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Effect of EOG Signal Filtering on the Removal of Ocular Artifacts and EEG-Based Brain-Computer Interface: A Comprehensive Study

机译:EOG信号过滤对去除人工眼和基于脑电图的脑机接口的影响:一项综合研究

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It is a fact that contamination of EEG by ocular artifacts reduces the classification accuracy of a brain-computer interface (BCI) and diagnosis of brain diseases in clinical research. Therefore, for BCI and clinical applications, it is very important to remove/reduce these artifacts before EEG signal analysis. Although, EOG-based methods are simple and fast for removing artifacts but their performance, meanwhile, is highly affected by the bidirectional contamination process. Some studies emphasized that the solution to this problem is low-pass filtering EOG signals before using them in artifact removal algorithm but there is still no evidence on the optimal low-pass frequency limits of EOG signals. In this study, we investigated the optimal EOG signal filtering limits using state-of-the-art artifact removal techniques with fifteen artificially contaminated EEG and EOG datasets. In this comprehensive analysis, unfiltered and twelve different low-pass filtering of EOG signals were used with five different algorithms, namely, simple regression, least mean squares, recursive least squares, REGICA, and AIR. Results from statistical testing of time and frequency domain metrics suggested that a low-pass frequency between 6 and 8 Hz could be used as the most optimal filtering frequency of EOG signals, both to maximally overcome/minimize the effect of bidirectional contamination and to achieve good results from artifact removal algorithms. Furthermore, we also used BCI competition IV datasets to show the efficacy of the proposed framework on real EEG signals. The motor-imagery-based BCI achieved statistically significant high-classification accuracies when artifacts from EEG were removed by using 7 Hz low-pass filtering as compared to all other filterings of EOG signals. These results also validated our hypothesis that low-pass filtering should be applied to EOG signals for enhancing the performance of each algorithm before using them for artifact removal process. Moreover, the comparison results indicated that the hybrid algorithms outperformed the performance of single algorithms for both simulated and experimental EEG datasets.
机译:事实是,眼部伪影对EEG的污染会降低脑计算机接口(BCI)的分类准确性以及在临床研究中对脑部疾病的诊断。因此,对于BCI和临床应用,在EEG信号分析之前去除/减少这些伪影非常重要。尽管基于EOG的方法可以轻松快速地去除伪影,但是其性能却受到双向污染过程的极大影响。一些研究强调,解决此问题的方法是在伪影去除算法中使用EOG信号之前先对其进行低通滤波,但目前尚无证据表明EOG信号的最佳低通频率限制。在这项研究中,我们使用最新的伪影去除技术和15个人工污染的EEG和EOG数据集,研究了最佳EOG信号滤波极限。在此综合分析中,对EOG信号进行了未经滤波和十二种不同的低通滤波,并采用了五种不同的算法,即简单回归,最小均方,递归最小二乘,REGICA和AIR。时域和频域指标的统计测试结果表明,可以将6至8 Hz之间的低通频率用作EOG信号的最佳滤波频率,以最大程度地克服/最小化双向污染的影响并获得良好的效果。伪影去除算法的结果。此外,我们还使用BCI竞争IV数据集来显示所提出的框架对真实EEG信号的功效。与其他所有EOG信号滤波相比,当通过使用7 Hz低通滤波从EEG去除伪影时,基于运动图像的BCI达到了统计上显着的高分类精度。这些结果还证实了我们的假设,即在将低通滤波用于EOG信号以进行伪像去除过程之前,应先对其进行低通滤波以增强每种算法的性能。此外,比较结果表明,对于模拟和实验性EEG数据集,混合算法的性能均优于单一算法。

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