DocumentCode :
718383
Title :
Data-efficient hand motor imagery decoding in EEG-BCI by using Morlet wavelets & Common Spatial Pattern algorithms
Author :
Ferrante, Andrea ; Gavriel, Constantinos ; Faisal, Aldo
Author_Institution :
Dept. of Bioeng., Imperial Coll. London, London, UK
fYear :
2015
fDate :
22-24 April 2015
Firstpage :
948
Lastpage :
951
Abstract :
EEG-based Brain Computer Interfaces (BCIs) are quite noisy brain signals recorded from the scalp (electroencephalography, EEG) to translate the user´s intent into action. This is usually achieved by looking at the pattern of brain activity across many trials while the subject is imagining the performance of an instructed action - the process known as motor imagery. Nevertheless, existing motor imagery classification algorithms do not always achieve good performances because of the noisy and non-stationary nature of the EEG signal and inter-subject variability. Thus, current EEG BCI takes a considerable upfront toll on patients, who have to submit to lengthy training sessions before even being able to use the BCI. In this study, we developed a data-efficient classifier for left/right hand motor imagery by combining in our pattern recognition both the oscillation frequency range and the scalp location. We achieve this by using a combination of Morlet wavelet and Common Spatial Pattern theory to deal with nonstationarity and noise. The system achieves an average accuracy of 88% across subjects and was trained by about a dozen training (10-15) examples per class reducing the size of the training pool by up to a 100-fold, making it very data-efficient way for EEG BCI.
Keywords :
bioelectric potentials; brain-computer interfaces; electroencephalography; medical signal processing; neurophysiology; pattern recognition; signal classification; signal denoising; wavelet transforms; EEG-BCI; EEG-based brain computer interfaces; Morlet wavelet algorithms; brain activity; data-efficient classifier; data-efficient hand motor imagery decoding; electroencephalography; inter-subject variability; lengthy training sessions; motor imagery classification algorithms; noisy brain signal recording; nonstationary nature; oscillation frequency range; pattern recognition; spatial pattern algorithms; Accuracy; Covariance matrices; Electrodes; Electroencephalography; Signal processing algorithms; Time-frequency analysis; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Engineering (NER), 2015 7th International IEEE/EMBS Conference on
Conference_Location :
Montpellier
Type :
conf
DOI :
10.1109/NER.2015.7146782
Filename :
7146782
Link To Document :
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