This study is devoted to the classification of fourclass mental tasks data for a Brain-Computer Interface protocol. In such view we adopted Multi Layer Perceptron Neural Network (MLP) and Fuzzy C-means analysis for classifying: left and right hand movement imagination, mental subtraction operation and mental recitation of a nursery rhyme. Five subjects participated to the experiment in two sessions recorded in distinct days. Different parameters were considered for the evaluation of the performances of the two classifiers: accuracy, that is, percentage of correct classifications, training time and size of the training dataset. The results show that even if the accuracies of the two classifiers are quite similar, the MLP classifier needs a smaller training set to reach them with respect to the Fuzzy one. This leads to the preference of MLP for the classification of mental tasks in Brain Computer Interface protocols.

Saggio, G., Cavallo, P., Ferretti, A., Garzoli, F., Quitadamo, L., Marciani, M.g., et al. (2009). Comparison of two different classifiers for mental tasks-based Brain-Computer Interface: MLP Neural Networks vs. Fuzzy Logic. In World of Wireless, Mobile and Multimedia Networks & Workshops, 2009. WoWMoM 2009. IEEE International Symposium on a. Kos : IEEE [10.1109/WOWMOM.2009.5282406].

Comparison of two different classifiers for mental tasks-based Brain-Computer Interface: MLP Neural Networks vs. Fuzzy Logic

SAGGIO, GIOVANNI;MARCIANI, MARIA GRAZIA;GIANNINI, FRANCO;BIANCHI, LUIGI
2009-06-01

Abstract

This study is devoted to the classification of fourclass mental tasks data for a Brain-Computer Interface protocol. In such view we adopted Multi Layer Perceptron Neural Network (MLP) and Fuzzy C-means analysis for classifying: left and right hand movement imagination, mental subtraction operation and mental recitation of a nursery rhyme. Five subjects participated to the experiment in two sessions recorded in distinct days. Different parameters were considered for the evaluation of the performances of the two classifiers: accuracy, that is, percentage of correct classifications, training time and size of the training dataset. The results show that even if the accuracies of the two classifiers are quite similar, the MLP classifier needs a smaller training set to reach them with respect to the Fuzzy one. This leads to the preference of MLP for the classification of mental tasks in Brain Computer Interface protocols.
1th IEEE International WoWMoM Workshop on Interdisciplinary Research on E-Health Services and Systems (IREHSS 2009)
Kos (Greece)
2009
IEEE
Rilevanza internazionale
contributo
giu-2009
giu-2009
Settore ING-INF/01 - ELETTRONICA
English
http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=5282406&tag=1
Intervento a convegno
Saggio, G., Cavallo, P., Ferretti, A., Garzoli, F., Quitadamo, L., Marciani, M.g., et al. (2009). Comparison of two different classifiers for mental tasks-based Brain-Computer Interface: MLP Neural Networks vs. Fuzzy Logic. In World of Wireless, Mobile and Multimedia Networks & Workshops, 2009. WoWMoM 2009. IEEE International Symposium on a. Kos : IEEE [10.1109/WOWMOM.2009.5282406].
Saggio, G; Cavallo, P; Ferretti, A; Garzoli, F; Quitadamo, L; Marciani, Mg; Giannini, F; Bianchi, L
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/100272
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