论文标题
自动肌肉伪像鉴定并使用元式优化的非本地均值滤波器从单渠道脑电图中删除单通道EEG
Automatic Muscle Artifacts Identification and Removal from Single-Channel EEG Using Wavelet Transform with Meta-heuristically Optimized Non-local Means Filter
论文作者
论文摘要
脑电图(EEG)信号可能很容易被肌肉伪像污染,这可能导致脑部 - 计算机界面(BCI)系统以及各种医学诊断中的错误解释。本文的主要目的是去除肌肉伪像,而不会扭曲脑电图中所包含的信息。首次提出了一种新型的多阶段EEG DENOISING方法,其中首次将小波数据包分解(WPD)与修改的非本地均值(NLM)算法结合使用。首先,通过预训练的分类器确定伪影脑电图信号。接下来,将确定的脑电图分解为小波系数,并通过修改的NLM滤波器进行校正。最后,通过逆WPD从校正的小波系数中重建无伪影的脑电图。为了优化滤波器参数,本文首次使用了两种元海拔算法。首先在模拟的脑电图数据上验证了所提出的系统,然后对实际脑电图数据进行测试。所提出的方法在实际脑电图数据上获得了平均共同信息(MI)为2.9684 $ \ pm $ 0.7045。结果表明,所提出的系统优于最近开发的具有更高平均MI的去涂技术,这表明所提出的方法在重建质量方面更好,并且是完全自动的。
Electroencephalogram (EEG) signals may get easily contaminated by muscle artifacts, which may lead to wrong interpretation in the brain--computer interface (BCI) system as well as in various medical diagnoses. The main objective of this paper is to remove muscle artifacts without distorting the information contained in the EEG. A novel multi-stage EEG denoising method is proposed for the first time in which wavelet packet decomposition (WPD) is combined with a modified non-local means (NLM) algorithm. At first, the artifact EEG signal is identified through a pre-trained classifier. Next, the identified EEG signal is decomposed into wavelet coefficients and corrected through a modified NLM filter. Finally, the artifact-free EEG is reconstructed from corrected wavelet coefficients through inverse WPD. To optimize the filter parameters, two meta-heuristic algorithms are used in this paper for the first time. The proposed system is first validated on simulated EEG data and then tested on real EEG data. The proposed approach achieved average mutual information (MI) as 2.9684 $\pm$ 0.7045 on real EEG data. The result reveals that the proposed system outperforms recently developed denoising techniques with higher average MI, which indicates that the proposed approach is better in terms of quality of reconstruction and is fully automatic.