Time-frequency signal and image processing of non-stationary signals with application to the classification of newborn EEG abnormalities

B. Boashash, L. Boubchir, G. Azemi
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引用次数: 23

Abstract

This paper presents an introduction to time-frequency (T-F) methods in signal processing, and a novel approach for EEG abnormalities detection and classification based on a combination of signal related features and image related features. These features which characterize the non-stationary nature and the multi-component characteristic of EEG signals, are extracted from the T-F representation of the signals. The signal related features are derived from the T-F representation of EEG signals and include the instantaneous frequency, singular value decomposition, and energy based features. The image related features are extracted from the T-F representation considered as an image, using T-F image processing techniques. These combined signal and image features allow to extract more information from a signal. The results obtained on newborn and adult EEG data, show that the image related features improve the performance of the EEG seizure detection in classification systems based on multi-SVM classifier.
非平稳信号的时频信号和图像处理及其在新生儿脑电图异常分类中的应用
介绍了信号处理中的时频(T-F)方法,提出了一种基于信号相关特征和图像相关特征相结合的脑电图异常检测与分类新方法。这些特征表征了脑电图信号的非平稳性和多分量特征,是从信号的T-F表示中提取出来的。信号相关特征来源于脑电信号的T-F表示,包括瞬时频率、奇异值分解和基于能量的特征。使用T-F图像处理技术,从作为图像的T-F表示中提取图像相关特征。这些组合的信号和图像特征允许从信号中提取更多的信息。在新生儿和成人脑电数据上的实验结果表明,图像相关特征提高了基于多支持向量机分类器的脑电癫痫检测性能。
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