2020
DOI: 10.1587/transfun.2020eap1058
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Compressed Sensing Framework Applying Independent Component Analysis after Undersampling for Reconstructing Electroencephalogram Signals

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 … Show more

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Cited by 10 publications
(7 citation statements)
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“…Several random matrices have been proposed in the literature for sampling EEG signals, such as Random Gaussian Matrices (RGM) with entries representing absolute values, Bernoulli matrices with entries representing 1's, and random binary matrices (RBMs) containing 0's and 1's. The RGM is commonly used [51][58] [59] since it meets the RIP and incoherence criteria with high probability. Due to a large amount of on-chip memory used to store random floating-point matrix elements.…”
Section: ) Sensing Matricesmentioning
confidence: 99%
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“…Several random matrices have been proposed in the literature for sampling EEG signals, such as Random Gaussian Matrices (RGM) with entries representing absolute values, Bernoulli matrices with entries representing 1's, and random binary matrices (RBMs) containing 0's and 1's. The RGM is commonly used [51][58] [59] since it meets the RIP and incoherence criteria with high probability. Due to a large amount of on-chip memory used to store random floating-point matrix elements.…”
Section: ) Sensing Matricesmentioning
confidence: 99%
“…Various sensing matrix structures have been investigated on the basis of correlations between distinct channels and employed to spontaneous (un-evoked) EEG data, and it showed low spatial correlation, and rakeness-based CS has good performance at a high compression ratio. A novel framework is proposed by K. Daisuke et al [59] for analyzing EEG recordings containing artifacts. This framework eliminates the need for independent component analysis in the sensing unit, allowing the ICA block to be shifted to the data processing unit.…”
Section: ) Sensing Matricesmentioning
confidence: 99%
“…We created a dictionary matrix using the K-SVD dictionary learning algorithm with EEG signals based on the CHB-MIT scalp EEG database [12]. The sampling rate of the EEG signals was changed from 256 Hz/sample to 200 Hz/sample to be the same as that used in [6], [7], [9] When using the K-SVD dictionary for a CS framework with OD-ICA, it is necessary to reveal the optimal sparse parameters during training and reconstruction, as well as the suitable number of the dictionary matrix size. Considering the relationship with the sparse parameter r when using the OMP algorithm in the reconstruction, we determined the optimal s parameter.…”
Section: Dictionary Creationmentioning
confidence: 99%
“…For comparison purposes, the region containing pseudoeye-blink artifact was not considered when calculating the NMSE to realize same evaluation as [6], [7], and [9]. At first, suitable sparse parameters are evaluated.…”
Section: Reconstruction Of Compressed Eegsmentioning
confidence: 99%
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