Speech emotion recognition (SER) is a challenging issue because it is not clear which features are effective for classification. Emotionally related features are always extracted from speech signals for emotional classification. Handcrafted features are mainly used for emotional identification from audio signals. However, these features are not sufficient to correctly identify the emotional state of the speaker. The advantages of a deep convolutional neural network (DCNN) are investigated in the proposed work. A pretrained framework is used to extract the features from speech emotion databases. In this work, we adopt the feature selection (FS) approach to find the discriminative and most important features for SER. Many algorithms are used ...
International audienceThis chapter presents a comparative study of speech emotion recognition (SER) ...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
Speech is an efficient agent to explicit attitude and emotions via language. The crucial task for th...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
Abstract Speech emotion classification (SEC) has gained the utmost height and occupied a conspicuous...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
Speech is one of the most natural communication channels for expressing human emotions. Therefore, s...
Artificial Neural Network (ANN) models, specifically Convolutional Neural Networks (CNN), were appli...
An assortment of techniques has been presented in the area of Speech Emotion Recognition (SER), wher...
Speech emotion recognition (SER) is currently a research hotspot due to its challenging nature but b...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
International audienceThis chapter presents a comparative study of speech emotion recognition (SER) ...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
Speech is an efficient agent to explicit attitude and emotions via language. The crucial task for th...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
Abstract Speech emotion classification (SEC) has gained the utmost height and occupied a conspicuous...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
Speech emotion recognition (SER) is a challenging task since it is unclear what kind of features are...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
Speech is one of the most natural communication channels for expressing human emotions. Therefore, s...
Artificial Neural Network (ANN) models, specifically Convolutional Neural Networks (CNN), were appli...
An assortment of techniques has been presented in the area of Speech Emotion Recognition (SER), wher...
Speech emotion recognition (SER) is currently a research hotspot due to its challenging nature but b...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
International audienceThis chapter presents a comparative study of speech emotion recognition (SER) ...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...