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表面肌电信号在肌肉疲劳研究中的应用综述

方博儒 仇大伟 白洋 刘静

计算机科学与探索2024,Vol.18Issue(9):2261-2275,15.
计算机科学与探索2024,Vol.18Issue(9):2261-2275,15.DOI:10.3778/j.issn.1673-9418.2312042

表面肌电信号在肌肉疲劳研究中的应用综述

Review of Application of Surface Electromyography Signals in Muscle Fatigue Research

方博儒 1仇大伟 1白洋 1刘静1

作者信息

  • 1. 山东中医药大学 智能与信息工程学院,济南 250355
  • 折叠

摘要

Abstract

Muscle fatigue is a physiological phenomenon that occurs when muscles are overused or continuously loaded during exercise or labor.Currently,analyzing the fatigue mechanism is still a complex and multi-layered re-search problem.In recent years,research methods focusing on surface electromyographic(sEMG)signals have gar-nered significant attention.The application of advanced signal processing techniques and machine learning algo-rithms has enhanced the precision of interpreting surface electromyographic data,deepening understanding of the mechanisms underlying muscle fatigue.This,in turn,provides crucial scientific support for improving athletic per-formance,preventing sports injuries,and enhancing rehabilitation treatments.This review of muscle fatigue re-search based on surface electromyographic signals covers various aspects.Firstly,the definition of muscle fatigue and current commonly used detection methods are explained,and the characteristics and application scope of vari-ous methods are pointed out.Secondly,the EMG characteristics that characterize muscle fatigue are introduced in detail from linear characteristics such as time domain,frequency domain,time-frequency domain and the use of non-linear parameters,and the advantages and limitations of these characteristics are also discussed.Thirdly,combining fatigue characteristics as input data,the classification algorithms commonly used for muscle fatigue are explored,and the applicable conditions,advantages and disadvantages of each algorithm are accurately summarized from the aspects of machine learning and deep learning algorithms.Finally,the challenges faced by muscle fatigue research at this stage are pointed out,and on the basis of proposing feasible solutions,future research directions are prospected.

关键词

肌肉疲劳/表面肌电/肌电特征/机器学习/深度学习算法

Key words

muscle fatigue/surface electromyographic/electromyographic features/machine learning/deep learn-ing algorithms

分类

信息技术与安全科学

引用本文复制引用

方博儒,仇大伟,白洋,刘静..表面肌电信号在肌肉疲劳研究中的应用综述[J].计算机科学与探索,2024,18(9):2261-2275,15.

基金项目

国家自然科学基金(82174528,82374620) (82174528,82374620)

山东省自然科学基金(ZR2020MH360). This work was supported by the National Natural Science Foundation of China(82174528,82374620),and the Natural Science Founda-tion of Shandong Province(ZR2020MH360). (ZR2020MH360)

计算机科学与探索

OA北大核心CSTPCD

1673-9418

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