Creating an accurate Speech Emotion Recognition (SER) system depends on extracting features relevant to that of emotions from speech. In this paper, the features that are extracted from the speech samples include Mel Frequency Cepstral Coefficients (MFCC), energy, pitch, spectral flux, spectral roll-off and spectral stationarity. In order to avoid the ‘curse of dimensionality’, statistical parameters, i.e. mean, variance, median, maximum, minimum, and index of dispersion have been applied on the extracted features. For classifying the emotion in an unknown test sample, Support Vector Machines (SVM) has been chosen due to its proven efficiency. Through experimentation on the chosen features, an average classification accuracy of 86.6 % has b...
Recognizing the sense of speech is one of the most active research topics in speech processing and i...
The recognition of emotional states is a relatively new technique in the field of Machine Learning. ...
In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM)...
Abstract—Speech Emotion Recognition (SER) is a hot research topic in the field of Human Computer Int...
Speech emotion recognition enables a computer system to records sounds and realizes the emotion of t...
Speech Emotion Recognition (SER) is a research topic which has a wide range of applications. The fea...
International audienceThis chapter presents a comparative study of speech emotion recognition (SER) ...
In order to improve the performance of the speech emotion recognition system and reduce the computin...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
The recognition of emotions, such as anger, anxiety, joy, etc . from tonal variations in human speec...
This chapter presents a comparative study of speech emotion recognition (SER) systems. Theoretical d...
Speech recognition has gained significant importance in facilitating user interactions with various ...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
Speech one of the biometric characteristic owned by human being, as well as fingerprint, DNA, retina...
In recent years, the interaction between humans and machines has become an issue of concern. This pa...
Recognizing the sense of speech is one of the most active research topics in speech processing and i...
The recognition of emotional states is a relatively new technique in the field of Machine Learning. ...
In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM)...
Abstract—Speech Emotion Recognition (SER) is a hot research topic in the field of Human Computer Int...
Speech emotion recognition enables a computer system to records sounds and realizes the emotion of t...
Speech Emotion Recognition (SER) is a research topic which has a wide range of applications. The fea...
International audienceThis chapter presents a comparative study of speech emotion recognition (SER) ...
In order to improve the performance of the speech emotion recognition system and reduce the computin...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
The recognition of emotions, such as anger, anxiety, joy, etc . from tonal variations in human speec...
This chapter presents a comparative study of speech emotion recognition (SER) systems. Theoretical d...
Speech recognition has gained significant importance in facilitating user interactions with various ...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
Speech one of the biometric characteristic owned by human being, as well as fingerprint, DNA, retina...
In recent years, the interaction between humans and machines has become an issue of concern. This pa...
Recognizing the sense of speech is one of the most active research topics in speech processing and i...
The recognition of emotional states is a relatively new technique in the field of Machine Learning. ...
In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM)...