运动识别中肌电信号的小波变换分析及实时学习方法

Liu Haihua, Chen Xinhao, Chen Yaguang
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引用次数: 7

摘要

讨论了小波变换在肌电信号分析和运动分类中的适用性。在之前的许多工作中,研究人员已经处理了稳定的肌电信号,并提出了适用于肌电信号的分析方法,如FFT和STFT。因此,以往的方法很难从肌电图中区分肌肉活动的不同阶段,即活动前、活动中、活动后阶段,以及运动从一个阶段到另一个阶段的过渡时期。本文利用Coiflet母小波将小波变换引入到我们的实时肌电假手控制器中,用于识别稳态和非稳态肌电运动。实验结果表明,该方法具有较好的识别手部运动的能力。然而,为了更精确地区分更多的运动,未来的研究工作是必要的。
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Wavelet transform analyzing and real-time learning method for myoelectric signal in motion discrimination
This paper discusses the applicability of the wavelet transform for analyzing EMG signal and discriminating motion classes. In previous many works, researchers have dealt with steady EMG and have proposed analyzing methods being suitable for the EMG, for example FFT and STFT. Therefore, it is difficult for the previous approaches to discriminate motions from the EMG in the different phases of muscle activity, i.e., pre-activity, in activity, post-activity phases, as well as the period of motion transition from one to another. In this paper, we introduce the wavelet transform using the Coiflet mother wavelet into our real-time EMG prosthetic hand controller for discriminating motions from steady and unsteady EMG. A preliminary experiment to discriminate three hand motions from four channels EMG in the initial pre-activity and in activity phase is carried out to show the effectiveness of the approach. However, future research effort is necessary to discriminate more motions much precisely.
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