Tezcan Ömür, Akcay Cemil, Sari Mahmut, Cavus Muhammed
Institute of Science, Istanbul University-Cerrahpaşa, 34320 Istanbul, Türkiye.
Department of Architecture, Istanbul University, 34116 Istanbul, Türkiye.
Sensors (Basel). 2025 Jun 26;25(13):3988. doi: 10.3390/s25133988.
The adoption of automation technologies across various industries has significantly increased in recent years. Despite the widespread integration of robotics in many sectors, the construction industry remains predominantly reliant on manual labour. This study is motivated by the need to accurately recognise construction worker activities in labour-intensive environments, leveraging deep learning (DL) techniques to enhance operational efficiency. The primary objective is to provide a decision-support framework that mitigates productivity losses and improves time and cost efficiency through the automated detection of human activities. To this end, sensor data were collected from eleven different body locations across five construction workers, encompassing six distinct construction-related activities. Three separate recognition experiments were conducted using (i) acceleration sensor data, (ii) position sensor data, and (iii) a combined dataset comprising both acceleration and position data. Comparative analyses of the recognition performances across these modalities were undertaken. The proposed DL architecture achieved high classification accuracy by incorporating long short-term memory (LSTM) and bidirectional long-term memory (BiLSTM) layers. Notably, the model yielded accuracy rates of 98.1% and 99.6% for the acceleration-only and combined datasets, respectively. These findings underscore the efficacy of DL approaches for real-time human activity recognition in construction settings and demonstrate the potential for improving workforce management and site productivity.
近年来,自动化技术在各个行业的应用显著增加。尽管机器人技术已广泛融入许多行业,但建筑行业仍然主要依赖体力劳动。本研究的动机是需要在劳动密集型环境中准确识别建筑工人的活动,利用深度学习(DL)技术提高运营效率。主要目标是提供一个决策支持框架,通过自动检测人类活动来减少生产力损失,提高时间和成本效率。为此,从五名建筑工人的十一个不同身体部位收集了传感器数据,涵盖六种不同的与建筑相关的活动。使用(i)加速度传感器数据、(ii)位置传感器数据和(iii)包含加速度和位置数据的组合数据集进行了三项单独识别实验。对这些模态的识别性能进行了比较分析。所提出的深度学习架构通过结合长短期记忆(LSTM)和双向长短期记忆(BiLSTM)层实现了高分类准确率。值得注意的是,该模型仅使用加速度数据集和组合数据集时的准确率分别为98.1%和99.6%。这些发现强调了深度学习方法在建筑环境中实时人类活动识别方面的有效性,并展示了改善劳动力管理和现场生产力的潜力。