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A methodology for time-frequency image processing applied to the classification of non-stationary multichannel signals using instantaneous frequency descriptors with application to newborn EEG signals

机译:一种用于时频图像处理的方法,适用于使用瞬时频率描述符对非平稳多通道信号进行分类,并应用于新生儿脑电信号

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This article presents a general methodology for processing non-stationary signals for the purpose of classification and localization. The methodology combines methods adapted from three complementary areas: time-frequency signal analysis, multichannel signal analysis and image processing. The latter three combine in a new methodology referred to as multichannel time-frequency image processing which is applied to the problem of classifying electroencephalogram (EEG) abnormalities in both adults and newborns. A combination of signal related features and image related features are used by merging key instantaneous frequency descriptors which characterize the signal non-stationarities. The results obtained show that, firstly, the features based on time-frequency image processing techniques such as image segmentation, improve the performance of EEG abnormalities detection in the classification systems based on multi-SVM and neural network classifiers. Secondly, these discriminating features are able to better detect the correlation between newborn EEG signals in a multichannel-based newborn EEG seizure detection for the purpose of localizing EEG abnormalities on the scalp.
机译:本文介绍了一种用于分类和定位目的的非平稳信号处理方法。该方法结合了三个互补领域的方法:时频信号分析,多通道信号分析和图像处理。后三种方法结合了一种称为多通道时频图像处理的新方法,该方法适用于成人和新生儿的脑电图(EEG)异常分类问题。通过合并表征信号非平稳性的关键瞬时频率描述符,可以使用信号相关特征和图像相关特征的组合。得到的结果表明,首先,基于时频图像处理技术的特征,例如图像分割,提高了基于多支持向量机和神经网络分类器的分类系统中脑电异常检测的性能。其次,这些区别特征能够在基于多通道的新生儿脑电图癫痫发作检测中更好地检测新生儿脑电图信号之间的相关性,从而将脑电图异常定位在头皮上。

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