Novel trends in affective computing are based on reliable sources of physiological signals such as Electroencephalogram (EEG), Electrocardiogram (ECG), and Galvanic Skin Response (GSR). The use of these signals provides challenges of performance improvement within a broader set of emotion classes in a less constrained real-world environment. To overcome these challenges, we propose a computational framework of 2D Convolutional Neural Network (CNN) architecture for the arrangement of 14 channels of EEG, and a combination of Long Short-Term Memory (LSTM) and 1D-CNN architecture for ECG and GSR. Our approach is subject-independent and incorporates two publicly available datasets of DREAMER and AMIGOS with low-cost, wearable sensors to extract ...
International audienceIn this study, we conducted a systematic literature review of 107 primary stud...
Emotion recognition using miniaturised wearable physiological sensors has emerged as a revolutionary...
Emotion recognition using miniaturised wearable physiological sensors has emerged as a revolutionary...
Novel trends in affective computing are based on reliable sources of physiological signals such as E...
The purpose of this study is to improve human emotional classification accuracy using a convolution ...
Emotion recognition via electroencephalography (EEG) has been gaining increasing attention in applic...
One of the challenging goals of affective computing is building robust models that can predict human...
Recognizing emotions is very important while building robust and interactive Affective Brain-Compute...
Besides facial or gesture-based emotion recognition, Electroencephalogram (EEG) data have been drawi...
In this study we explore how different levels of emotional intensity (Arousal) and pleasantness (Val...
Currently, there are some problems in the electrocorticogram (EEG) emotion recognition research, suc...
Emotion recognition during music listening using electroencephalogram (EEG) has gained more attentio...
In this research, we develop an affective computing method based on machine learning for emotion rec...
Recommender systems have been based on context and content, and now the technological challenge of m...
Emotion charting using multimodal signals has gained great demand for stroke-affected patients, for ...
International audienceIn this study, we conducted a systematic literature review of 107 primary stud...
Emotion recognition using miniaturised wearable physiological sensors has emerged as a revolutionary...
Emotion recognition using miniaturised wearable physiological sensors has emerged as a revolutionary...
Novel trends in affective computing are based on reliable sources of physiological signals such as E...
The purpose of this study is to improve human emotional classification accuracy using a convolution ...
Emotion recognition via electroencephalography (EEG) has been gaining increasing attention in applic...
One of the challenging goals of affective computing is building robust models that can predict human...
Recognizing emotions is very important while building robust and interactive Affective Brain-Compute...
Besides facial or gesture-based emotion recognition, Electroencephalogram (EEG) data have been drawi...
In this study we explore how different levels of emotional intensity (Arousal) and pleasantness (Val...
Currently, there are some problems in the electrocorticogram (EEG) emotion recognition research, suc...
Emotion recognition during music listening using electroencephalogram (EEG) has gained more attentio...
In this research, we develop an affective computing method based on machine learning for emotion rec...
Recommender systems have been based on context and content, and now the technological challenge of m...
Emotion charting using multimodal signals has gained great demand for stroke-affected patients, for ...
International audienceIn this study, we conducted a systematic literature review of 107 primary stud...
Emotion recognition using miniaturised wearable physiological sensors has emerged as a revolutionary...
Emotion recognition using miniaturised wearable physiological sensors has emerged as a revolutionary...