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Fuzzy wavelet packet based feature extraction method and its application to biomedical signal classification

机译:基于模糊小波包的特征提取方法及其在生物医学信号分类中的应用

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摘要

In this paper, we develop an efficient fuzzy wavelet packet (WP) based feature extraction method for the classification of high-dimensional biomedical data such as magnetic resonance spectra. The key design phases involve: 1) a WP transformation mapping the original signals to many WP feature spaces and finding optimal WP decomposition for signal classification; 2) feature extraction based on the optimal WP decomposition; and 3) signal classification realized by a linear classifier. In contrast to the standard method of feature extraction used in WPs, guided by the criteria of signal compression or signal energy, our method is used to extract discriminatory features from the WP coefficients of the optimal decomposition. The extraction algorithm constructs fuzzy sets of features (via fuzzy clustering) to assess their discriminatory effectiveness. This paper includes a number of numerical experiments using magnetic resonance spectra. Classification results are compared with those obtained from common feature extraction methods in the WP domain.
机译:在本文中,我们开发了一种基于有效的模糊小波包(WP)的特征提取方法,用于对高维生物医学数据(如磁共振波谱)进行分类。关键的设计阶段包括:1)WP变换,将原始信号映射到许多WP特征空间,并找到用于信号分类的最优WP分解; 2)基于最优WP分解的特征提取; 3)由线性分类器实现的信号分类。与在WP中使用特征提取的标准方法相反,在信号压缩或信号能量的准则指导下,我们的方法用于从最佳分解的WP系数中提取歧视性特征。提取算法(通过模糊聚类)构造特征的模糊集以评估其区分效果。本文包括许多使用磁共振波谱的数值实验。将分类结果与从WP域中的常用特征提取方法获得的结果进行比较。

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