基于子空间主向量投影技术的鲁棒脑电信号源定位

Amita Giri, L. Kumar, T. Gandhi
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引用次数: 0

摘要

基于脑电图(EEG)信号的脑源定位(BSL)一直是一个活跃的研究领域。在存在背景干扰的情况下,BSL算法的性能严重下降。基于预白化(PW)的处理这种干扰的方法假定数据具有时间平稳性,这不利于基于脑电的处理。基于零投影(NP)的方法放宽了时间平稳性。然而,在控制状态和活动状态测量之间保持了干扰源数量的严格空间平稳性。在实际场景中,干扰源只存在于控制状态,而不出现在活动状态,基于NP的方法从活动数据中删除了高维空间,导致其性能不佳。提出的基于子空间主向量投影(SPVP)的方法利用基于子空间相关的共同干扰统计量,从而放宽了严格的空间平稳性条件。特别提出了基于SPVP的多信号分类(MUSIC)和线性约束最小方差(LCMV)算法。利用Physionet数据集的真实脑电数据(包括运动图像任务)进行仿真和实验,验证了该算法在抑制干扰的鲁棒性脑电信号处理中的有效性。
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Robust EEG Source Localization Using Subspace Principal Vector Projection Technique
ElectroEncephaloGram (EEG) signals based Brain Source Localization (BSL) has been an active area of research. The performance of BSL algorithms is severely degraded in the presence of background interferences. Pre-Whitening (PW) based approach to deal with such interference assumes temporal stationarity of the data which does not hold good for EEG based processing. Null Projection (NP) based approach relaxes the temporal stationarity. However, the strict spatial stationarity of the number of interfering sources is maintained between control state and activity state measurement. In practical scenarios where an interference source that exists only in the control state, and does not appear in activity state, NP based approach removes a higher dimension space from the activity data leading to its poor performance. The proposed Subspace Principal Vector Projection (SPVP) based approach utilizes subspace correlation based common interference statistics and thus relaxing the strict spatial stationarity condition. In particular, SPVP based MUltiple SIgnal Classification (MUSIC) and Linearly Constrained Minimum Variance (LCMV) algorithms are presented for BSL. Simulation and experiment with real EEG data from Physionet dataset involving motor imagery task illustrate the effectiveness of the proposed algorithms in robust BSL with interference suppression.
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