Real-time Empirical Mode Decomposition for EEG signal enhancement

Alina Santillán-Guzmán, M. Fischer, U. Heute, G. Schmidt
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引用次数: 10

Abstract

Electroencephalography (EEG) recordings are used for brain research. However, in most cases, the recordings not only contain brain waves, but also artifacts of physiological or technical origins. A recent approach used for signal enhancement is Empirical Mode Decomposition (EMD), an adaptive data-driven technique which decomposes non-stationary data into so-called Intrinsic Mode Functions (IMFs). Once the IMFs are obtained, they can be used for denoising and detrending purposes. This paper presents a real-time implementation of an EMD-based signal enhancement scheme. The proposed implementation is used for removing noise, for suppressing muscle artifacts, and for detrending EEG signals in an automatic manner and in real-time. The proposed algorithm is demonstrated by application to a simulated and a real EEG data set from an epilepsy patient. Moreover, by visual inspection and in a quantitative manner, it is shown that after the EMD in real-time, the EEG signals are enhanced.
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基于实时经验模态分解的脑电信号增强方法
脑电图(EEG)记录用于大脑研究。然而,在大多数情况下,录音不仅包含脑电波,还包含生理或技术来源的人工制品。最近用于信号增强的方法是经验模态分解(EMD),这是一种自适应数据驱动技术,将非平稳数据分解为所谓的内禀模态函数(imf)。一旦获得了imf,它们就可以用于去噪和去趋势。本文提出了一种基于emd的信号增强方案的实时实现。所提出的实现用于去除噪声,抑制肌肉伪影,以及以自动和实时的方式对EEG信号进行去趋势。通过对一个癫痫患者的模拟脑电图数据集和真实脑电图数据集的分析,验证了该算法的有效性。此外,通过目测和定量分析表明,实时EMD后的脑电信号得到了增强。
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