Fatigue Detection in Running with Inertial Measurement Unit and Machine Learning

Guodong Wang, Xiaokun Mao, Qiuxia Zhang, Aming Lu
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引用次数: 2

Abstract

To date athlete/patient fatigue has been assessed using expensive laboratory equipment. Inertial measurement unit (IMU) offer an opportunity to provide low-cost and non-intrusive fatigue assessment. The aim of this study was to determine if in combination or in isolation, IMUs positioned on the low extremities are capable of distinguishing between fatigued and un-fatigued running states and to predict the degree of fatigue. A running fatigue dataset based on multiple IMUs was constructed by recording inertial data during running to a state of fatigue. In addition to the inertial data from the IMUs, the perceived level of exertion was monitored for each participant as an indication of their physical fatigue level. Random forest (RF) and support vector machine (SVM) model validation was performed on the dataset to classify the running fatigue and fatigue levels. Classification effect of RF was better than SVM; the classification accuracy improved with the increase of sensors; the accuracy of tibial IMU data on RF accomplished 87.21%; the classification accuracy of combination of tibia and thigh IMUs was the highest at 91.10%. This study highlights the potential of inertial sensor to objectively estimate the level of fatigue during running by detecting minor deviations in lower extremity biomechanics.
基于惯性测量单元和机器学习的运行疲劳检测
迄今为止,使用昂贵的实验室设备对运动员/患者的疲劳进行了评估。惯性测量单元(IMU)提供了低成本和非侵入式疲劳评估的机会。本研究的目的是确定放置在下肢的imu是否能够区分疲劳和非疲劳运行状态,并预测疲劳程度。通过记录运行至疲劳状态时的惯性数据,构建了基于多imu的运行疲劳数据集。除了来自imu的惯性数据外,还监测了每个参与者的感知运动水平,作为他们身体疲劳水平的指示。对数据集进行随机森林(RF)和支持向量机(SVM)模型验证,对跑步疲劳和疲劳程度进行分类。RF的分类效果优于SVM;分类精度随传感器数量的增加而提高;RF上胫骨IMU数据准确率达到87.21%;胫股联合imu的分类准确率最高,为91.10%。这项研究强调了惯性传感器的潜力,通过检测下肢生物力学的微小偏差,客观地估计跑步过程中的疲劳程度。
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