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...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
Abstract—Context in time series is one of the most useful and interesting characteristics for machin...
Summarization: We present a novel synergistic methodology for the spatio-temporal analysis of single...
This paper illustrates the improvement in accuracy of classification for electroencephalogram (EEG) ...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
We investigate the use of discriminative feature extractors in tandem configuration with generative ...
The multichannel nature of EEG and EMG data poses a big challenge to the development of automatic EE...
For sleep classification, automatic electroencephalogram (EEG) interpretation techniques are of inte...
Abstract: Pattern recognition methods, which recently have shown promising potential in the analysis...
This paper presents a new algorithm for the classification of multiclass EEG signals. This algorithm...
This thesis considers statistical methods for non-stationary signals, specifically stochastic modell...
The study of a time-frequency image is often the method of choice to address key issues in cognitive...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
Abstract—Context in time series is one of the most useful and interesting characteristics for machin...
Summarization: We present a novel synergistic methodology for the spatio-temporal analysis of single...
This paper illustrates the improvement in accuracy of classification for electroencephalogram (EEG) ...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
We investigate the use of discriminative feature extractors in tandem configuration with generative ...
The multichannel nature of EEG and EMG data poses a big challenge to the development of automatic EE...
For sleep classification, automatic electroencephalogram (EEG) interpretation techniques are of inte...
Abstract: Pattern recognition methods, which recently have shown promising potential in the analysis...
This paper presents a new algorithm for the classification of multiclass EEG signals. This algorithm...
This thesis considers statistical methods for non-stationary signals, specifically stochastic modell...
The study of a time-frequency image is often the method of choice to address key issues in cognitive...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
Abstract—Context in time series is one of the most useful and interesting characteristics for machin...