PARTICLE FILTERING, BEAMFORMING AND MULTIPLE SIGNAL CLASSIFICATION FOR THE ANALYSIS OF MAGNETOENCEPHALOGRAPHY TIME SERIES: A COMPARISON OF ALGORITHMS

Abstract
We present a comparison of three methods for the solution of the magnetoencephalography inverse problem. The methods are: a linearly constrained minimum variance beamformer, an algorithm implementing multiple signal classification with recursively applied projection and a particle filter for Bayesian tracking. Synthetic data with neurophysiological significance are analyzed by the three methods to recover position, orientation and amplitude of the active sources. Finally, a real data set evoked by a simple auditory stimulus is considered.
Anno
2010
Tipo pubblicazione
Altri Autori
Pascarella, Annalisa; Sorrentino, Alberto; Campi, Cristina; Piana, Michele
Editore
American Institute of Mathematical Sciences,
Rivista
Inverse problems and imaging (Springfield, Mo.)