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Adaptive Sparse Detector for Suppressing Powerline Component in EEG Measurements

机译:用于抑制EEG测量中的电力线组件的自适应稀疏检测器

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Powerline interference (PLI) is a major source of interference in the acquisition of electroencephalogram (EEG) signal. Digital notch filters (DNFs) have been widely used to remove the PLI such that actual features, which are weak in energy and strongly connected to brain states, can be extracted explicitly. However, DNFs are mathematically implemented via discrete Fourier analysis, the problem of overlapping between spectral counterparts of PLI and those of EEG features is inevitable. In spite of their effectiveness, DNFs usually cause distortions on the extracted EEG features, which may lead to incorrect diagnostic results. To address this problem, we investigate an adaptive sparse detector for reducing PLI. This novel approach is proposed based on sparse representation inspired by self-adaptive machine learning. In the coding phase, an overcomplete dictionary, which consists of redundant harmonic waves with equally spaced frequencies, is employed to represent the corrupted EEG signal. A strategy based on the split augmented Lagrangian shrinkage algorithm is employed to optimize the associated representation coefficients. It is verified that spectral components related to PLI are compressed into a narrow area in the frequency domain, thus reducing overlapping with features of interest. In the decoding phase, eliminating of coefficients within the narrow band area can remove the PLI from the reconstructed signal. The sparsity of the signal in the dictionary domain is determined by the redundancy factor. A selection criteria of the redundancy factor is suggested via numerical simulations. Experiments have shown the proposed approach can ensure less distortions on actual EEG features.
机译:电力线干扰(PLI)是获取脑电图(EEG)信号的采集中干扰的主要来源。数字凹口滤波器(DNFS)已被广泛用于去除PLI,使得能够明确提取能量弱并且强烈连接到脑状态的实际特征。然而,DNF通过离散傅立叶分析在数学上实现,PLI频谱对应物与EEG特征的频谱对应物之间的问题是不可避免的。尽管他们有效性,DNF通常会导致提取的EEG特征对扭曲,这可能导致错误的诊断结果。为了解决这个问题,我们研究了用于减少PLI的自适应稀疏检测器。基于自适应机器学习灵感的稀疏表示提出了这种新方法。在编码阶段中,采用过冗余谐波的冗余谐波的冗余谐波,以表示损坏的EEG信号。采用基于分离增强拉格朗日收缩算法的策略来优化相关的表示系数。验证了与PLI相关的光谱分量被压缩到频域中的窄区域中,从而减少了与感兴趣的特征的重叠。在解码阶段中,消除窄带区域内的系数可以从重建信号中移除PLI。字典域中的信号的稀疏性由冗余因子决定。通过数值模拟提出了冗余因子的选择标准。实验表明,所提出的方法可以确保对实际EEG特征的扭曲更少。

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