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An EMG Pattern Classification Method Based on a Mixture of Variance Distribution Models

机译:基于方差分布模型混合的肌电图模式分类方法

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This paper proposes an electromyogram (EMG) pattern classification method based on a mixture of variance distribution models. A variance distribution model is a stochastic model of raw surface EMG signals in which the EMG variance is taken as a random variable, allowing the representation of uncertainty in the variance. In this paper, we extend the variance distribution model to the multidimensional case and enhance its flexibility for multichannel and processed EMG signals. The enhanced model enables the accurate classification of EMG patterns while considering the uncertainty in the EMG variance. The robustness and applicability of the proposed method are demonstrated through a simulation experiment using artificially generated data and EMG classification experiments using two real datasets.
机译:本文提出了一种基于混合方差分布模型的肌电图(EMG)模式分类方法。方差分布模型是原始表面EMG信号的随机模型,其中EMG方差被视为随机变量,从而可以表示方差中的不确定性。在本文中,我们将方差分布模型扩展到多维情况,并增强了其对多通道和已处理EMG信号的灵活性。增强的模型能够在考虑EMG方差的不确定性的同时对EMG模式进行准确分类。通过使用人工生成的数据的模拟实验和使用两个真实数据集的EMG分类实验,证明了该方法的鲁棒性和适用性。

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