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基于可穿戴加速计的测量在评估工作姿势稳定性方面的能力。

Ability of Wearable Accelerometers-Based Measures to Assess the Stability of Working Postures.

机构信息

Department of Safety Engineering, Faculty of Engineering, China University of Geosciences, Wuhan 430074, China.

出版信息

Int J Environ Res Public Health. 2022 Apr 13;19(8):4695. doi: 10.3390/ijerph19084695.

Abstract

With the rapid development and widespread application of wearable inertial sensors in the field of human motion capture, the low-cost and non-invasive accelerometer (ACC) based measures have been widely used for working postural stability assessment. This study systematically investigated the abilities of ACC-based measures to assess the stability of working postures in terms of the ability to detect the effects of work-related factors and the ability to classify stable and unstable working postures. Thirty young males participated in this study and performed twenty-four load-holding tasks (six working postures × two standing surfaces × two holding loads), and forty-three ACC-based measures were derived from the ACC data obtained by using a 17 inertial sensors-based motion capture system. ANOVAs, t-tests and machine learning (ML) methods were adopted to study the factors’ effects detection ability and the postural stability classification ability. The results show that almost all forty-three ACC-based measures could (p < 0.05) detect the main effects of Working Posture and Load Carriage, and their interaction effects. However, most of them failed in (p ≥ 0.05) detecting Standing Surface’s main or interaction effects. Five measures could detect both main and interaction effects of all the three factors, which are recommended for working postural stability assessment. The performance in postural stability classification based on ML was also good, and the feature set exerted a greater influence on the classification accuracy than sensor configuration (i.e., sensor placement locations). The results show that the pelvis and lower legs are recommended locations overall, in which the pelvis is the first choice. The findings of this study have proved that wearable ACC-based measures could assess the stability of working postures, including the work-related factors’ effects detection ability and stable-unstable working postures classification ability. However, researchers should pay more attention to the measure selection, sensors placement, feature selection and extraction in practical applications.

摘要

随着可穿戴惯性传感器在人体运动捕捉领域的快速发展和广泛应用,基于低成本、非侵入式加速度计(ACC)的测量方法已广泛应用于工作姿势稳定性评估。本研究系统地研究了基于 ACC 的测量方法在检测与工作相关因素的影响和分类稳定与不稳定工作姿势的能力方面评估工作姿势稳定性的能力。30 名年轻男性参与了这项研究,完成了 24 项负荷保持任务(6 种工作姿势×2 种站立表面×2 种握持负荷),并从使用基于 17 个惯性传感器的运动捕捉系统获得的 ACC 数据中得出了 43 个基于 ACC 的测量值。采用 ANOVA、t 检验和机器学习(ML)方法研究了因素的影响检测能力和姿势稳定性分类能力。结果表明,几乎所有 43 个基于 ACC 的测量值都能(p<0.05)检测到工作姿势和负荷搬运的主要影响及其交互作用。然而,它们中的大多数(p≥0.05)未能检测到站立表面的主要或交互作用。有 5 个测量值可以检测到所有三个因素的主要和交互作用,推荐用于工作姿势稳定性评估。基于 ML 的姿势稳定性分类性能也很好,特征集对分类精度的影响大于传感器配置(即传感器放置位置)。结果表明,整体上骨盆和小腿是推荐的位置,其中骨盆是首选。本研究结果证明,可穿戴式基于 ACC 的测量方法可以评估工作姿势的稳定性,包括检测与工作相关因素的影响的能力和稳定-不稳定工作姿势的分类能力。然而,在实际应用中,研究人员应更加注意测量值的选择、传感器的放置、特征的选择和提取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fe23/9030489/b4fe96624b2b/ijerph-19-04695-g001.jpg

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