AbstractIntroductionBrain Computer Interfaces provide an alternative communication path to severe paralyzed people and uses electrical signals related to brain activity in order to identify the user’s intention. In this paper a classifier based on a Self-Organizing Map is introduced.MethodsElectroencephalography signal is used on this work as a source for the user’s intention. This signal represents the brain activity and is processed in order to extract the frequency features presented to the classifier, which uses a Self-Organizing Map and a series of probability masks in order to identify the correct class.ResultsThe proposed structure was evaluated using a dataset of Electroencephalography with three mental tasks. The system was able to...
In this paper, a brain/computer interface is proposed. The aim of this work is the recognition of th...
This work presents a supervised machine-learning approach to build an expert system that provides su...
A Support Vector Machine (SVM) classification method for data acquired by EEG registration for brain...
AbstractIntroductionBrain Computer Interfaces provide an alternative communication path to severe pa...
AbstractBrain computer interface provides communication opportunity between the brain and the enviro...
Many people in the world live with qualitative limitations due to paraplegia, visual impairment or l...
This paper investigates appropriate neural classifiers for the recognition of mental tasks from on-l...
Brain computer interface provides communication opportunity between the brain and the environment ar...
The aim of this paper is to propose a real-time classification algorithm for the low-amplitude elect...
In this paper, a Brain Computer Interface (BCI) is designed using electroencephalogram (EEG) signals...
This paper presents an EEG-based emotion recognition system using self-organizing map for boundary d...
This paper proposes a new local neural classifier for the recognition of mental tasks from on-line s...
A brain-computer interface (BCI), based on motor imagery EEG, uses information extracted from the el...
If several mental states can be reliably distinguished by recognizing patterns in EEG, then a paraly...
This thesis explores machine learning models for the analysis and classification of electroencephalo...
In this paper, a brain/computer interface is proposed. The aim of this work is the recognition of th...
This work presents a supervised machine-learning approach to build an expert system that provides su...
A Support Vector Machine (SVM) classification method for data acquired by EEG registration for brain...
AbstractIntroductionBrain Computer Interfaces provide an alternative communication path to severe pa...
AbstractBrain computer interface provides communication opportunity between the brain and the enviro...
Many people in the world live with qualitative limitations due to paraplegia, visual impairment or l...
This paper investigates appropriate neural classifiers for the recognition of mental tasks from on-l...
Brain computer interface provides communication opportunity between the brain and the environment ar...
The aim of this paper is to propose a real-time classification algorithm for the low-amplitude elect...
In this paper, a Brain Computer Interface (BCI) is designed using electroencephalogram (EEG) signals...
This paper presents an EEG-based emotion recognition system using self-organizing map for boundary d...
This paper proposes a new local neural classifier for the recognition of mental tasks from on-line s...
A brain-computer interface (BCI), based on motor imagery EEG, uses information extracted from the el...
If several mental states can be reliably distinguished by recognizing patterns in EEG, then a paraly...
This thesis explores machine learning models for the analysis and classification of electroencephalo...
In this paper, a brain/computer interface is proposed. The aim of this work is the recognition of th...
This work presents a supervised machine-learning approach to build an expert system that provides su...
A Support Vector Machine (SVM) classification method for data acquired by EEG registration for brain...