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Embedded Classification of the Perceived Fatigue State of Runners: Towards a Body Sensor Network for Assessing the Fatigue State during Running

机译:跑步者疲劳状态的嵌入式分类:走向用于评估跑步过程中疲劳状态的身体传感器网络

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This paper presents methods for collecting and analyzing biomechanical and physiological data from several body sensors during recreational runs in order to classify an athlete''s perceived fatigue state. Heart rate, heart rate variability, running speed, stride frequency and biomechanical data were recorded continuously from 431 runners during a free one-hour outdoor run. During the activity the sportsmen answered questions about their perceived fatigue state in 5 min intervals. The data were analyzed using specifically designed features computed for each of the 5 min intervals. The features were used to train different classifiers, which were able to distinguish two levels of the runner''s fatigue state with an accuracy of 88.3 % across multiple study participants. Feature selection evidenced that a heart rate variability feature and two biomechanical features were best suited for classification of the perceived fatigue level. Therefore, the classification system needs the information from various sensors on the human body. The resulting classifier was implemented on an embedded microcontroller to show that it would be feasible to integrate it directly into a body sensor network. Such a wearable classification system for fatigue can be used to support sportsmen, for example by changing their training plan or by adapting their equipment to the specific needs of a fatigued athlete.
机译:本文介绍了在娱乐性跑步过程中从多个人体传感器收集和分析生物力学和生理数据的方法,以对运动员的感知疲劳状态进行分类。在免费的一小时户外跑步中,连续记录了431名跑步者的心率,心率变异性,跑步速度,步幅频率和生物力学数据。在活动期间,运动员每隔5分钟回答一次有关他们感知到的疲劳状态的问题。使用针对5分钟间隔中的每一个计算出的专门设计的特征来分析数据。这些功能用于训练不同的分类器,这些分类器能够在多个研究参与者之间区分跑步者疲劳状态的两个级别,准确度为88.3%。特征选择表明,心率变异性特征和两个生物力学特征最适合用于感知疲劳水平的分类。因此,分类系统需要来自人体上各种传感器的信息。最终的分类器在嵌入式微控制器上实现,表明将其直接集成到人体传感器网络中是可行的。这种用于疲劳的可穿戴分类系统可用于支持运动员,例如通过更改其训练计划或使他们的设备适应疲劳运动员的特定需求。

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