Detailed muscle state analysis method based on real-time wavelet analysis of surface myoelectric potential

Impact Pub Date : 2023-09-21 DOI:10.21820/23987073.2023.3.62
Hidetoshi Nagai
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Abstract

Myoelectric refers to the use of electricity generated by muscles and is harnessed in the development of electrically powered prostheses, which are controlled by electromyographic (EMG) signals created in the residual musculature. Assistant professor Hidetoshi Nagai, Department of Artificial Intelligence, Kyushu Institute of Technology, Japan, is interested in surface myoelectric signals and is working on a project to develop technology that can advance their use. Nagai will capture motor unit activities using surface electromyography, which is easy to measure during exercise, and use this as the basis for more detailed muscle activity analysis. The methods Nagai has developed require no special equipment, other than the ability to sample at frequencies of several tens of kHz, and only require a single channel, which indicates the potential for more sophisticated analysis when multiple channels of information are present. It is also a simple and lightweight process that can be executed in real time. Conventional analysis and evaluation of muscle activity cannot be performed from the perspective of motor unit activity but Nagai has built on the basic premise that given that muscle activity is the sum of motor unit activities, the analysis of muscle activity should be based on the analysis of motor unit activity. He will analyse the surface EMG signal from the viewpoint of its component waveform the motor unit waveform so that muscle activity analysis can be performed as it should be.
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基于表面肌电位实时小波分析的详细肌肉状态分析方法
肌电指的是利用肌肉产生的电,并在电力假肢的开发中得到利用,这是由残余肌肉组织中产生的肌电图(EMG)信号控制的。日本九州理工大学人工智能系助理教授永井英俊对表面肌电信号很感兴趣,他正在研究一个项目,开发可以促进其应用的技术。Nagai将使用表面肌电图捕捉运动单元活动,这在运动过程中很容易测量,并将其作为更详细的肌肉活动分析的基础。Nagai开发的方法不需要特殊的设备,除了能够在几十千赫的频率上采样,而且只需要一个通道,这表明当存在多个通道的信息时,有可能进行更复杂的分析。它也是一个简单且轻量级的过程,可以实时执行。传统的对肌肉活动的分析和评价不能从运动单元活动的角度出发,但Nagai建立在一个基本前提上,即肌肉活动是运动单元活动的总和,因此对肌肉活动的分析应该基于对运动单元活动的分析。他将从表面肌电信号的组成波形即运动单元波形的角度来分析表面肌电信号,这样肌肉活动分析就可以按预期进行了。
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