A review of parametric modelling techniques for EEG analysis.

@article{Pardey1996ARO,
  title={A review of parametric modelling techniques for EEG analysis.},
  author={James Pardey and Steven Roberts and Lionel Tarassenko},
  journal={Medical engineering & physics},
  year={1996},
  volume={18 1},
  pages={2-11}
}
This review provides an introduction to the use of parametric modelling techniques for time series analysis, and in particular the application of autoregressive modelling to the analysis of physiological signals such as the human electroencephalogram. The concept of signal stationarity is considered and, in the light of this, both adaptive models, and non-adaptive models employing fixed or adaptive segmentation, are discussed. For non-adaptive autoregressive models, the Yule-Walker equations… CONTINUE READING
Highly Influential
This paper has highly influenced 14 other papers. REVIEW HIGHLY INFLUENTIAL CITATIONS

From This Paper

Topics from this paper.

Citations

Publications citing this paper.
Showing 1-10 of 102 extracted citations

References

Publications referenced by this paper.
Showing 1-10 of 17 references

On the performance of ’ AR model order selection methods

  • Roberts S. Tdrassenko I..
  • Proc Sewnth
  • 1994

A 1 ttalysis of the sleep EEG using a multilayer network with spatial organisation

  • Marple I..
  • 1992

New method of automated sleep quantification

  • S Roberts, I Tdrassenko
  • MQ ~ & + Bid
  • 1992

A predictive least - squares principle

  • I Konstantinides
  • 1986

Cotnputet analysis of EEG signals with parametric models

  • A IsakssonA.Wennberg, H. ZetterbergI.
  • Pror IlXlC
  • 1981

Similar Papers

Loading similar papers…