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Automatic Recognition of Workers' Motions in Highway Construction by Using Motion Sensors and Long Short-Term Memory Networks

机译:使用运动传感器和长短期内存网络自动识别公路施工中的工人运动

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摘要

Monitoring and understanding construction workers' behavior and working conditions are essential to achieve success in construction projects. The dynamic nature of construction sites has heightened the awareness of the need for improved monitoring of individual workers on sites. Although several studies indicated promising results in automated motion and activity recognition using wearable motion sensors, their technical and practical feasibility was not properly validated at actual job sites. Motion recognition models have to be evaluated in actual conditions because the motion sensor data collected in controlled conditions, and actual conditions can have different characteristics. This study proposes Long Short-Term Memory (LSTM) networks for recognizing construction workers' motions. The LSTM networks were validated through case studies in one bridge construction site and two road pavement sites. The LSTM networks indicated classification accuracies of 97.6%, 95.93%, and 97.36% from three different field test sites, respectively. Through the case studies, the technical and practical feasibility of the LSTM networks was properly investigated. With LSTM networks, individual workers' behavior and working conditions are expected to be automatically monitored and managed without excessive manual observation.
机译:监测和理解建设工人的行为和工作条件对于实现建筑项目成功至关重要。建筑工地的动态性质提高了对需要改善对网站上个别工人的监测的意识。虽然有几项研究表明使用可穿戴运动传感器的自动运动和活动识别的有希望的结果,但在实际的就业站点未正确验证它们的技术和实用可行性。必须在实际情况下在实际情况下评估运动识别模型,因为在受控条件下收集的运动传感器数据和实际条件可以具有不同的特性。本研究提出了长期内存(LSTM)网络,用于识别建筑工人的运动。通过一个桥梁施工现场和两条路面路面的案例研究验证了LSTM网络。 LSTM网络分别指出分别为97.6%,95.93%,97.36%的分类精度,分别从三种不同的场测试站点97.36%。通过案例研究,妥善调查了LSTM网络的技术和实际可行性。通过LSTM网络,预计个别工人的行为和工作条件将被自动监控和管理,而不会过度手动观察。

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