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An Electrooculography Analysis in the Time-Frequency Domain Using Morphological Component Analysis Toward the Development of Mobile BCI Systems

机译:使用形态分组分析对移动BCI系统的发展时频域中的电胶凝视分析

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Morphological Component Analysis (MCA) extended the traditional concept of signal decomposition and reconstruction by using "basis." The use of a basis not only guarantees accuracy in the reconstruction process but also requires the uniqueness of the representation using the basis. By admitting a redundancy in representations of a signal i.e. as a way of decomposition, MCA introduced the concept of a "dictionary", which includes mixtures of traditional basis. This method is frequently applied to biological signals and natural and complex image processing. In the present study, we applied MCA to decompose real electrooculography (EOG) in the time-frequency domain, which includes the electroencephalogram (EEG) signal, noise originating from measurement tools and cables for signal transmission and amplification, power-supply instability, biological fluctuations and so on. In our analysis using MCA, the EOG was decomposed into separate signal sources that could be represented using a linear expansion of waveforms from redundant dictionaries: DIRAC, UDWT and DCT. MCA was performed over several iterations to reduce the error in reconstruction. During this process; decomposed signals exhibited different characteristics in the time-frequency domain. By stopping the iteration when the correlation coefficient between the original and reconstructed signals reached a maximum (0.989 as the average), the DIRAC, UDWT and DCT represent irregular spikes, smooth curve in both the frequency and time domains and high-pass filtered components, respectively. Our results demonstrate successful decomposition via MCA and, consequently, authenticate it as an effective tool for the removal of artifacts from raw EOG signals.
机译:通过使用“依据”,形态分析(MCA)扩展了传统信号分解和重建的传统概念。使用基础不仅保证了重建过程中的准确性,还需要使用基础的唯一性。通过承认信号的表示中的冗余。作为一种分解方式,MCA引入了“字典”的概念,其中包括传统基础的混合物。该方法经常应用于生物信号和自然和复杂的图像处理。在本研究中,我们应用MCA在时频域中分解实际电胶凝(EOG),其包括脑电图(EEG)信号,源自测量工具和电缆的噪声,用于信号传输和放大,供电不稳定,生物供应不稳定,生物波动等等。在我们使用MCA的分析中,EOG被分解成单独的信号源,可以使用来自冗余词典的波形的线性扩展来表示:DIRAC,UDWT和DCT。在几个迭代中进行MCA以减少重建中的错误。在这个过程中;分解信号在时频域中表现出不同的特征。通过停止迭代时,当原始和重建信号之间的相关系数达到最大值(0.989的平均值)时,DIRAC,UDWT和DCT代表不规则的尖峰,频率和时域的平滑曲线和高通滤波组件,分别。我们的结果证明了通过MCA成功分解,因此,将其验证为从原始EOG信号中移除伪影的有效工具。

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