Estimation of neuronal activity and brain dynamics using a dual Kalman filter with physiologycal based linear model
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Abstract
In this research article a dynamic estimation of neuronal activity and brain dynamics from electroencephalographic (EEG) signals is presented using a dual Kalman filter. The dynamic model for brain behavior is evaluated using physiological-based linear models. Filter performance is analyzed for simulated and clinical EEG data, over several noise conditions. As a result a better performance on the solution of the dynamic inverse problem is achieved, in case of time varying parameters compared with the system with fixed parameters and the static case. An evaluation of computational load is performed when predicted dynamic cases, estimated using the Kalman filter, are up to ten times faster than the static case.
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How to Cite
Giraldo, E., & Castellanos, C. G. (2014). Estimation of neuronal activity and brain dynamics using a dual Kalman filter with physiologycal based linear model. Revista Ingenierías Universidad De Medellín, 12(22), 169–180. https://doi.org/10.22395/rium.v12n22a15