We present a comparison of three methods for the solution of the magnetoencephalography inverse problem. The methods are: a linearly con- strained 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 an- alyzed 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.

Particle filtering, beamforming and multiple signal classification for the analysis of magnetoencephalography time series: a comparison of algorithms

SORRENTINO, ALBERTO;CAMPI, CRISTINA;PIANA, MICHELE
2010-01-01

Abstract

We present a comparison of three methods for the solution of the magnetoencephalography inverse problem. The methods are: a linearly con- strained 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 an- alyzed 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.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11567/228547
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