Emotion recognition during music listening using electroencephalogram (EEG) has gained more attention from researchers, recently. Many studies focused on accuracy on one subject while subject-independent performance evaluation was still unclear. In this paper, the objective is to create an emotion recognition model that can be applied to multiple subjects. By adopting convolutional neural networks (CNNs), advantage could be gained from utilizing information from electrodes and time steps. Using CNNs also does not need feature extraction which might leave out other related but unobserved features. CNNs with three to seven convolutional layers were deployed in this research. We measured their performance with a binary classification task for ...
The purpose of this study is to improve human emotional classification accuracy using a convolution ...
Listening to different types of music of one’s individual taste and mood is something that people de...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
Emotion recognition plays a vital role in human-machine interface as well as brain computer interfac...
Electroencephalogram (EEG) is the brain signal acquired through multiple channels and is packed with...
Besides facial or gesture-based emotion recognition, Electroencephalogram (EEG) data have been drawi...
Emotions are important not only in human creativity and intelligence but also in human rational thin...
Emotion recognition via electroencephalography (EEG) has been gaining increasing attention in applic...
Emotions play a crucial role in human interaction and healthcare. This study introduces an automatic...
Music is an audio signal consisting of a wide variety of complex components which vary according to ...
In recent years, more and more researchers have focused on emotion recognition methods based on elec...
The expression of human emotions is a complex process that often manifests through physiological and...
The objective of this research is to classify EEG (electroencephalography) signal recordings of the ...
This paper studies the emotion recognition from musical tracks in the 2-dimensional valence-arousal ...
Although brain-computer interfaces (BCI) progress rapidly, the desired success has not been achieved...
The purpose of this study is to improve human emotional classification accuracy using a convolution ...
Listening to different types of music of one’s individual taste and mood is something that people de...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
Emotion recognition plays a vital role in human-machine interface as well as brain computer interfac...
Electroencephalogram (EEG) is the brain signal acquired through multiple channels and is packed with...
Besides facial or gesture-based emotion recognition, Electroencephalogram (EEG) data have been drawi...
Emotions are important not only in human creativity and intelligence but also in human rational thin...
Emotion recognition via electroencephalography (EEG) has been gaining increasing attention in applic...
Emotions play a crucial role in human interaction and healthcare. This study introduces an automatic...
Music is an audio signal consisting of a wide variety of complex components which vary according to ...
In recent years, more and more researchers have focused on emotion recognition methods based on elec...
The expression of human emotions is a complex process that often manifests through physiological and...
The objective of this research is to classify EEG (electroencephalography) signal recordings of the ...
This paper studies the emotion recognition from musical tracks in the 2-dimensional valence-arousal ...
Although brain-computer interfaces (BCI) progress rapidly, the desired success has not been achieved...
The purpose of this study is to improve human emotional classification accuracy using a convolution ...
Listening to different types of music of one’s individual taste and mood is something that people de...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...