Compressed Sensing Framework Applying Independent Component Analysis after Undersampling for Reconstructing Electroencephalogram Signals

D. Kanemoto, Shun Katsumata, M. Aihara, M. Ohki
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引用次数: 4

Abstract

This paper proposes a novel compressed sensing (CS) framework for reconstructing electroencephalogram (EEG) signals. A feature of this framework is the application of independent component analysis (ICA) to remove the interference from artifacts after undersampling in a data processing unit. Therefore, we can remove the ICA processing block from the sensing unit. In this framework, we used a random undersampling measurement matrix to suppress the Gaussian. The developed framework, in which the discrete cosine transform basis and orthogonal matching pursuit were used, was evaluated using raw EEG signals with a pseudo-model of an eye-blink artifact. The normalized mean square error (NMSE) and correlation coefficient (CC), obtained as the average of 2,000 results, were compared to quantitatively demonstrate the effectiveness of the proposed framework. The evaluation results of the NMSE and CC showed that the proposed framework could remove the interference from the artifacts under a high compression ratio. key words: EEG, compressed sensing, independent component analysis, random undersampling, artifact
欠采样后独立分量分析压缩感知框架用于脑电图信号重构
提出了一种新的压缩感知(CS)框架,用于脑电图信号的重构。该框架的一个特点是应用独立分量分析(ICA)去除数据处理单元欠采样后的伪影干扰。因此,我们可以从传感单元中移除ICA处理块。在这个框架中,我们使用随机欠采样测量矩阵来抑制高斯分布。该框架采用离散余弦变换基和正交匹配追踪,并利用原始脑电信号和伪眨眼伪影模型进行评价。将2000个结果的平均值归一化均方误差(NMSE)和相关系数(CC)进行比较,定量地证明了所提出框架的有效性。NMSE和CC的评价结果表明,在较高的压缩比下,该框架能够去除伪影干扰。关键词:脑电图,压缩感知,独立分量分析,随机欠采样,伪影
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