Abstract
Construction equipment operators are at risk of mental fatigue, which can lead to accidents and health problems. Real-time monitoring is necessary to prevent accidents and protect operators' well-being. Previous studies have used wearable sensors to classify mental fatigue in operators, but these methods require physical sensors to be worn, causing discomfort and irritation. Therefore, a new approach is needed that allows for contactless measurements of mental fatigue. In this study, a novel approach was proposed using machine learning and geometric measurement of facial features to classify mental fatigue states during equipment operations. Video recordings were obtained during a one-hour excavation operation, and four facial features (eye distance, eye aspect ratio, head motion, and mouth aspect ratio) were extracted for analysis. The temporal increase in NASA-TLX score was used as the ground truth for mental fatigue. The results showed that the support vector machine classifier outperformed, achieving a high accuracy of 91.10% and an F1 score between 85.29% and 95.61%. These findings suggest that mental fatigue in construction equipment operators can be non-invasively monitored using geometric measurements of facial features.
Original language | English |
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Title of host publication | Proceedings of the 13th International Conference on Construction in the 21st Century, CITC 2023 |
Editors | Syed M. Ahmed, Salman Azhar, Amelia D. Saul, Kelly L. Mahaffy, Rizwan U. Farooqui |
Publisher | East Carolina University |
Number of pages | 7 |
ISBN (Electronic) | 9781732441644 |
Publication status | Published - 11 May 2023 |
Event | 13th International Conference on Construction in the 21st Century, CITC 2023 - Arnhem, Netherlands Duration: 8 May 2023 → 11 May 2023 |
Conference
Conference | 13th International Conference on Construction in the 21st Century, CITC 2023 |
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Country/Territory | Netherlands |
City | Arnhem |
Period | 8/05/23 → 11/05/23 |
Keywords
- Construction Equipment Operators
- Construction Safety
- Facial Features
- Machine Learning
- Mental Fatigue