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Towards a Data-Driven Approach to Injury Prevention in Construction

机译:朝着建筑伤害预防的数据驱动方法

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The research discussed in this paper is part of a project directed at increasing productivity in construction through mitigating the risk of Musculoskeletal Disorders (MSD). Postures and activities recognition through motion capturing techniques have shown promising potential for monitoring, assessing, and reducing such risks. Current motion sensing systems require a complex whole-body senor placement to capture and recognize construction activities, which limits the practicality and requires great computational effort. This challenge can be addressed through using a machine learning approach that recognizes specific activities from human motion data. The feasibility of reducing the computational effort through using fewer sensors rather than whole-body sensor placement was assessed through a case study. Five sensors were placed in targeted motion areas. The authors propose a novel automatic model configuration process to improve recognition performance under the selected sensor placement. It is based on designing optimal combination of data segmentation window size, feature sets, and classification algorithms for a specific set of injury-prone construction activities. The proposed approach achieved an average overall recognition accuracy of 0.81 and 0.74 for two sets of activities. The recognition model operation time is also reduced to less than 0.01 s under the proposed approach. In this initial case study, the model configuration process was developed iteratively based on the output from the test case. In subsequent efforts, the authors will develop a generic activity recognition model with predefined rules and criteria. This will further accelerate and automate the model configuration process.
机译:本文讨论的研究是通过减轻肌肉骨骼障碍(MSD)的风险来提高建设生产力的项目的一部分。通过运动捕获技术识别的姿势和活动表明了监测,评估和降低这些风险的有希望的潜力。目前的运动传感系统需要复杂的全身传感器放置,以捕获和识别施工活动,这限制了实用性,并且需要巨大的计算工作。可以通过使用从人类运动数据识别特定活动的机器学习方法来解决这一挑战。通过使用案例研究评估通过使用更少的传感器而不是全身传感器放置来减少计算工作的可行性。将五个传感器放在有针对性的运动区域。作者提出了一种新颖的自动模型配置过程,可以提高所选传感器放置下的识别性能。它是基于设计数据分割窗口大小,特征集和分类算法的最佳组合,了解特定的伤害易受造型活动。拟议的方法实现了两组活动的平均整体识别准确性为0.81和0.74。根据所提出的方法,识别模型操作时间也降低到小于0.01秒。在该初始案例研究中,模型配置过程基于从测试用例的输出迭代地开发。在随后的努力中,作者将开发具有预定义规则和标准的通用活动识别模型。这将进一步加速和自动化模型配置过程。

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