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Signal decomposition by multi-scale PCA and its applications to long-term EEG signal classification

机译:多尺度PCA的信号分解及其在脑电信号长期分类中的应用

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Data coming from a real-world complex system are usually contaminated by certain levels of noise or some irrelevant components, which do not contribute to improve signal classification accuracy. Also in signal de-noising, the performance of any statistical method used to recover the original signals may be impacted by the noise. In this paper, we propose the multi-scale principal component analysis (PCA) method, which combines discrete wavelet transform and PCA for de-noising and decomposing complex biomedical signals in both spatial and temporal domains for signal classification. We also develop a new classification method, called Empirical Classification (EC), based on the characteristics of data we analyzed. These methods were applied to a publicly available EEG database for the purpose of epilepsy diagnosis and epileptic seizure detection. Our study shows that signal decomposition by the multi-scale PCA method coupled with the EC method, leads to a highly promising classification accuracy in classifying epileptic EEG signals. Our methods are also applicable for classifying biomedical images.
机译:来自现实世界的复杂系统的数据通常会受到一定程度的噪声或一些不相关的成分的污染,这对提高信号分类的准确性没有帮助。同样在信号降噪中,用于恢复原始信号的任何统计方法的性能可能会受到噪声的影响。在本文中,我们提出了一种多尺度主成分分析(PCA)方法,该方法结合了离散小波变换和PCA在空间和时间域中对复杂的生物医学信号进行去噪和分解,以进行信号分类。我们还将根据所分析数据的特征开发一种新的分类方法,称为经验分类(EC)。将这些方法应用于癫痫诊断和癫痫发作检测的公共EEG数据库。我们的研究表明,通过多尺度PCA方法和EC方法的信号分解,在癫痫EEG信号的分类中具有很高的分类精度。我们的方法也适用于对生物医学图像进行分类。

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