首页> 外文会议>BioMedical Information Engineering, 2009. FBIE 2009 >Hand-motion patterns recognition based on mechanomyographic signal analysis
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Hand-motion patterns recognition based on mechanomyographic signal analysis

机译:基于机电信号分析的手部动作模式识别

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A Mechanomyography (MMG) based hand-motion patterns recognition approach was proposed in this paper. With the MMG signal acquired in the upper arm via a single sensor, eleven original features were extracted, and they were further processed by principal components analysis (PCA) in order to reduce the dimension of the feature space. Quadratic discriminant analysis (QDA) was used for four hand-motion patterns recognition. The cross-validated experimental results show that PCA method is practical in dimension reduction and QDA is functional in classifying the four types of hand-motion modes. The average classification accuracy of eight subjects is 79.66%±7.32%. It also reveals that MMG signal is effective in classifying more than two hand-motion patterns even with only one channel signal, and can provide a new choice of control signal for upper-limb prosthetic hand design.
机译:本文提出了一种基于机械工程学(MMG)的手部动作模式识别方法。通过单个传感器在上臂中获取MMG信号,提取了11个原始特征,并通过主成分分析(PCA)对其进行了进一步处理,以减小特征空间的尺寸。二次判别分析(QDA)用于四种手部动作模式识别。交叉验证的实验结果表明,PCA方法在减小尺寸方面很实用,而QDA在对四种类型的手部运动模式进行分类时具有功能。八个主题的平均分类准确度是79.66%×±7.32%。它也表明,即使只有一个通道信号,MMG信号也可以有效地对两个以上的手部动作模式进行分类,并且可以为上肢假肢手设计提供新的控制信号选择。

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