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基于鞋子的运动传感器进行工作场所活动分类。

Workplace activity classification from shoe-based movement sensors.

作者信息

Fridolfsson Jonatan, Arvidsson Daniel, Doerks Frithjof, Kreidler Theresa J, Grau Stefan

机构信息

Center for Health and Performance, Department of Food and Nutrition, and Sport Science, University of Gothenburg, Box 300, 405 30 Gothenburg, Sweden.

Hochschule Koblenz, University of Applied Sciences RheinAhr Campus, Remagen, Germany.

出版信息

BMC Biomed Eng. 2020 Jun 24;2:8. doi: 10.1186/s42490-020-00042-4. eCollection 2020.

Abstract

BACKGROUND

High occupational physical activity is associated with lower health. Shoe-based movement sensors can provide an objective measurement of occupational physical activity in a lab setting but the performance of such methods in a free-living environment have not been investigated. The aim of the current study was to investigate the feasibility and accuracy of shoe sensor-based activity classification in an industrial work setting.

RESULTS

An initial calibration part was performed with 35 subjects who performed different workplace activities in a structured lab setting while the movement was measured by a shoe-sensor. Three different machine-learning models (random forest (RF), support vector machine and k-nearest neighbour) were trained to classify activities using the collected lab data. In a second validation part, 29 industry workers were followed at work while an observer noted their activities and the movement was captured with a shoe-based movement sensor. The performance of the trained classification models were validated using the free-living workplace data. The RF classifier consistently outperformed the other models with a substantial difference in in the free-living validation. The accuracy of the initial RF classifier was 83% in the lab setting and 43% in the free-living validation. After combining activities that was difficult to discriminate the accuracy increased to 96 and 71% in the lab and free-living setting respectively. In the free-living part, 99% of the collected samples either consisted of stationary activities or walking.

CONCLUSIONS

Walking and stationary activities can be classified with high accuracy from a shoe-based movement sensor in a free-living occupational setting. The distribution of activities at the workplace should be considered when validating activity classification models in a free-living setting.

摘要

背景

高职业体力活动与较低的健康水平相关。基于鞋子的运动传感器可在实验室环境中客观测量职业体力活动,但此类方法在自由生活环境中的性能尚未得到研究。本研究的目的是调查在工业工作环境中基于鞋子传感器的活动分类的可行性和准确性。

结果

对35名受试者进行了初始校准部分,他们在结构化实验室环境中进行不同的工作场所活动,同时通过鞋子传感器测量运动。使用收集到的实验室数据训练了三种不同的机器学习模型(随机森林(RF)、支持向量机和k近邻)来对活动进行分类。在第二个验证部分,对29名产业工人在工作时进行跟踪,同时一名观察者记录他们的活动,并使用基于鞋子的运动传感器捕捉运动。使用自由生活工作场所数据对训练好的分类模型的性能进行验证。RF分类器在自由生活验证中始终优于其他模型,存在显著差异。初始RF分类器在实验室环境中的准确率为83%,在自由生活验证中的准确率为43%。在合并难以区分的活动后,实验室和自由生活环境中的准确率分别提高到96%和71%。在自由生活部分,99%的收集样本要么是静止活动,要么是步行。

结论

在自由生活的职业环境中,基于鞋子的运动传感器可以高精度地对步行和静止活动进行分类。在自由生活环境中验证活动分类模型时,应考虑工作场所活动的分布情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a33e/7422556/051038fab9a8/42490_2020_42_Fig1_HTML.jpg

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