In this paper we present an off-line Kalman filter approach to remove transcranial magnetic stimulation (TMS)-induced artifacts from electroencephalographic (EEG) recordings. Two dynamic models describing EEG and TMS signals generation are identified from data and the Kalman filter is applied to the linear system arising from their combination. The keystone of the approach is the use of time-varying covariance matrices suitably tuned on the physical parameters of the problem that allow us to model the non-stationary components of the EEG/TMS signal neglected by conventional stationary filters. The approach guarantees an efficient deletion of TMS-induced artifacts while preserving the integrity of EEG signals around TMS impulses. Experimental results show that the Kalman filter achieves a significant performance improvement over standard stationary filters.
F., M., Garulli, A., Prattichizzo, D., C., R., Rossi, S. (2007). A Kalman filter approach to remove TMS-induced artifacts from EEG recordings. In Proc. of the European Control Conference 2007 (pp.2201-2206). New York : IEEE.
A Kalman filter approach to remove TMS-induced artifacts from EEG recordings
GARULLI, ANDREA;PRATTICHIZZO, DOMENICO;ROSSI, SIMONE
2007-01-01
Abstract
In this paper we present an off-line Kalman filter approach to remove transcranial magnetic stimulation (TMS)-induced artifacts from electroencephalographic (EEG) recordings. Two dynamic models describing EEG and TMS signals generation are identified from data and the Kalman filter is applied to the linear system arising from their combination. The keystone of the approach is the use of time-varying covariance matrices suitably tuned on the physical parameters of the problem that allow us to model the non-stationary components of the EEG/TMS signal neglected by conventional stationary filters. The approach guarantees an efficient deletion of TMS-induced artifacts while preserving the integrity of EEG signals around TMS impulses. Experimental results show that the Kalman filter achieves a significant performance improvement over standard stationary filters.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.
https://hdl.handle.net/11365/19069
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