This paper investigates appropriate neural classifiers for the recognition of mental tasks from on-line spontaneous EEG signals. The classifiers are to be embedded in a portable brain-computer interface called ABI, We evaluate different kinds of classifiers, from statistical approaches to neural networks, with 8 healthy persons, Subjects' performance is analyzed off-line and, for three of them, also on-line in the presence of biofeedback. The proposed ABI robustly recognizes three mental tasks from on-line spontaneous EEG signals. Correct recognition is around 70%, This modest rate is largely compensated by two properties of ABI: wrong responses are below 5% and it makes decisions every 1/2 second. Also, since the subject end his/her person...
This paper describes our work on a portable non-invasive brain-computer interface (BCI), called Adap...
This paper presents the classification of three mental tasks, using the EEG signal and simulating a ...
This paper proposes the adoption of an innovative algorithm to enhance the performance of highly wea...
This paper proposes a new local neural classifier for the recognition of mental tasks from on-line s...
This paper proposes a novel and simple local neural classifier for the recognition of mental tasks f...
Abstract: This paper proposes and creates a new generalised view towards BCI with its related applic...
Abstract — BCI (Brain Computer Interface) is the method of communication between neural activity of ...
There is a growing interest in the use of physiological signals for communication and operation of d...
Brain machine interface (BMI) provides a digital channel for communication in the absence of the bio...
This thesis explores machine learning models for the analysis and classification of electroencephalo...
Classification of EEG signals extracted during mental tasks is a technique for designing Brain Compu...
Electroencephalogram, or EEG, signals are an important source of information for the study of underl...
In this paper we give an overview of our work on an asynchronous BCI (where the subject makes self-p...
In this paper, we have designed a two-state brain-computer interface (BCI) using neural network (NN)...
In this paper, a Brain Computer Interface (BCI) is designed using electroencephalogram (EEG) signals...
This paper describes our work on a portable non-invasive brain-computer interface (BCI), called Adap...
This paper presents the classification of three mental tasks, using the EEG signal and simulating a ...
This paper proposes the adoption of an innovative algorithm to enhance the performance of highly wea...
This paper proposes a new local neural classifier for the recognition of mental tasks from on-line s...
This paper proposes a novel and simple local neural classifier for the recognition of mental tasks f...
Abstract: This paper proposes and creates a new generalised view towards BCI with its related applic...
Abstract — BCI (Brain Computer Interface) is the method of communication between neural activity of ...
There is a growing interest in the use of physiological signals for communication and operation of d...
Brain machine interface (BMI) provides a digital channel for communication in the absence of the bio...
This thesis explores machine learning models for the analysis and classification of electroencephalo...
Classification of EEG signals extracted during mental tasks is a technique for designing Brain Compu...
Electroencephalogram, or EEG, signals are an important source of information for the study of underl...
In this paper we give an overview of our work on an asynchronous BCI (where the subject makes self-p...
In this paper, we have designed a two-state brain-computer interface (BCI) using neural network (NN)...
In this paper, a Brain Computer Interface (BCI) is designed using electroencephalogram (EEG) signals...
This paper describes our work on a portable non-invasive brain-computer interface (BCI), called Adap...
This paper presents the classification of three mental tasks, using the EEG signal and simulating a ...
This paper proposes the adoption of an innovative algorithm to enhance the performance of highly wea...