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Myoelectric signal segmentation and classification using wavelets based neural networks

机译:基于基于小波的神经网络的肌电信号分割和分类

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In this paper a method for Myoelectric signal (MES) segmentation and classification is proposed. The classical moving average technique augmented with Principal Components Analysis (PCA), and time-frequency analysis were used for segmentation. Multiresolution Wavelet Analysis (MRWA) was adopted as an effective feature extraction technique while Artificial Neural Networks (ANN) was used for MES classification. Results of classifying four elbow and wrist movements gave 94.9% sensitivity and 94.9% positive predictivity.
机译:在本文中,提出了一种磁电信号(MES)分割和分类的方法。使用主成分分析(PCA)增强的经典移动平均技术,并使用时频分析进行分割。多分辨率小波分析(MRWA)被用作有效的特征提取技术,而人工神经网络(ANN)用于MES分类。分类四个肘部和手腕运动的结果给出了94.9%的敏感性和94.9%的阳性预测性。

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