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Multi-channel surface EMG classification based on a quasi-optimal selection of motions and channels

机译:基于准优选运动和频道的多通道表面EMG分类

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This paper introduces a motion and channel selection method based on a partial Kullback-Leibler (KL) information measure. In the proposed method, the probability density functions of recorded data are estimated through learning involving a probabilistic neural network based on the KL information theory. Partial KL information is defined to support evaluation of the contribution of each dimension and class for classification. Effective dimensions and classes can then be selected by eliminating ineffective choices one by one based on this information, respectively. In the experiments, effective channels for classification were first selected for each of the six subjects, and the number of channels was reduced by 32.1±25.5%. After channel selection, appropriate motions for classification were chosen, and the average classification rate for the motions selected using the proposed method was found to be 91.7 ± 2.5%. These outcomes indicate that the proposed method can be used to select effective channels and motions for accurate classification.
机译:本文介绍了一种基于部分kullback-Leibler(KL)信息测量的运动和频道选择方法。在所提出的方法中,通过基于KL信息理论的概率神经网络涉及概率神经网络的学习来估计记录数据的概率密度函数。部分KL信息被定义为支持评估每个维度和类别的分类的贡献。然后可以通过分别基于该信息消除无效选择,选择有效尺寸和类。在实验中,首先为六个受试者中的每一个选择用于分类的有效通道,并且频道的数量减少了32.1± 25.5%。在渠道选择之后,选择适当的分类运动,并发现使用所提出的方法选择的运动的平均分类率为91.7± 2.5%。这些结果表明,该方法可用于选择有效的通道和用于准确分类的运动。

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