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Effective inertial sensor quantity and locations on a body for deep learning- based worker's motion recognition

机译:有效的惯性传感器数量和在人体上的位置,用于基于深度学习的工人的运动识别

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摘要

Construction tasks involve various activities composed of one or more body motions. As construction projects are labor-intensive and heavily rely on manual tasks, understanding the ever-changing behavior and activities is essential to manage construction workers effectively regarding their safety and productivity. While several research efforts have shown promising results in automated motion and activity recognition of the workers using motion sensors, there is still a lack of understanding about how motion sensors' numbers and their locations affect the performance of the recognition, which can contribute to improving the recognition performance and reducing the implementation cost. Moreover, further research is necessary to seek the motion recognition model that accurately identifies various motions using motion sensors attached to the workers' bodies. This study proposes a construction worker's motion recognition model using the Long Short-Term Memory (LSTM) network based on an evaluation of the effectiveness of motion sensors' numbers and locations to maximize motion recognition performance. The evaluation is conducted by generating different datasets containing motion sensor data collected from the sensors located on different body parts. Comparing the performance of five machine learning models trained using the datasets, the desired numbers and locations of motion sensors are identified. The quasi-experimental test with multiple subjects is conducted to validate the findings of the evaluation. Based on the findings, the LSTM network for recognizing construction workers' motions is developed. The LSTM network classifies various motions of the workers that can be utilized as primitive elements for monitoring the workers regarding their safety and productivity.
机译:施工任务涉及由一个或多个身体动作组成的各种活动。由于建筑项目是劳动密集型项目,并且高度依赖手动任务,因此了解不断变化的行为和活动对于有效管理建筑工人的安全和生产率至关重要。尽管多项研究成果已显示出使用运动传感器对工人进行自动运动和活动识别的可喜结果,但仍缺乏对运动传感器的数量及其位置如何影响识别性能的理解,这可能有助于改善运动识别能力。识别性能并降低实施成本。而且,需要进一步的研究来寻找运动识别模型,该模型使用附在工人身体上的运动传感器来准确识别各种运动。这项研究基于对运动传感器的数量和位置的有效性进行评估,以最大限度地提高运动识别性能,提出了一个使用长短期记忆(LSTM)网络的建筑工人的运动识别模型。通过生成不同的数据集进行评估,其中包含从位于不同身体部位的传感器收集的运动传感器数据。比较使用数据集训练的五个机器学习模型的性能,可以确定运动传感器的所需数量和位置。进行了多个受试者的准实验测试,以验证评估结果。基于这些发现,开发了用于识别建筑工人运动的LSTM网络。 LSTM网络对工人的各种运动进行了分类,这些运动可用作监视工人安全性和生产率的原始元素。

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