Haralick特征提取用于癫痫发作时频图像的脑电图数据检测与分类

L. Boubchir, S. Al-Maadeed, A. Bouridane
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引用次数: 25

摘要

本文提出了一种基于t-f图像描述符的新型时频特征,用于脑电图数据中癫痫发作活动的自动检测和分类。以往的方法大多是基于不同频谱子带产生的脑电信号的瞬时频率和能量而得出的信号相关特征。所提出的特征是从脑电信号的t-f表示中提取出来的,并使用Haralick纹理描述符作为纹理图像进行处理。所提出的描述符能够直观地描述在脑电图信号的t-f图像中观察到的癫痫发作模式。在真实脑电数据上的实验结果表明,利用所提出的特征显著提高了脑电癫痫发作检测和分类的性能,使用一对一SVM分类器对140个脑电片段实现了高达99%的分类准确率。
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Haralick feature extraction from time-frequency images for epileptic seizure detection and classification of EEG data
This paper presents novel time-frequency (t-f) features based on t-f image descriptors for the automatic detection and classification of epileptic seizure activities in EEG data. Most previous methods were based only on signal-related features derived from the instantaneous frequency and the energies of EEG signals generated from different spectral sub-bands. The proposed features are extracted from the t-f representation of EEG signals which are processed as a textured image using Haralick's texture descriptors. The proposed descriptors are capable to describe visually the epileptic seizure patterns observed in t-f image of EEG signals. The results obtained on real EEG data show that the use of the proposed features improves significantly the performance of the EEG seizure detection and classification by achieving a total classification accuracy up to 99% for 140 EEG segments using one-againt-one SVM classifier.
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