IEEE J Biomed Health Inform. 2018 Sep;22(5):1362-1372. doi: 10.1109/JBHI.2017.2771783. Epub 2017 Nov 13.
Neural activities recorded using electroencephalography (EEG) are mostly contaminated with eye blink (EB) artifact. This results in undesired activation of brain-computer interface (BCI) systems. Hence, removal of EB artifact is an important issue in EEG signal analysis. Of late, several artifact removal methods have been reported in the literature and they are based on independent component analysis (ICA), thresholding, wavelet transformation, etc. These methods are computationally expensive and result in information loss which makes them unsuitable for online BCI system development. To address the above problems, we have investigated sparsity-based EB artifact removal methods. Two sparsity-based techniques namely morphological component analysis (MCA) and K-SVD-based artifact removal method have been evaluated in our work. MCA-based algorithm exploits the morphological characteristics of EEG and EB using predefined Dirac and discrete cosine transform (DCT) dictionaries. Next, in K-SVD-based algorithm an overcomplete dictionary is learned from the EEG data itself and is designed to model EB characteristics. To substantiate the efficacy of the two algorithms, we have carried out our experiments with both synthetic and real EEG data. We observe that the K-SVD algorithm, which uses a learned dictionary, delivers superior performance for suppressing EB artifacts when compared to MCA technique. Finally, the results of both the techniques are compared with the recent state-of-the-art FORCe method. We demonstrate that the proposed sparsity-based algorithms perform equal to the state-of-the-art technique. It is shown that without using any computationally expensive algorithms, only with the use of over-complete dictionaries the proposed sparsity-based algorithms eliminate EB artifacts accurately from the EEG signals.
使用脑电图(EEG)记录的神经活动大多受到眨眼(EB)伪影的污染。这导致脑机接口(BCI)系统的不必要激活。因此,去除 EB 伪影是 EEG 信号分析中的一个重要问题。最近,文献中报道了几种去除伪影的方法,它们基于独立成分分析(ICA)、阈值、小波变换等。这些方法计算成本高,会导致信息丢失,因此不适合在线 BCI 系统开发。为了解决上述问题,我们研究了基于稀疏性的 EB 伪影去除方法。在我们的工作中评估了两种基于稀疏性的技术,即形态成分分析(MCA)和基于 K-SVD 的伪影去除方法。MCA 算法利用预定义的 Dirac 和离散余弦变换(DCT)字典,利用 EEG 和 EB 的形态特征。接下来,在基于 K-SVD 的算法中,从 EEG 数据本身学习一个过完备字典,并设计用于模拟 EB 特征。为了证明这两种算法的有效性,我们使用合成和真实 EEG 数据进行了实验。我们观察到,与 MCA 技术相比,使用学习字典的 K-SVD 算法在抑制 EB 伪影方面具有更好的性能。最后,将这两种技术的结果与最近的最先进的 FORCe 方法进行了比较。我们证明了所提出的基于稀疏性的算法与最先进的技术表现相当。结果表明,无需使用任何计算成本高昂的算法,仅使用过完备字典,所提出的基于稀疏性的算法就能准确地从 EEG 信号中消除 EB 伪影。