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Hidden Markov Modelling And Recognition Of Euler-Based Motion Patterns For Automatically Detecting Risks Factors From The European Assembly Worksheet

机译:隐藏的马尔可夫建模和基于欧拉的运动模式的识别,以自动从欧洲议会工作表中检测风险因素

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To prevent work-related musculoskeletal disorders (WMSD) the ergonomists apply manual heuristic methods to determine when the worker is exposed to risk factors. However, these methods require an observer and the results can be subjective. This paper proposes a method to automatically evaluate the ergonomic risk factors when performing a set of postures from the ergonomic assessment worksheet (EAWS). Joint angle motion data have been recorded with a full-body motion capture system. These data modeled the motion patterns of four different risk factors, with the use of hidden Markov models (HMMs). Based on the EAWS, automated scores were assigned by the HMMs and were compared to the scores calculated manually. Because the method proposed here is intrusive and requires expensive equipment, kinematic data from a reduced set of two sensors was also evaluated.
机译:为了防止与工作有关的肌肉骨骼疾病(WMSD),人机工程学专家采用手动启发式方法来确定工人何时暴露于危险因素中。但是,这些方法需要观察者,并且结果可能是主观的。本文提出了一种从人体工程学评估工作表(EAWS)执行一组姿势时自动评估人体工程学危险因素的方法。关节角度运动数据已通过全身运动捕捉系统记录下来。这些数据使用隐马尔可夫模型(HMM)对四个不同风险因素的运动模式进行建模。基于EAWS,由HMM分配自动分数,并将其与手动计算的分数进行比较。由于此处提出的方法是侵入性的并且需要昂贵的设备,因此还评估了来自两个传感器的简化集合的运动学数据。

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