Integrating Domain Knowledge with Deep Learning Model for Automated Worker Activity Classification in mobile work zone

IF 3.6 Q1 ENGINEERING, CIVIL Journal of Information Technology in Construction Pub Date : 2024-04-18 DOI:10.36680/j.itcon.2024.013
Chi Tian, Yunfeng Chen, Jiansong Zhang, Yiheng Feng
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Abstract

Accurate classification of workers’ activity is critical to ensure the safety and productivity of construction projects. Previous studies in this area are mostly focused on building construction environments. Worker activity identification and classification in mobile work zone operations is more challenging, due to more dynamic operating environments (e.g., more movements, weather, and light conditions) than building construction activities. In this study, we propose a deep learning (DL) based classification model to classify workers’ activities in mobile work zones. Sensor locations are optimized for various mobile work zone operations, which helps to collect the training data more effectively and save cost. Furthermore, different from existing models, we innovatively integrate transportation and construction domain knowledge to improve classification accuracy. Three mobile work zone operations (trash pickup, crack sealing, and pothole patching) are investigated in this study. Results show that although using all sensors has the highest performance, utilizing two sensors at optimized locations achieves similar accuracy. After integrating the domain knowledge, the accuracy of the DL model is improved. The DL model trained using two sensors integrated with domain knowledge outperforms the DL model trained using three sensors without integrating domain knowledge.
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将领域知识与深度学习模型相结合,实现移动工作区工人活动的自动分类
对工人活动进行准确分类对于确保建筑项目的安全和生产率至关重要。以往在这一领域的研究大多集中在建筑施工环境中。与建筑施工活动相比,移动工作区作业中的工人活动识别和分类更具挑战性,因为其作业环境更具动态性(如更多的移动、天气和光线条件)。在本研究中,我们提出了一种基于深度学习(DL)的分类模型,用于对移动工作区中的工人活动进行分类。我们针对各种移动工作区作业优化了传感器位置,这有助于更有效地收集训练数据并节约成本。此外,与现有模型不同的是,我们创新性地整合了交通和建筑领域的知识,以提高分类准确性。本研究调查了三种移动工作区作业(垃圾捡拾、裂缝密封和坑洞修补)。结果表明,虽然使用所有传感器的性能最高,但在优化位置使用两个传感器也能达到类似的准确性。在整合了领域知识后,DL 模型的准确性得到了提高。使用集成了领域知识的两个传感器训练的 DL 模型优于未集成领域知识的使用三个传感器训练的 DL 模型。
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来源期刊
CiteScore
6.90
自引率
8.60%
发文量
44
审稿时长
26 weeks
期刊最新文献
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