We investigate the use of discriminative feature extractors in tandem configuration with generative EEG classification system. Existing studies on dynamic EEG classification typically use hidden Markov models (HMMs) which lack discriminative capability. In this paper, a linear and a non-linear classifier are discriminatively trained to produce complementary input features to the conventional HMM system. Two sets of tandem features are derived from linear discriminant analysis (LDA) projection output and multilayer perceptron (MLP) class-posterior probability, before appended to the standard autoregressive (AR) features. Evaluation on a two-class motor-imagery classification task shows that both the proposed tandem features yield consistent ...
Gu S, Jin Y. Heterogeneous classifier ensembles for EEG-based motor imaginary detection. In: 2012 1...
This paper introduces a method to classify EEG signals using features extracted by an integration of...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...
Discriminative Tandem Features for HMM-based EEG Classification Citation for published version
This paper investigates the use of linear dynamic models (LDMs) to improve classification of single-...
Abstract—As there has been a paradigm shift in the learning load from a human subject to a computer,...
In this contribution we examine the use and utility of parallel HMM classification in single-trial m...
Many techniques have been introduced to improve both brain-computer interface (BCI) steps: feature e...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
We introduce a multi-step machine learning approach and use it to classify data from EEG-based brain...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
Changes in EEG power spectra related to the imagination of movements may be used to build up a direc...
Abstract. Fatigue is the most important reason leading to traffic accidents. In order to ensure traf...
We consider the problem of multiclass adaptive classification for brain-computer interfaces and prop...
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
Gu S, Jin Y. Heterogeneous classifier ensembles for EEG-based motor imaginary detection. In: 2012 1...
This paper introduces a method to classify EEG signals using features extracted by an integration of...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...
Discriminative Tandem Features for HMM-based EEG Classification Citation for published version
This paper investigates the use of linear dynamic models (LDMs) to improve classification of single-...
Abstract—As there has been a paradigm shift in the learning load from a human subject to a computer,...
In this contribution we examine the use and utility of parallel HMM classification in single-trial m...
Many techniques have been introduced to improve both brain-computer interface (BCI) steps: feature e...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
We introduce a multi-step machine learning approach and use it to classify data from EEG-based brain...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
Changes in EEG power spectra related to the imagination of movements may be used to build up a direc...
Abstract. Fatigue is the most important reason leading to traffic accidents. In order to ensure traf...
We consider the problem of multiclass adaptive classification for brain-computer interfaces and prop...
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
Gu S, Jin Y. Heterogeneous classifier ensembles for EEG-based motor imaginary detection. In: 2012 1...
This paper introduces a method to classify EEG signals using features extracted by an integration of...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...