Motor imagery is a common control strategy in EEG-based brain-computer interfaces (BCIs). However, voluntary control of sensorimotor (SMR) rhythms by imagining a movement can be skilful and unintuitive and usually requires a varying amount of user training. To boost the training process, a whole class of BCI systems have been proposed, providing feedback as early as possible while continuously adapting the underlying classifier model. The present work describes a cue-paced, EEG-based BCI system using motor imagery that falls within the category of the previously mentioned ones. Specifically, our adaptive strategy includes a simple scheme based on a common spatial pattern (CSP) method and support vector machine (SVM) classification. The system's efficacy was proved by online testing on 10 healthy participants. In addition, we suggest some features we implemented to improve a system's "flexibility" and "customizability," namely, (i) a flexible training session, (ii) an unbalancing in the training conditions, and (iii) the use of adaptive thresholds when giving feedback.

EEG-Based BCI System Using Adaptive Features Extraction and Classification Procedures / Mondini, Valeria; Mangia, ANNA LISA; Cappello, Angelo. - In: COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE. - ISSN 1687-5265. - ELETTRONICO. - 2016:(2016), pp. 4562601.1-4562601.14. [10.1155/2016/4562601]

EEG-Based BCI System Using Adaptive Features Extraction and Classification Procedures

MONDINI, VALERIA
;
MANGIA, ANNA LISA;CAPPELLO, ANGELO
2016

Abstract

Motor imagery is a common control strategy in EEG-based brain-computer interfaces (BCIs). However, voluntary control of sensorimotor (SMR) rhythms by imagining a movement can be skilful and unintuitive and usually requires a varying amount of user training. To boost the training process, a whole class of BCI systems have been proposed, providing feedback as early as possible while continuously adapting the underlying classifier model. The present work describes a cue-paced, EEG-based BCI system using motor imagery that falls within the category of the previously mentioned ones. Specifically, our adaptive strategy includes a simple scheme based on a common spatial pattern (CSP) method and support vector machine (SVM) classification. The system's efficacy was proved by online testing on 10 healthy participants. In addition, we suggest some features we implemented to improve a system's "flexibility" and "customizability," namely, (i) a flexible training session, (ii) an unbalancing in the training conditions, and (iii) the use of adaptive thresholds when giving feedback.
2016
EEG-Based BCI System Using Adaptive Features Extraction and Classification Procedures / Mondini, Valeria; Mangia, ANNA LISA; Cappello, Angelo. - In: COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE. - ISSN 1687-5265. - ELETTRONICO. - 2016:(2016), pp. 4562601.1-4562601.14. [10.1155/2016/4562601]
Mondini, Valeria; Mangia, ANNA LISA; Cappello, Angelo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/597505
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