The Risk Classification of Ergonomic Musculoskeletal Disorders in Work-related Repetitive Manual Handling Operations with Deep Learning Approaches

Yu-Wei Chan, Tzu-Hsuan Huang, Y. Tsan, Wei-Chen Chan, Chih-Hung Chang, Yin-Te Tsai
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引用次数: 1

Abstract

The injury resulted from the repetitive and load-bearing works is the most frequent work-related musculoskeletal disorders (WMSD) or cumulative trauma disorders (CTD). It comes from the overload of repetitive load-bearing actions, which resulting in fatigue, inflammation, even injuries of musculoskeletal system. According to the annular report of Labor Insurance Bureau in Taiwan, WMSD is up to 85-88% payment. Thus, the aim of this study is to evaluate the risk of WMSD during work by using the simple, quick, and correct methods by using the deep learning algorithms. In the proposed research method, after collection the videos of hand repeated movements, the ergonomic injuries are evaluated by using the 2D human pose estimation method, which is based on the Key Indicator Method - Manual Handling Operations (KIM-MHO). Then, a model of predefined classifications through deep learning approaches for manual handling operating tasks is built. The analysis results show that the classification accuracy is more than 80%, compared with the doctor's judgment. The goal of this study is to get the accuracy up to 90%, so as to achieve fast and accurate assistance for deciding the risk of ergonomics, and immediately give proper feedback.
基于深度学习方法的重复性人工操作中人体工学肌肉骨骼疾病的风险分类
重复性和负重工作造成的损伤是最常见的与工作相关的肌肉骨骼疾病(WMSD)或累积性创伤疾病(CTD)。它来自于重复的负重动作过载,导致疲劳、炎症,甚至肌肉骨骼系统损伤。根据台湾劳动保险局的年度报告,WMSD的赔付率高达85-88%。因此,本研究的目的是利用深度学习算法,采用简单、快速、正确的方法来评估工作过程中WMSD的风险。在本文提出的研究方法中,在收集手部重复动作视频后,采用基于关键指标法-手工搬运操作(KIM-MHO)的二维人体姿态估计方法对人体工效损伤进行评估。然后,通过深度学习方法建立了人工处理操作任务的预定义分类模型。分析结果表明,与医生的判断相比,分类准确率在80%以上。本研究的目标是使准确率达到90%,从而快速准确地辅助判定人体工程学风险,并立即给予适当的反馈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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