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Multiclass motion identification using myoelectric signals and Support Vector machines

机译:使用肌电信号和支持向量机进行多类运动识别

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In this paper, different classifiers were trained to identify myoelectric registers, in order to recognize nine different motions related to four degrees of freedom of the forearm. Three main methods were compared, namely Linear Discriminant Analysis, Artificial Neural Networks and Support Vector Machines. The behavior of pattern recognition schemes was investigated using different amounts of data collected from 12 healthy subjects. The focus of this work is to identify the best classification scheme. Departure information was obtained using a preprocessing stage to extract either autoregressive or frequency domain features. Experiments show that the best performance is achieved employing frequency features and support vector machine classifier. This classification scheme demonstrates exceptional recognition accuracy of over the other methods.
机译:在本文中,训练了不同的分类器来识别肌电寄存器,以便识别与前臂四个自由度有关的九种不同运动。比较了三种主要方法,即线性判别分析,人工神经网络和支持向量机。使用从12位健康受试者收集的不同数量的数据研究了模式识别方案的行为。这项工作的重点是确定最佳分类方案。使用预处理阶段获取自发信息以提取自回归或频域特征。实验表明,利用频率特征和支持向量机分类器可获得最佳性能。与其他方法相比,该分类方案显示出卓越的识别准确性。

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