We demonstrate that GNMM is able to perform effective channel selections/reductions, which not only reduces the difficulty of data collection, but also greatly improves the generalization of the classifier. An important step that affects the effectiveness of GNMM is the pre-processing method. In this paper, we also highlight the importance of choosing an appropriate time window position
This study suggests a new approach to EEG data classification by exploring the idea of using evoluti...
We apply artificial neural network (ANN) for recognition and classification of electroencephalograph...
We present a multi-objective optimization method for electroencephalographic (EEG) channel selection...
Objective An electroencephalogram-based (EEG-based) brain–computer-interface (BCI) provides a new co...
Feature selection is an important step in many pattern recognition systems aiming to overcome the so...
614-619In classification problems, algorithm and feature selection plays a major role. The features ...
Electroencephalography (EEG) classification for mental tasks is the crucial part of the brain-comput...
Electroencephalography is a non-invasive measure of the brain electrical activity generated by milli...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...
We present a method of selecting optimal input features from wavelet coefficients of electroencephal...
EEG is a non-invasive powerful system that finds applications in several domains and research areas....
Brain-computer interface is a promising research area that has the potential to aid impaired individ...
Proposes a technique that uses genetic algorithm (GA) to select optimal features for classification ...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...
International audience<p>Brain-computer interfaces (BCIs) are systems that record brain signalsand t...
This study suggests a new approach to EEG data classification by exploring the idea of using evoluti...
We apply artificial neural network (ANN) for recognition and classification of electroencephalograph...
We present a multi-objective optimization method for electroencephalographic (EEG) channel selection...
Objective An electroencephalogram-based (EEG-based) brain–computer-interface (BCI) provides a new co...
Feature selection is an important step in many pattern recognition systems aiming to overcome the so...
614-619In classification problems, algorithm and feature selection plays a major role. The features ...
Electroencephalography (EEG) classification for mental tasks is the crucial part of the brain-comput...
Electroencephalography is a non-invasive measure of the brain electrical activity generated by milli...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...
We present a method of selecting optimal input features from wavelet coefficients of electroencephal...
EEG is a non-invasive powerful system that finds applications in several domains and research areas....
Brain-computer interface is a promising research area that has the potential to aid impaired individ...
Proposes a technique that uses genetic algorithm (GA) to select optimal features for classification ...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...
International audience<p>Brain-computer interfaces (BCIs) are systems that record brain signalsand t...
This study suggests a new approach to EEG data classification by exploring the idea of using evoluti...
We apply artificial neural network (ANN) for recognition and classification of electroencephalograph...
We present a multi-objective optimization method for electroencephalographic (EEG) channel selection...