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Epileptic seizure detection in EEGs signals using a fast weighted horizontal visibility algorithm

机译:使用快速加权水平能见度算法检测脑电信号中的癫痫发作

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摘要

This paper proposes a fast weighted horizontal visibility graph constructing algorithm (FWHVA) to identify seizure from EEG signals. The performance of the FWHVA is evaluated by comparing with Fast Fourier Transform (FFT) and sample entropy (SampEn) method. Two noise-robustness graph features based on the FWHVA, mean degree and mean strength, are investigated using two chaos signals and five groups of EEG signals. Experimental results show that feature extraction using the FWHVA is faster than that of SampEn and FFT. And mean strength feature associated with ictal EEG is significant higher than that of healthy and inter-ictal EEGs. In addition, an 100% classification accuracy for identifying seizure from healthy shows that the features based on the FWHVA are more promising than the frequency features based on FFT and entropy indices based on SampEn for time series classification.
机译:提出了一种快速加权的水平能见度图构造算法(FWHVA),用于从脑电信号中识别癫痫发作。通过与快速傅立叶变换(FFT)和样本熵(SampEn)方法进行比较来评估FWHVA的性能。使用两个混沌信号和五组EEG信号研究了基于FWHVA的两个噪声鲁棒图特征(平均程度和平均强度)。实验结果表明,使用FWHVA进行特征提取比使用SampEn和FFT进行特征提取要快。与发作性脑电图相关的平均强度特征明显高于健康和发作性脑电图。此外,从健康中识别癫痫发作的分类精度为100%,这表明基于FWHVA的特征比基于FFT的频率特征和基于SampEn的熵指数进行时间序列分类更有希望。

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