基于多源传感器的运动疲劳监测与分析

Jiya Wang, Huan Meng
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引用次数: 0

摘要

运动员在日常训练或比赛过程中,可能会出现负荷超过身体承受能力的情况,使身体的生理功能暂时下降。它是运动疲劳的特征之一。如果不能及时得到足够的休息来恢复,持续的运动疲劳可能会对运动员造成永久性的伤害。为了解决这一问题,提高运动员日常训练的质量,本文建立了多源传感器疲劳监测系统。首先,通过安装在可穿戴设备中的多源传感器采集运动员的表面肌电信号。其次,利用固定窗口对采集到的表面肌电信号进行分割,并将其转换为Mel-frequency倒谱系数(mfccc);第三,利用MFCC特征学习高斯处理模型,用于监测未来肌肉疲劳状态。实验表明,该系统可以识别90%以上的肌肉疲劳状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sport Fatigue Monitoring and Analyzing Through Multi-Source Sensors
During the process of daily training or competition, athletes may suffer the situation that the load exceeds the body's bearing capacity, which makes the body's physiological function temporarily decline. It is one of the characteristics of sports fatigue. Continuous sports fatigue may incur permanent damage to the athletes if they cannot timely get enough rest to recover. In order to solve this issue and improve the quality of athlete's daily training, this paper establish a fatigue monitoring system by using multi-source sensors. First, the sEMG signals of athlete are collected by multi-source sensors which are installed in a wearable device. Second, the collected sEMG signals are segmented by using fixed window to be converted as Mel-frequency cepstral coefficients (MFCCs). Third, the MFCC features are used learn a Gaussian processing model which is used to monitor future muscle fatigue status. The experiments show that the proposed system can recognize more than 90% muscle fatigue states.
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