基于模糊分析的高密度表面肌电图体能训练评价方法

Gratiela-Flavia Deak, R. Miron, C. Avram, A. Astilean
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引用次数: 2

摘要

随着体育运动的竞争越来越激烈,体能训练评估的重要性也在增加。本文提出了一种基于模糊分析技术的高密度表面肌电图(sEMG)肌肉活动图像比较新方法。与其他评估技术一起,该方法可用于监测运动员体能训练的演变。利用健康受试者右腿股内侧肌的肌电信号生成高密度肌电图。模糊逻辑评价方法有两个输入变量:肌肉激活面积和肌肉平均活动强度。结果显示在图形界面上,该方法作为模块化、分布式应用程序实现。所获得的结果强调了肌电图之间的重要差异,而没有指出潜在的生理机制。关于该方法在长时间训练周期中的适用性,未来的研究可以提供有关体育锻炼引起的肌肉活动变化的关键信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy based analysis method of high-density surface electromyography maps for physical training assessment
As sport becomes more competitive, the importance of physical training assessment increases. This paper proposes a new method based on fuzzy analysis techniques for comparing images of muscle activity attained by employing high-density surface electromyography (sEMG). Along with other evaluation techniques, the proposed method could be useful to monitor the evolution of sportsmen's physical training. High-density sEMG maps were generated from sEMG signals acquired from the vastus medialis muscle of the right leg of healthy subjects. The fuzzy logic assessment method has two input variables: the muscle activation area and the mean intensity of muscle activity. Results are displayed on a graphical interface and the method was implemented as a modular, distributed application. The obtained results highlight important differences among sEMG images without pointing out the underlying physiological mechanisms. Future investigations regarding the applicability of the proposed method for long training cycles could provide crucial information about the changes in muscle activity that occur with physical exercise.
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