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Physical Workload Tracking Using Human Activity Recognition with Wearable Devices

机译:使用可穿戴设备的人类活动识别来跟踪身体的工作负荷

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摘要

In this work, authors address workload computation combining human activity recognition and heart rate measurements to establish a scalable framework for health at work and fitness-related applications. The proposed architecture consists of two wearable sensors: one for motion, and another for heart rate. The system employs machine learning algorithms to determine the activity performed by a user, and takes a concept from ergonomics, the Frimat’s score, to compute the corresponding physical workload from measured heart rate values providing in addition a qualitative description of the workload. A random forest activity classifier is trained and validated with data from nine subjects, achieving an accuracy of 97.5%. Then, tests with 20 subjects show the reliability of the activity classifier, which keeps an accuracy up to 92% during real-time testing. Additionally, a single-subject twenty-day physical workload tracking case study evinces the system capabilities to detect body adaptation to a custom exercise routine. The proposed system enables remote and multi-user workload monitoring, which facilitates the job for experts in ergonomics and workplace health.
机译:在这项工作中,作者致力于结合人类活动识别和心率测量结果来进行工作量计算,从而为工作中的健康状况以及与健身相关的应用程序建立可扩展的框架。提议的体系结构由两个可穿戴传感器组成:一个用于运动,另一个用于心率。该系统采用机器学习算法来确定用户执行的活动,并从人体工程学原理(即Frimat分数)中提取概念,以从测得的心率值计算相应的身体工作量,从而提供工作量的定性描述。对随机森林活动分类器进行了训练,并使用来自9个受试者的数据进行了验证,其准确性为97.5%。然后,对20个主题的测试显示了活动分类器的可靠性,在实时测试过程中,该分类器的准确性高达92%。此外,单项二十天的物理工作量跟踪案例研究证明了系统具有检测身体对自定义锻炼程序的适应能力的能力。拟议的系统可以实现远程和多用户工作负载监视,从而为人体工程学和工作场所健康方面的专家提供了便利。

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