The processing and classification of electroencephalographic signals (EEG) are increasingly performed using deep learning frameworks, such as convolutional neural networks (CNNs), to generate abstract features from brain data, automatically paving the way for remarkable classification prowess. However, EEG patterns exhibit high variability across time and uncertainty due to noise. It is a significant problem to be addressed in P300-based Brain Computer Interface (BCI) for smart home interaction. It operates in a non-optimal natural environment where added noise is often present and is also white. In this work, we propose a sequential unification of temporal convolutional networks (TCNs) modified to EEG signals, LSTM cells, with a fuzzy neur...
We evaluate the possibility of application of combination of classifiers using fuzzy measures and in...
Mental tasks classification is increasingly recognized as a major challenge in the field of EEG sign...
Recent electrophysiological studies support command-specific changes in the electroencephalography (...
Brain-Computer Interface (BCI) has become an established technology to interconnect a human brain an...
Abstract Achieving an efficient and reliable method is essential to interpret a user’s brain wave an...
IEEE Brain-Computer interfaces (BCIs) enhance the capability of human brain activities to interact w...
In recent years, deep learning (DL) has contributed significantly to the improvement of motor-imager...
Researchers in neuroscience computing experience difficulties when they try to carry out neuroanalys...
This thesis explores machine learning models for the analysis and classification of electroencephalo...
From allowing basic communication to move through an environment, several attempts are being made in...
Brain Computing interface technology represents a very highly growing field now-a-days for the resea...
Improving the independent living ability of people who have suffered spinal cord injuries (SCIs) is ...
We develop and test three deep-learning recurrent convolutional architectures forlearning to recogni...
Brain Computer Interfaces (BCIs) are capable of processing neural stimuli using electroencephalogram...
As brain-computer interfaces (BCI) must provide reliable ways for end users to accomplish a specific...
We evaluate the possibility of application of combination of classifiers using fuzzy measures and in...
Mental tasks classification is increasingly recognized as a major challenge in the field of EEG sign...
Recent electrophysiological studies support command-specific changes in the electroencephalography (...
Brain-Computer Interface (BCI) has become an established technology to interconnect a human brain an...
Abstract Achieving an efficient and reliable method is essential to interpret a user’s brain wave an...
IEEE Brain-Computer interfaces (BCIs) enhance the capability of human brain activities to interact w...
In recent years, deep learning (DL) has contributed significantly to the improvement of motor-imager...
Researchers in neuroscience computing experience difficulties when they try to carry out neuroanalys...
This thesis explores machine learning models for the analysis and classification of electroencephalo...
From allowing basic communication to move through an environment, several attempts are being made in...
Brain Computing interface technology represents a very highly growing field now-a-days for the resea...
Improving the independent living ability of people who have suffered spinal cord injuries (SCIs) is ...
We develop and test three deep-learning recurrent convolutional architectures forlearning to recogni...
Brain Computer Interfaces (BCIs) are capable of processing neural stimuli using electroencephalogram...
As brain-computer interfaces (BCI) must provide reliable ways for end users to accomplish a specific...
We evaluate the possibility of application of combination of classifiers using fuzzy measures and in...
Mental tasks classification is increasingly recognized as a major challenge in the field of EEG sign...
Recent electrophysiological studies support command-specific changes in the electroencephalography (...