• DocumentCode
    3205176
  • Title

    Linear dynamic models for classification of single-trial EEG

  • Author

    Samdin, S. Balqis ; Chee-Ming Ting ; Salleh, Sh-Hussain ; Ariff, A.K. ; Mohd Noor, A.B.

  • Author_Institution
    Centre for Biomed. Eng., UTM, Skudai, Malaysia
  • fYear
    2013
  • fDate
    3-7 July 2013
  • Firstpage
    4827
  • Lastpage
    4830
  • Abstract
    This paper investigates the use of linear dynamic models (LDMs) to improve classification of single-trial EEG signals. Existing dynamic classification of EEG uses discrete-state hidden Markov models (HMMs) based on piecewise-stationary assumption, which is inadequate for modeling the highly non-stationary dynamics underlying EEG. The continuous hidden states of LDMs could better describe this continuously changing characteristic of EEG, and thus improve the classification performance. We consider two examples of LDM: a simple local level model (LLM) and a time-varying autoregressive (TVAR) state-space model. AR parameters and band power are used as features. Parameter estimation of the LDMs is performed by using expectation-maximization (EM) algorithm. We also investigate different covariance modeling of Gaussian noises in LDMs for EEG classification. The experimental results on two-class motor-imagery classification show that both types of LDMs outperform the HMM baseline, with the best relative accuracy improvement of 14.8% by LLM with full covariance for Gaussian noises. It may due to that LDMs offer more flexibility in fitting the underlying dynamics of EEG.
  • Keywords
    Gaussian noise; autoregressive processes; covariance analysis; electroencephalography; expectation-maximisation algorithm; hidden Markov models; medical signal processing; parameter estimation; piecewise constant techniques; signal classification; time-varying systems; AR parameter; Gaussian noises; HMM baseline; LDM parameter estimation; TVAR; band power; classification performance; continuous hidden states; covariance modeling; discrete-state hidden Markov model; dynamic classification; expectation-maximization algorithm; linear dynamic model; local level model; nonstationary dynamics; piecewise-stationary assumption; single-trial EEG signal classification; time-varying autoregressive state-space model; two-class motor-imagery classification; Accuracy; Brain models; Computational modeling; Electroencephalography; Hidden Markov models; Mathematical model; Linear dynamic model (LDM); brain computer interface (BCI); hidden Markov model (HMM);
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Engineering in Medicine and Biology Society (EMBC), 2013 35th Annual International Conference of the IEEE
  • Conference_Location
    Osaka
  • ISSN
    1557-170X
  • Type

    conf

  • DOI
    10.1109/EMBC.2013.6610628
  • Filename
    6610628