In this paper, a brain/computer interface is proposed. The aim of this work is the recognition of the will of a human being, without the need of detecting the movement of any muscle. Disabled people could take, of course, most important advantages from this kind of sensor system, but it could also be useful in many other situations where arms and legs could not be used or a brain-computer interface is required to give commands. In order to achieve the above results, a prerequisite has been that of developing a system capable of recognizing and classifying four kind of tasks: thinking to move the right hand, thinking to move the left hand, performing a simple mathematical operation, and thinking to a carol. The data set exploited in the training and test phase of the system has been acquired by means of 61 electrodes and it is formed by time series subsequently transformed to the frequency domain, in order to obtain the power spectrum. For every electrode we have 128 frequency channels. The classification algorithm that we used is the Support Vector Machine (SVM).

Costantini, G., Todisco, M., Casali, D., Carota, M., Saggio, G., Bianchi, L., et al. (2009). SVM Classification of EEG signals for brain computer interface. In Proceedings of the 2009 conference on Neural Nets WIRN09: Proceedings of the 19th Italian Workshop on Neural Nets.

SVM Classification of EEG signals for brain computer interface

COSTANTINI, GIOVANNI;SAGGIO, GIOVANNI;BIANCHI, LUIGI;
2009-01-01

Abstract

In this paper, a brain/computer interface is proposed. The aim of this work is the recognition of the will of a human being, without the need of detecting the movement of any muscle. Disabled people could take, of course, most important advantages from this kind of sensor system, but it could also be useful in many other situations where arms and legs could not be used or a brain-computer interface is required to give commands. In order to achieve the above results, a prerequisite has been that of developing a system capable of recognizing and classifying four kind of tasks: thinking to move the right hand, thinking to move the left hand, performing a simple mathematical operation, and thinking to a carol. The data set exploited in the training and test phase of the system has been acquired by means of 61 electrodes and it is formed by time series subsequently transformed to the frequency domain, in order to obtain the power spectrum. For every electrode we have 128 frequency channels. The classification algorithm that we used is the Support Vector Machine (SVM).
9th WIRN Italian Workshop on Neural Networks
Rilevanza nazionale
2009
Settore ING-IND/31 - ELETTROTECNICA
English
Intervento a convegno
Costantini, G., Todisco, M., Casali, D., Carota, M., Saggio, G., Bianchi, L., et al. (2009). SVM Classification of EEG signals for brain computer interface. In Proceedings of the 2009 conference on Neural Nets WIRN09: Proceedings of the 19th Italian Workshop on Neural Nets.
Costantini, G; Todisco, M; Casali, D; Carota, M; Saggio, G; Bianchi, L; Abbafati, M; Quitadamo, L
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/37927
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