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A Novel Channel Selection Method Based on Partial KL Information Measure for EMG-based Motion Classification

机译:一种基于EMG的运动分类部分KL信息测量的新型频道选择方法

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To control machines using electromyograms (EMGs), subjects' intentions have to be correctly estimated and classified. However, the accuracy of classification is greatly influenced by individual physical abilities and measuring positions, making it necessary to select optimal channel positions for each subject. This paper proposes a novel online channel selection method using probabilistic neural networks (PNNs). In this method, measured data are regarded as probability variables, and data dimensions are evaluated by a partial KL information measure that is newly defined as a metric of effective dimensions. In the experiments, channels were selected using this method, and EMGs measured from the forearm were classified. The results showed that the number of channels is reduced with 33.33 + 11.8%, and the average classification rate using the selected channels is almost the same as that using all channels. This demonstrates that the method is capable of selecting effective channels for classification.
机译:使用电灰度(EMG)控制机器,必须正确估计和分类受试者的意图。然而,分类的准确性受到各个物理能力和测量位置的大大影响,使得有必要为每个受试者选择最佳的通道位置。本文采用了使用概率神经网络(PNN)的新型在线频道选择方法。在该方法中,测量数据被视为概率变量,并且通过新定义为有效维度的度量的部分KL信息测量来评估数据维度。在实验中,使用该方法选择通道,并且从前臂测量的EMG被分类。结果表明,通道数量减少33.33 + 11.8%,使用所选通道的平均分类率几乎与使用所有通道的平均分类率。这表明该方法能够选择用于分类的有效通道。

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