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Suppressing the Spikes in Electroencephalogram via an Iterative Joint Singular Spectrum Analysis and Low-Rank Decomposition Approach

机译:通过迭代联合奇异谱分析和低秩分解方法抑制脑电图峰值

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摘要

The novelty and the contribution of this paper consists of applying an iterative joint singular spectrum analysis and low-rank decomposition approach for suppressing the spikes in an electroencephalogram. First, an electroencephalogram is filtered by an ideal lowpass filter via removing its discrete Fourier transform coefficients outside the wave band, the wave band, the wave band, the wave band and the wave band. Second, the singular spectrum analysis is performed on the filtered electroencephalogram to obtain the singular spectrum analysis components. The singular spectrum analysis components are sorted according to the magnitudes of their corresponding eigenvalues. The singular spectrum analysis components are sequentially added together starting from the last singular spectrum analysis component. If the variance of the summed singular spectrum analysis component under the unit energy normalization is larger than a threshold value, then the summation is terminated. The summed singular spectrum analysis component forms the first scale of the electroencephalogram. The rest singular spectrum analysis components are also summed up together separately to form the residue of the electroencephalogram. Next, the low-rank decomposition is performed on the residue of the electroencephalogram to obtain both the low-rank component and the sparse component. The low-rank component is added to the previous scale of the electroencephalogram to obtain the next scale of the electroencephalogram. Finally, the above procedures are repeated on the sparse component until the variance of the current scale of the electroencephalogram under the unit energy normalization is larger than another threshold value. The computer numerical simulation results show that the spike suppression performance based on our proposed method outperforms that based on the state-of-the-art methods.
机译:本文的新颖性和贡献在于应用迭代联合奇异谱分析和低秩分解方法来抑制脑电图中的尖峰。首先,通过去除波段,波段,波段,波段和波段之外的离散傅立叶变换系数,由理想的低通滤波器对脑波进行滤波。其次,对滤波后的脑电图进行奇异谱分析,得到奇异谱分析成分。奇异频谱分析组件根据其相应特征值的大小进行排序。从最后一个奇异频谱分析组件开始,将奇异频谱分析组件顺序添加到一起。如果在单位能量归一化下求和的奇异频谱分析分量的方差大于阈值,则求和终止。奇异频谱分析总和构成了脑电图的第一个标度。其余的奇异频谱分析组件也分别汇总在一起,以形成脑电图的残差。接下来,对脑电图的残差进行低阶分解,从而获得低阶分量和稀疏分量。将低等级分量添加到脑电图的前一个比例,以获得脑电图的下一个比例。最后,在稀疏分量上重复上述过程,直到在单位能量归一化下脑电图的当前比例的方差大于另一个阈值为止。计算机数值模拟结果表明,基于我们提出的方法的尖峰抑制性能优于基于最新技术的方法。

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