Burnout: A Wearable System for Unobtrusive Skeletal Muscle Fatigue Estimation

Frank Mokaya, R. Lucas, H. Noh, Pei Zhang
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引用次数: 41

Abstract

Skeletal muscles are pivotal for sports and exercise. However, overexertion of skeletal muscles causes muscle fatigue which can lead to injury. Consequently, understanding skeletal muscle fatigue is important for injury prevention. Current ways to estimate exhaustion revolve around self-estimation or inference from such sensors as force sensors, electromyography e.t.c. These methods are not always reliable, especially during isotonic exercises. Toward this end, we present Burnout - a wearable system for quantifying skeletal muscle fatigue in an exercise setting. Burnout uses accelerometers to sense skeletal muscle vibrations. From these vibrations, Burnout obtains a region based feature (R- Feature), in the case of this work, the region mean power frequency (R-MPF) gradient to correlate the sensed vibrations to a known ground truth measure of skeletal muscle fatigue, i.e., Dimitrov's spectral fatigue index gradient. We evaluate Burnout on the biceps and quadriceps of 5 healthy participants through four different exercises, collected in a real world environment. Our results show that by using this R-MPF feature on our real world data set, Burnout is able to reduce the error of estimating the ground truth fatigue index gradient by up to 50% on average compared to using the standard MPF feature.
倦怠:一个可穿戴系统的不显眼的骨骼肌疲劳估计
骨骼肌是运动和锻炼的关键。然而,骨骼肌过度运动会导致肌肉疲劳,从而导致受伤。因此,了解骨骼肌疲劳对损伤预防很重要。目前估计疲劳的方法主要是自我估计或从力传感器、肌电图等传感器推断,这些方法并不总是可靠的,特别是在等张力运动中。为此,我们提出了一种可穿戴系统,用于在运动环境中量化骨骼肌疲劳。Burnout使用加速度计来感知骨骼肌的振动。从这些振动中,Burnout获得一个基于区域的特征(R- feature),在这项工作的情况下,区域平均工频(R- mpf)梯度将感知到的振动与骨骼肌疲劳的已知地面真值测量相关联,即Dimitrov的频谱疲劳指数梯度。我们通过在真实环境中收集的四种不同的运动来评估5名健康参与者的肱二头肌和股四头肌的倦怠。我们的研究结果表明,通过在我们的真实世界数据集上使用这个R-MPF特征,与使用标准MPF特征相比,Burnout能够将估计地面真实疲劳指数梯度的误差平均减少高达50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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