Surface EMG signal analysis based on the empirical mode decomposition for human-robot interaction

A. F. Ruiz-Olaya, A. López-Delis
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引用次数: 5

Abstract

Surface Electromyography (SEMG) is the electrical manifestation of the neuromuscular activation associated with a contracting muscle. SEMG directly reflects the human motion intention; thus, they can be used as input information for human-robot interaction. Taking into account that SEMG signals are complex physiological signals, being nonlinear, non-stationary and non-periodic, myoelectric classification methods must take into account such characteristics to be more effective. Recently, a novel technique for analysis of nonlinear and non-stationary signals was successfully applied to several kinds of investigations including seismological and biological signals. This technique, named Hilbert-Huang Transform (HHT) is formed by two complementary tools, which are called empirical mode decomposition (EMD) and Hilbert spectrum (HS). This work proposes a novel EMD-based myoelectric pattern recognition technique to be applied in human-robot interaction. The process of feature extraction is performed by two steps, firstly, the EMD decomposes the input SEMG signal into a set of functions designated as Intrinsic Mode Function (IMF); and secondly, it is calculated for each resulting IMF the RMS (Root Mean Square) and the coefficients of a four-order autoregressive model. The process of classification based on a linear classifier (Linear Discriminant Analysis). Using a database of EMG signals, the proposed method was applied to classify human upper-limb motion via EMG signals. The database includes 8 recorded SEMG channels from forearm in the execution of 7 movements. The error of classification was 3.3%. Obtained results suggest that the proposed myoelectric pattern recognition technique may be applied in Human-Robot Interaction (HRI) to control external systems such an upper limb motor neuroprosthesis.
基于经验模态分解的人机交互表肌电信号分析
表面肌电图(SEMG)是与收缩肌肉相关的神经肌肉激活的电表现。肌电图直接反映人的运动意图;因此,它们可以作为人机交互的输入信息。考虑到表面肌电信号是复杂的生理信号,具有非线性、非平稳、非周期的特点,肌电分类方法必须考虑到这些特点才能更加有效。近年来,一种新的非线性和非平稳信号分析技术被成功地应用于地震和生物信号等多种研究中。这种技术被称为Hilbert- huang变换(HHT),它由两个互补的工具组成,即经验模态分解(EMD)和Hilbert谱(HS)。本文提出了一种新的基于emd的肌电模式识别技术,并将其应用于人机交互中。特征提取过程分为两个步骤,首先,EMD将输入的表面肌电信号分解为一组函数,称为内禀模态函数(IMF);其次,为每个结果IMF计算RMS(均方根)和四阶自回归模型的系数。基于线性分类器的分类过程(线性判别分析)。利用肌电信号数据库,将该方法应用于基于肌电信号的上肢运动分类。该数据库包括前臂在执行7个动作时记录的8个肌电信号通道。分类误差为3.3%。结果表明,所提出的肌电模式识别技术可以应用于人机交互(HRI)中,以控制上肢运动神经假体等外部系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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