Abstract:
This paper proposes a new local polynomial modeling (LPM) method for identification of time-varying autoregressive (TVAR) models and applies it to time-frequency analysis...Show MoreMetadata
Abstract:
This paper proposes a new local polynomial modeling (LPM) method for identification of time-varying autoregressive (TVAR) models and applies it to time-frequency analysis (TFA) of event-related electroencephalogram (ER-EEG). The LPM method models the TVAR coefficients locally by polynomials and estimates the polynomial coefficients using weighted least-squares with a window having a certain bandwidth. A data-driven variable bandwidth selection method is developed to determine the optimal bandwidth that minimizes the mean squared error. The resultant time-varying power spectral density estimation of the signal is capable of achieving both high time resolution and high frequency resolution in the time-frequency domain, making it a powerful TFA technique for nonstationary biomedical signals like ER-EEG. Experimental results on synthesized signals and real EEG data show that the LPM method can achieve a more accurate and complete time-frequency representation of the signal.
Published in: IEEE Transactions on Biomedical Engineering ( Volume: 58, Issue: 3, March 2011)
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- IEEE Keywords
- Index Terms
- Autoregressive Model ,
- Time Frequency ,
- Time-frequency Analysis ,
- Local Polynomial ,
- Time-varying Autoregressive Model ,
- Time-varying Autoregressive ,
- Mean Square Error ,
- Density Estimation ,
- Time Resolution ,
- Power Spectral Density ,
- Frequency Resolution ,
- Polynomial Coefficients ,
- Spectral Estimation ,
- Non-stationary Signals ,
- Optimal Bandwidth ,
- Bandwidth Selection ,
- Biomedical Signals ,
- Power Spectral Density Estimation ,
- High Frequency Resolution ,
- Non-parametric ,
- Continuous Wavelet Transform ,
- Standard Stimuli ,
- Power Spectral Density Values ,
- P300 Component ,
- EEG Signals ,
- Simulated Signals ,
- Time-frequency Resolution ,
- Steady-state Visual Evoked Potential ,
- Target Stimuli ,
- Kalman Filter
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Autoregressive Model ,
- Time Frequency ,
- Time-frequency Analysis ,
- Local Polynomial ,
- Time-varying Autoregressive Model ,
- Time-varying Autoregressive ,
- Mean Square Error ,
- Density Estimation ,
- Time Resolution ,
- Power Spectral Density ,
- Frequency Resolution ,
- Polynomial Coefficients ,
- Spectral Estimation ,
- Non-stationary Signals ,
- Optimal Bandwidth ,
- Bandwidth Selection ,
- Biomedical Signals ,
- Power Spectral Density Estimation ,
- High Frequency Resolution ,
- Non-parametric ,
- Continuous Wavelet Transform ,
- Standard Stimuli ,
- Power Spectral Density Values ,
- P300 Component ,
- EEG Signals ,
- Simulated Signals ,
- Time-frequency Resolution ,
- Steady-state Visual Evoked Potential ,
- Target Stimuli ,
- Kalman Filter
- Author Keywords
- MeSH Terms