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Multifractal-wavelet based denoising in the classification of healthy and epileptic eeg signals

机译:健康和癫痫脑电信号分类中基于多重分形小波的去噪

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摘要

Identification of abnormality in Electroencephalogram (EEG) signals is the vast area of research in the neuroscience. Especially, the classification of healthy and epileptic subjects through EEG signals is the crucial problem in the biomedical sciences. Denoising of EEG signals is another important task in signal processing. The noises must be corrected or reduced before the subsequent decision analysis. This paper presents a wavelet-based denoising method for the recovery of EEG signal contaminated by nonstationary noises and investigates the recognition of healthy and epileptic EEG signals by using multifractal measures such as Generalized Fractal Dimensions. The multifractal measures show the significant differences among normal, interictal and epileptic ictal EEGs with denoising by wavelet transform as the pre-processing step. The denoised artifact-free EEG presents a very good improvement in the identification rate of epileptic seizure. The proposed scheme illustrates with high accuracy through the suitable graphical and statistical tools and performs an important role in the epileptic seizure detection.
机译:脑电图(EEG)信号异常的识别是神经科学领域的广阔研究领域。特别地,通过EEG信号对健康和癫痫患者进行分类是生物医学科学中的关键问题。脑电信号的去噪是信号处理中的另一重要任务。在后续的决策分析之前,必须纠正或减少噪声。本文提出了一种基于小波的去噪方法来恢复被非平稳噪声污染的脑电信号,并通过使用多种分形测量方法(例如广义分形维数)来研究对健康和癫痫性脑电信号的识别。多重分形测量显示正常,发作间期和癫痫发作的脑电图之间的显着差异,其中以小波变换去噪为预处理步骤。去噪的无伪影的脑电图对癫痫发作的识别率有很好的改善。所提出的方案通过合适的图形和统计工具以高精度进行说明,并在癫痫发​​作检测中发挥重要作用。

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