Features extraction for signal classification based on Wigner-Ville distribution and mutual information criterion

E. Grall-Maes, P. Beauseroy
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引用次数: 5

Abstract

The presented method deals with the extraction of features for the classification of non-stationary signals, when the process is only described through training data. The features are determined using the Wigner-Ville distribution (WVD). Three kinds of features are researched: the energy, the temporal expectation and the frequential expectation of the WVD restricted to specific regions. The restriction of the WVD is obtained by applying on the WVD a bidimensional Gaussian window. Given a feature type and a center position of the window in the time-frequency plane, the window parameters are optimized to provide the most discriminant feature. The discriminant nature is measured using a mutual information criterion. This provides a measure of the class separability suitable with any distribution law, and assuming no specific structure of the final classifier. The procedure has been validated with a classification problem of sleep EEG signals.
基于Wigner-Ville分布和互信息准则的信号分类特征提取
该方法处理仅通过训练数据描述非平稳信号分类过程的特征提取问题。这些特征是使用Wigner-Ville分布(WVD)确定的。研究了局限于特定区域的WVD的能量、时间期望和频率期望三种特征。通过在WVD上施加一个二维高斯窗口,得到了WVD的约束。给定特征类型和窗口在时频平面上的中心位置,优化窗口参数以提供最具判别性的特征。判别性质是用互信息准则来衡量的。这提供了适用于任何分布规律的类可分离性的度量,并且假设没有最终分类器的特定结构。该方法已通过一个睡眠脑电图信号的分类问题得到验证。
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