APPLICATION OF LMS ADAPTIVE PREDICTIVE FILTERING FOR MUSCLE ARTIFACT (NOISE) CANCELLATION FROM EEG SIGNALS

Citation
Sv. Narasimhan et Dn. Dutt, APPLICATION OF LMS ADAPTIVE PREDICTIVE FILTERING FOR MUSCLE ARTIFACT (NOISE) CANCELLATION FROM EEG SIGNALS, Computers & electrical engineering, 22(1), 1996, pp. 13-30
Citations number
17
Categorie Soggetti
Computer Application, Chemistry & Engineering","Computer Science Hardware & Architecture","Computer Science Interdisciplinary Applications","Engineering, Eletrical & Electronic
ISSN journal
00457906
Volume
22
Issue
1
Year of publication
1996
Pages
13 - 30
Database
ISI
SICI code
0045-7906(1996)22:1<13:AOLAPF>2.0.ZU;2-P
Abstract
The presence of muscle artifact (noise) affects the electroencephalogr aph (EEG) analysis. This paper deals with the filtering of the muscle artifact (noise) from a muscle artifact contaminated EEG, by a hybrid approach. In this, the muscle artifact component outside the EEG band is removed by lowpass filtering and the component within the EEG band by the least mean square gradient adaptive predictive filtering. Furth er, the effect of the muscle artifact on the parametric representation of EEG and the improvement achieved by the proposed filtering, are co nsidered for simulated and real EEG data. The results indicate that th e proposed filtering facilitates a reasonably valid parametric represe ntation of EEG even when it is contaminated with the muscle artifact. The adaptive predictors realized by tapped delay line and lattice stru ctures have been considered.