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A modified row-sparse multiple measurement vector recovery algorithm for reconstructing multichannel EEC signals from compressive measurements

机译:一种改进的行稀疏多测量矢量恢复算法,用于重建来自压缩测量的多通道EEC信号

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In this paper, a new method for reconstructing multichannel EEG signals from their compressive measurements is proposed which exploits the inter-channel correlation. Such correlation is used in the row-sparse multiple measurement vector (RSMMV) recovery approach to improve its performance in reconstructing multichannel EEGs. In this approach, it is assumed that the multichannel EEG signal ensemble is a row-sparse matrix in some domain such as wavelet, discrete cosine transform (DCT), or Gabor. However, this assumption does not hold in practice for real EEG signals. In order to overcome this limitation, a modified RSMMV algorithm is proposed which exploits sub-matrices of a given EEG matrix for which the assumption of row-sparsity is satisfied. The proposed method is applied to 2 multichannel EEG datasets chosen from the BCI competition III and the OSF databases and its performance is evaluated and compared with that of the RSMMV recovery approach; which has been proven to be superior to well-known single-channel recovery methods. Experimental results show that, in comparison with the RSMMV recovery approach, the proposed method achieves improvements of up to 4% and 2% in the reconstruction accuracy measured by the normalized mean squared error in the BCI and the OSF datasets respectively. The results also show that the proposed algorithm outperforms the blind compressed sensing method and has a comparable performance with the low-rank approach. The proposed method can therefore be deployed in wireless body area network based EEG monitoring systems. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在本文中,提出了一种从其压缩测量重建多声道EEG信号的新方法,其利用通道间相关性。这种相关性用于行稀疏多测量向量(RSMMV)恢复方法,以提高其重建多声道EEG的性能。在这种方法中,假设多声道EEG信号集合是一些域中的行稀疏矩阵,例如小波,离散余弦变换(DCT)或Gabor。但是,此假设在实践中不适用于实际EEG信号。为了克服这种限制,提出了一种修改的RSMMV算法,其利用给定EEG矩阵的子矩阵,其满足了行稀疏的假设。该方法应用于从BCI竞赛III中选择的2个多声道EEG数据集,并评估其性能并与RSMMV恢复方法的数据库进行评估;已被证明优于众所周知的单通道恢复方法。实验结果表明,与RSMMV恢复方法相比,所提出的方法分别通过BCI和OSF数据集中的标准化平均平方误差测量的重建精度达到高达4%和2%的改善。结果还表明,所提出的算法优于盲压缩的传感方法,具有较低级别的比较性能。因此,可以在基于无线体积网络的EEG监测系统中部署所提出的方法。 (c)2020 elestvier有限公司保留所有权利。

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