Schools of Mechatronics Systems Engineering and Engineering Science, Simon Fraser University, Surrey, BC, Canada.
Schools of Mechatronics Systems Engineering and Engineering Science, Simon Fraser University, Surrey, BC, Canada.
J Biomech. 2019 Jan 23;83:310-314. doi: 10.1016/j.jbiomech.2018.11.035. Epub 2018 Nov 29.
Resistance strength training is a proven method to improve bone density and muscle strength. A solution capable of automatically detecting the resistance force level exerted by a user from a wrist-based device can offer great convenience to the trainee and hence facilitate a better training outcome. In this short communication, we present our investigation aimed at exploring if force myographic (FMG) signals recorded at the wrist can predict the relative resistance levels that are associated with different weights. Specifically, we investigated the Spearman's correlations between the wrist FMG signal features and the dumbbell weights during a bicep curl exercise. 10 volunteers were recruited to perform a total of 100 curl actions, which included both the hammer and regular curls while the wrist FMG signals were being recorded. Three sets of weights ranging from 0.2 lb to 8 lb were used. For the hammer curls, a median correlation coefficient of 0.92 with an interquartile range (IQR) of 0.03 was obtained. For the regular curls, a 0.94 median correlation with a 0.02 IQR was obtained. We also used the data from the first 36 curls to generate a classifier model and applied it onto the rest of the data. An averaged validation accuracy of 88% was obtained. The results of this study showed the potential use of wrist FMG signal to detect different levels of the load during exercises; such information could potentially be used as feedback in fitness, sports, and rehabilitation activities.
抗阻力量训练是一种已被证实的方法,可以提高骨密度和肌肉力量。一种能够从腕部设备自动检测用户施加的阻力水平的解决方案,可以为训练者提供极大的便利,从而促进更好的训练效果。在本简短交流中,我们展示了我们的研究结果,旨在探讨腕部的力肌电图(FMG)信号是否可以预测与不同重量相关的相对阻力水平。具体来说,我们研究了在进行二头肌卷曲运动时,腕部 FMG 信号特征与哑铃重量之间的 Spearman 相关性。招募了 10 名志愿者进行总共 100 次卷曲动作,其中包括锤式和常规卷曲,同时记录腕部 FMG 信号。使用了三组从 0.2 磅到 8 磅的重量。对于锤式卷曲,中位数相关系数为 0.92,四分位距(IQR)为 0.03。对于常规卷曲,中位数相关系数为 0.94,四分位距为 0.02。我们还使用前 36 次卷曲的数据生成分类器模型,并将其应用于其余数据。平均验证准确率为 88%。这项研究的结果表明,腕部 FMG 信号有可能用于检测运动过程中不同水平的负荷;这种信息可以潜在地用于健身、运动和康复活动中的反馈。