The purpose of this work is to evaluate different feature extraction alternatives to detect the event related evoked potential signal on brain computer interfaces, trying to minimize the time employed and the classification error, in terms of sensibility and specificity of the method, looking for alternatives to coherent averaging. In this context the results obtained performing the feature extraction using discrete dyadic wavelet transform using different mother wavelets are presented. For the classification a single layer perceptron was used. The results obtained with and without the wavelet decomposition were compared; showing an improvement on the classification rate, the specificity and the sensibility for the feature vectors obtained using some mother wavelets.
CITATION STYLE
Gareis, I., Gentiletti, G., Acevedo, R., & Rufiner, L. (2011). Feature extraction on brain computer interfaces using discrete dyadic wavelet transform: Preliminary results. In Journal of Physics: Conference Series (Vol. 313). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/313/1/012011
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