Shanti Mohammad Z, Cho Chung-Suk, de Soto Borja Garcia, Byon Young-Ji, Yeun Chan Yeob, Kim Tae Yeon
Department of Civil, Infrastructure and Environmental Engineering, Khalifa University of Science and Technology, Abu Dhabi 127788, United Arab Emirates.
Department of Civil, Infrastructure and Environmental Engineering, Khalifa University of Science and Technology, Abu Dhabi 127788, United Arab Emirates.
J Safety Res. 2022 Dec;83:364-370. doi: 10.1016/j.jsr.2022.09.011. Epub 2022 Oct 1.
The construction field is considered one of the most dangerous industries. Accidents and fatalities take place on a daily basis in construction projects. Globally, different levels of government have implemented strict rules and regulations to protect workers on job sites. However, despite the efforts to implement the rules and regulations, accidents occur frequently. Falling from heights is considered the most common cause of death in construction. This study developed a novel system integrating deep learning and drones to monitor workers in real-time when performing at-height activities.
Specifically, a pre-trained deep learning model was used to detect Personal Fall Arrest System components (e.g., safety harness, lifeline, and helmet). The drone was utilized to take images and videos from the construction site, and the data were relayed to the model to detect safety violations. The system was tested and validated in real construction sites and in a controlled lab environment to verify the model's effectiveness under different light and weather conditions.
The overall accuracy of the system was 90%. The model's precision and recall were 97.2 % and 90.2%, respectively. The average time taken to detect a violation was around 12 seconds.
Moreover, the Area Under Curve - Receiver Operating Characteristics chart showed that the trained model was very good and precise in detecting and differentiating the desired objects.
This fast, reliable, and economical system can aid in saving many lives if implemented and utilized properly in real construction sites.
建筑领域被认为是最危险的行业之一。建筑项目中每天都会发生事故和死亡事件。在全球范围内,不同级别的政府已实施严格的规章制度以保护施工现场的工人。然而,尽管努力执行这些规章制度,事故仍频繁发生。高处坠落被认为是建筑行业最常见的死亡原因。本研究开发了一种将深度学习与无人机相结合的新型系统,用于在工人进行高空作业时实时监测他们。
具体而言,使用一个预训练的深度学习模型来检测个人坠落防护系统组件(如安全带、救生索和头盔)。利用无人机从建筑工地拍摄图像和视频,并将数据传输给模型以检测安全违规行为。该系统在实际建筑工地和受控实验室环境中进行了测试和验证,以验证模型在不同光照和天气条件下的有效性。
该系统的总体准确率为90%。模型的精确率和召回率分别为97.2%和90.2%。检测违规行为的平均时间约为12秒。
此外,曲线下面积-接收器操作特征图表明,训练后的模型在检测和区分所需物体方面非常出色且精确。
如果在实际建筑工地中正确实施和使用,这个快速、可靠且经济的系统有助于挽救许多生命。