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一种基于信号相关噪声的人工肌电图生成模型及其在运动分类中的相关应用。

An artificial EMG generation model based on signal-dependent noise and related application to motion classification.

作者信息

Furui Akira, Hayashi Hideaki, Nakamura Go, Chin Takaaki, Tsuji Toshio

机构信息

Department of System Cybernetics, Graduate School of Engineering, Hiroshima University, Higashi-Hiroshima, Japan.

Department of System Cybernetics, Institute of Engineering, Hiroshima University, Higashi-Hiroshima, Japan.

出版信息

PLoS One. 2017 Jun 22;12(6):e0180112. doi: 10.1371/journal.pone.0180112. eCollection 2017.

Abstract

This paper proposes an artificial electromyogram (EMG) signal generation model based on signal-dependent noise, which has been ignored in existing methods, by introducing the stochastic construction of the EMG signals. In the proposed model, an EMG signal variance value is first generated from a probability distribution with a shape determined by a commanded muscle force and signal-dependent noise. Artificial EMG signals are then generated from the associated Gaussian distribution with a zero mean and the generated variance. This facilitates representation of artificial EMG signals with signal-dependent noise superimposed according to the muscle activation levels. The frequency characteristics of the EMG signals are also simulated via a shaping filter with parameters determined by an autoregressive model. An estimation method to determine EMG variance distribution using rectified and smoothed EMG signals, thereby allowing model parameter estimation with a small number of samples, is also incorporated in the proposed model. Moreover, the prediction of variance distribution with strong muscle contraction from EMG signals with low muscle contraction and related artificial EMG generation are also described. The results of experiments conducted, in which the reproduction capability of the proposed model was evaluated through comparison with measured EMG signals in terms of amplitude, frequency content, and EMG distribution demonstrate that the proposed model can reproduce the features of measured EMG signals. Further, utilizing the generated EMG signals as training data for a neural network resulted in the classification of upper limb motion with a higher precision than by learning from only measured EMG signals. This indicates that the proposed model is also applicable to motion classification.

摘要

本文通过引入肌电图(EMG)信号的随机构建,提出了一种基于信号相关噪声的人工肌电图信号生成模型,而现有方法中忽略了这一点。在所提出的模型中,首先从一个概率分布生成EMG信号方差值,该概率分布的形状由指令肌肉力和信号相关噪声决定。然后从均值为零且方差已生成的相关高斯分布中生成人工EMG信号。这便于表示叠加有根据肌肉激活水平而定的信号相关噪声的人工EMG信号。还通过一个由自回归模型确定参数的整形滤波器来模拟EMG信号的频率特性。所提出的模型还纳入了一种估计方法,该方法使用经整流和平滑的EMG信号来确定EMG方差分布,从而允许用少量样本进行模型参数估计。此外,还描述了从低肌肉收缩的EMG信号预测高肌肉收缩时的方差分布以及相关人工EMG生成的情况。进行的实验结果表明,通过在幅度、频率成分和EMG分布方面与实测EMG信号进行比较来评估所提出模型的再现能力,结果表明该模型能够再现实测EMG信号的特征。此外,将生成的EMG信号用作神经网络的训练数据,其上肢运动分类精度高于仅从实测EMG信号进行学习的情况。这表明所提出的模型也适用于运动分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7ff9/5481033/9378cb5b439b/pone.0180112.g001.jpg

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