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ANN-based automated scaffold builder activity recognition through wearable EMG and IMU sensors

机译:基于安的自动脚手架构建器通过可佩带的EMG和IMU传感器识别

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摘要

Construction worker activity recognition is essential for worker performance and safety assessment. With the development of wearable sensing technologies, many researchers developed kinematic sensor-based worker activity recognition methods with considerable accuracy. However, the limitations of the previous studies remain at the challenge of using smartphones for practical implementation, fewer classified activities, and limited recognized motions and body parts. This study proposes an ANN-based automated construction worker activity recognition method that can recognize complex construction activities. The proposed methodology discusses data acquisition, data fusion, and artificial neural network (ANN) model development. A case study of scaffold builder activities was investigated to validate the proposed methodology's feasibility and evaluate its performance compared to other existing methods. The results show that the proposed model can recognize fifteen scaffold builder activities with an accuracy of 94% with 0.94 weighted precision, recall, and F1 Score.
机译:建筑工人活动认可对于工人表现和安全评估至关重要。随着可穿戴传感技术的发展,许多研究人员以相当准确性开发了基于运动传感器的工人活动识别方法。然而,前面研究的局限性仍然是使用智能手机进行实际实施的挑战,更少的分类活动,以及有限的公认动作和身体部位。本研究提出了一种基于安的自动化建筑工人活动识别方法,可以识别复杂的建筑活动。所提出的方法讨论了数据采集,数据融合和人工神经网络(ANN)模型开发。调查了对脚手架建设者活动的案例研究,验证了拟议的方法的可行性,与其他现有方法相比评估其性能。结果表明,该拟议的模型可以识别十五个脚手架生成器活动,精度为94%,重新调整0.94加权,召回和F1分数。

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