使用3D运动捕捉数据的人工材料搬运操作疲劳运动分析的机器学习技术

Geovanni Hernandez, Damian Valles, David C. Wierschem, Rachel M. Koldenhoven, G. Koutitas, F. A. M. Mediavilla, S. Aslan, Jesús A. Jiménez
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引用次数: 7

摘要

工业革命4.0被定义为信息、通信技术(ICT)和工厂工人的互联。物料搬运行业的工人经常受到重复性运动的影响,导致疲惫(或疲劳),从而导致与工作相关的肌肉骨骼疾病(WMSDs)。最常见的重复性动作是举、拉、推、搬运和负重行走。在本研究中,当受试者执行其中一个重复动作(即举起)时,使用红外摄像机以100Hz的速率收集数据作为带时间戳的运动数据。数据是39个反射标记的xyz坐标的组合。这导致每帧捕获117个数据点。由于这些运动在一段时间内发生,因此这些数据被用作时间序列机器学习(ML)模型的输入,例如循环神经网络(RNN)。利用该模型,本文评估了基于RNN的机器学习技术,以评估重复运动引起的疲劳因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Techniques for Motion Analysis of Fatigue from Manual Material Handling Operations Using 3D Motion Capture Data
Industrial Revolution 4.0 is defined as the interconnection of Information, Communications Technologies (ICT), and factory floor workers. Workers in the material handling industry are often subject to repetitive motions that cause exhaustion (or fatigue) which leads to work-related musculoskeletal disorders (WMSDs). The most common repetitive motions are lifting, pulling, pushing, carrying and walking with load. In this research data is collected as time-stamped motion data using infrared cameras at a rate of 100Hz while a subject performs one of the repetitive motions (i.e. lifting). The data is a combination of xyz-coordinates of 39 reflective markers. This results in 117 data points for each frame captured. Since these motions occur over time for a duration of time, this data is used as input to a time-series machine learning (ML) model such as Recurrent Neural Network (RNN). Using this model, this paper evaluates machine learning techniques, based on RNN, to evaluate the fatigue factor caused by repetitive motions.
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