Abstract
Magnetoencephalography (MEG) aims at reconstructing the unknown neuroelectric activity in the brain from non-invasive measurements of the magnetic field induced by neural sources. The solution of this ill-posed, ill-conditioned inverse problem is usually dealt with using regularization techniques that are often time-consuming, and computationally and memory storage demanding. In this paper we analyze how a slimmer procedure, random sampling, affects the estimation of the brain activity generated by both synthetic and real sources.
Anno
2019
Autori IAC
Tipo pubblicazione
Altri Autori
Cristina Campi, Annalisa Pascarella and Francesca Pitolli
Editore
Celal Bayar Üniverstesi
Rivista
Mathematical and computational applications in science and engineering