备长时间运行可能导致精神疲劳,这会增加人为失误相关事故以及操作人员健康问题的发生几率。客观检测操作人员的精神疲劳对于降低事故风险和确保操作人员健康至关重要。脑电图、光体积描记法、皮肤电活动和眼动追踪技术已被用于缓解这一问题。这些技术是有创的和可穿戴的传感器,可能会引起刺激和不适。面部特征的几何测量可以作为一种非侵入性的替代方法。它在检测建筑设备操作人员的精神疲劳方面在文献中尚未有报道。尽管面部特征的应用在其他领域(如驾驶员和其他职业场景)已经很广泛,但它们在建筑挖掘机操作人员中的生态有效性仍然是一个知识空白。
本研究提出使用面部特征的几何测量来检测建筑设备操作人员的面部特征中的精神疲劳。在这项研究中,十七名操作员进行了挖掘作业。使用 NASA-TLX 评分和 EDA 值对精神疲劳进行主观和客观标记。基于几何测量,提取了面部特征(眉毛、嘴外、嘴角、头部运动、眼睛区域和面部区域)。
结果表明,高疲劳和低疲劳时的测量指标存在显著差异。具体来说,最显著的变化是眼睛和面部区域的指标,平均值差异分别为 45.88%和 26.9%。
研究结果表明,面部特征的几何测量是一种有用的、非侵入性的检测建筑设备操作人员精神疲劳的方法。