The classification of Motor Imagery (MI) tasks constitutes one of the most challenging problems in Brain Computer Interfaces (BCI) mostly due to the varying conditions of its operation. These conditions may vary with respect to the number of electrodes, the time and effort that can be invested by the user for training/calibrating the system prior to its use, as well as the duration or even the type of the imaginary task that is most convenient for the user. Hence, it is desirable to design classification schemes that are not only accurate in terms of the classification output but also robust to changes in the operational conditions. Towards this goal, we propose a new sparse representation classification scheme that extends current sparse r...
Background: EEG signals are extremely complex in comparison to other biomedical signals, thus requir...
Electroencephalography (EEG) based on motor imagery has become a potential modality for brain-comput...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...
ABSTRACT The classification of Motor Imagery (MI) tasks constitutes one of the most challenging prob...
Brain-computer interfaces (BCIs) make humancomputer interaction more natural, especially for people ...
Classifying motor imagery brain signals where the signals are obtained based on imagined movement of...
Abstract The non-stationary nature of the EEG signal poses challenges for the classification of moto...
Classification of motor imagery (MI) electroencephalogram (EEG) plays a vital role in brain-computer...
The human brain is unquestionably the most complex organ of the body as it controls and processes it...
Typically, people with severe motor disabilities have limited opportunities to socialize. Brain-Comp...
Multichannel electroencephalography (EEG) is widely used in typical brain-computer interface (BCI) s...
Objective. Processing strategies are analyzed with respect to the classification of electroencephalo...
In this article, a novel computer-aided diagnosis framework is proposed for the classification of mo...
Brain complexity and non-stationary nature of electroencephalography (EEG) signal make considerable ...
The Brain-Computer Interface (BCI) permits persons with impairments to interact with the real world ...
Background: EEG signals are extremely complex in comparison to other biomedical signals, thus requir...
Electroencephalography (EEG) based on motor imagery has become a potential modality for brain-comput...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...
ABSTRACT The classification of Motor Imagery (MI) tasks constitutes one of the most challenging prob...
Brain-computer interfaces (BCIs) make humancomputer interaction more natural, especially for people ...
Classifying motor imagery brain signals where the signals are obtained based on imagined movement of...
Abstract The non-stationary nature of the EEG signal poses challenges for the classification of moto...
Classification of motor imagery (MI) electroencephalogram (EEG) plays a vital role in brain-computer...
The human brain is unquestionably the most complex organ of the body as it controls and processes it...
Typically, people with severe motor disabilities have limited opportunities to socialize. Brain-Comp...
Multichannel electroencephalography (EEG) is widely used in typical brain-computer interface (BCI) s...
Objective. Processing strategies are analyzed with respect to the classification of electroencephalo...
In this article, a novel computer-aided diagnosis framework is proposed for the classification of mo...
Brain complexity and non-stationary nature of electroencephalography (EEG) signal make considerable ...
The Brain-Computer Interface (BCI) permits persons with impairments to interact with the real world ...
Background: EEG signals are extremely complex in comparison to other biomedical signals, thus requir...
Electroencephalography (EEG) based on motor imagery has become a potential modality for brain-comput...
In this paper, we present a genetic algorithm (GA) based band power feature sparse learning (SL) app...