2012
DOI: 10.2478/v10175-012-0052-3
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ICA-Based EEG denoising: a comparative analysis of fifteen methods

Abstract: Abstract. Independent Component Analysis (ICA) plays an important role in biomedical engineering. Indeed, the complexity of processes involved in biomedicine and the lack of reference signals make this blind approach a powerful tool to extract sources of interest. However, in practice, only few ICA algorithms such as SOBI, (extended) InfoMax and FastICA are used nowadays to process biomedical signals. In this paper we raise the question whether other ICA methods could be better suited in terms of performance a… Show more

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Cited by 81 publications
(59 citation statements)
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“…Assuming that artifacts have already been removed from the data as can be achieved by methods as described, for instance, in (Comon and Jutten, 2010;Albera et al, 2012), all dipoles that do not belong to an extended source can be considered to emit background activity. Consequently, in order to distinguish between the extended sources, that we are looking for, and the noisy background activity, we can rewrite the data model (1) in the following way:…”
Section: Data Modelmentioning
confidence: 99%
“…Assuming that artifacts have already been removed from the data as can be achieved by methods as described, for instance, in (Comon and Jutten, 2010;Albera et al, 2012), all dipoles that do not belong to an extended source can be considered to emit background activity. Consequently, in order to distinguish between the extended sources, that we are looking for, and the noisy background activity, we can rewrite the data model (1) in the following way:…”
Section: Data Modelmentioning
confidence: 99%
“…Note that, unlike the three other algorithms, RobustICA does not require any prewhitening. The performance was computed as a function of computational complexity using the Normalized Mean-Squared Error (NMSE) as defined in [1]. In our experiment, the data length is fixed to 5120 samples and the SNR value is −5 dB.…”
Section: B Resultsmentioning
confidence: 99%
“…(1) (t) as a product of P − 1 elementary Givens rotations G (1) p (t p ) and of sequentially identifying the P − 1 corresponding parameters t p . The (P − 1)-dimensional optimization problem is thus replaced with P −1 sequential mono-dimensional optimization problems.…”
Section: Methodsmentioning
confidence: 99%
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