Σφακιανάκης Αλέξανδρος
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Παρασκευή 31 Μαρτίου 2017

A new multivariate empirical mode decomposition method for improving the performance of SSVEP-based brain computer interface.

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A new multivariate empirical mode decomposition method for improving the performance of SSVEP-based brain computer interface.

J Neural Eng. 2017 Mar 30;:

Authors: Chen YF, Atal K, Xie S, Liu Q

Abstract
OBJECTIVE: Accurate and efficient detection of steady-state visual evoked potentials (SSVEP) in electroencephalogram (EEG) is essential for the related brain-computer interface (BCI) applications.
APPROACH: Although the canonical correlation analysis (CCA) has been applied extensively and successfully to SSVEP recognition, the spontaneous EEG activities and artifacts that often occur during data recording can deteriorate the recognition performance. Therefore, it is meaningful to extract a few frequency sub-bands of interest to avoid or reduce the influence of unrelated brain activity and artifacts. This paper presents an improved method to detect the frequency component associated with SSVEP using multivariate empirical mode decomposition (MEMD) and CCA (MEMD-CCA). EEG signals from 9 healthy volunteers were recorded to evaluate the performance of the proposed method for SSVEP recognition.
MAIN RESULTS: We compared our method with CCA and temporally local multivariate synchronization index (TMSI). The results suggest that the MEMD-CCA achieved significantly higher accuracy in contrast to standard CCA and TMSI. It gave the improvements of 1.34%, 3.11%, 3.33%, 10.45%, 15.78%, 18.45%, 15.00% and 14.22% on average over CCA at time windows from 0.5 s to 5 s and 0.55%, 1.56%, 7.78%, 14.67%, 13.67%, 7.33% and 7.78% over TMSI from 0.75 s to 5 s. The method outperformed the filter-based decomposition (FB), empirical mode decomposition (EMD) and wavelet decomposition (WT) based CCA for SSVEP recognition.
SIGNIFICANCE: The results demonstrate the ability of our proposed MEMD-CCA to improve the performance of SSVEP-based BCI.

PMID: 28357991 [PubMed - as supplied by publisher]



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