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Wavelet Transform Use for Feature Extraction and EEG Signal Segments Classification

机译:小波变换用于特征提取和EEG信号段分类

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Segmentation, feature extraction and classification of signal components belong to very common problems in various engineering, economical and biomedical applications. The paper is devoted to the use of discrete wavelet transform (DWT) both for signal preprocessing and signal segments feature extraction as an alternative to the commonly used discrete Fourier transform (DFT). Feature vectors belonging to separate signal segments are then classified by a competitive neural network as one of methods of cluster analysis and processing. The paper provides a comparison of classification results using different methods of feature extraction most appropriate for EEG signal components detection. Problems of multichannel segmentation are mentioned in this connection as well.
机译:分割,特征提取和信号分量的分类属于各种工程,经济和生物医学应用中的非常常见问题。本文致力于使用用于信号预处理和信号段特征提取的离散小波变换(DWT),作为常用的离散傅里叶变换(DFT)的替代方案。然后,属于单独的信号段的特征向量被竞争神经网络分类为集群分析和处理的方法之一。本文提供了使用不同特征提取方法的分类结果的比较,最适合EEG信号分量检测。在这方面提到了多通道分割问题。

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