Enrico Suria
On the Use of Localized Strategies in Inverse Source Powered Brain-Computer Interfaces.
Rel. Francesco Paolo Andriulli. Politecnico di Torino, Master of science program in Ict For Smart Societies, 2019
Abstract
A Brain-Computer Interface (BCI) is a unidirectional communication system used to input predefined control commands to an external apparatus without using conventional motor output pathways but only monitoring the brain activity. A typical BCI system is composed of three main subsystems: (i) a brain acquisition system, usually Electroencephalography (EEG) or Magnetoencephalography (MEG); (ii) a signal processing system that includes pre-processing of the EEG/MEG signals, feature extraction and the translation of the features in commands by using a machine learning (ML) classification stage; (iii) a computer controlled by the generated commands providing a visual feedback. In this thesis we focus on a specific family of BCI that leverage on EEG Source Imaging (ESI) to map the EEG recording to intracranial currents by using electromagnetic models of the brain.
ESI leverages on two different electromagnetic problems to reconstruct the brain activity: the forward problem (FP) and the inverse problem (IP)
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