Three new methods of feature extraction based on time-frequency analysis of speech are presented and compared. In the first approach, speech spectrograms were passed through a bank of 12 log-Gabor filters and the outputs are averaged. In the second approach, the spectrograms were sub-divided into ERB frequency bands and the average energy for each band is calculated. In the third approach, wavelet packet arrays were calculated and passed through a bank of 12 log-Gabor filters and averaged. The feature extraction methods were tested in the process of automatic stress and emotion classification. The feature distributions were modeled and classified using a Gaussian mixture model. The test samples included single vowels, words and sentences fr...
An essential step to achieving human-machine speech communication with the naturalness of communicat...
Speech Emotion Recognition (SER) is the task of recognizing a speaker’s emotional state from speech....
An interesting and important problem in Speech and Language Digital Signal Processing [8] is the cla...
In this paper, authors tried to develop reduced combinational features for emotional speech recognit...
The speech signal is an important tool for conveying information between humans; at the same time, i...
This paper presents a new system for automatic stress detection in speech. In the process of feature...
The recognition of emotions, such as anger, anxiety, joy, etc . from tonal variations in human speec...
The automatic recognition and classification of speech under stress has applications in behavioural ...
The classification of emotional speech is mostly considered in speech-related research on human-comp...
In this paper, wavelet packet entropy is proposed for speaker-independent emotion detection from spe...
During recent years, the field of emotional content analysis of speech signals has been gaining a lo...
Speech emotion recognition (SER) is a complicated and challenging task in the human-computer interac...
We propose a study of the mathematical properties of voice as an audio signal. This work includes si...
This study presents automatic stress recognition methods based on acoustic speech analysis. Novel ap...
Abstract Emotional speech characterization is an important issue for the understanding of interactio...
An essential step to achieving human-machine speech communication with the naturalness of communicat...
Speech Emotion Recognition (SER) is the task of recognizing a speaker’s emotional state from speech....
An interesting and important problem in Speech and Language Digital Signal Processing [8] is the cla...
In this paper, authors tried to develop reduced combinational features for emotional speech recognit...
The speech signal is an important tool for conveying information between humans; at the same time, i...
This paper presents a new system for automatic stress detection in speech. In the process of feature...
The recognition of emotions, such as anger, anxiety, joy, etc . from tonal variations in human speec...
The automatic recognition and classification of speech under stress has applications in behavioural ...
The classification of emotional speech is mostly considered in speech-related research on human-comp...
In this paper, wavelet packet entropy is proposed for speaker-independent emotion detection from spe...
During recent years, the field of emotional content analysis of speech signals has been gaining a lo...
Speech emotion recognition (SER) is a complicated and challenging task in the human-computer interac...
We propose a study of the mathematical properties of voice as an audio signal. This work includes si...
This study presents automatic stress recognition methods based on acoustic speech analysis. Novel ap...
Abstract Emotional speech characterization is an important issue for the understanding of interactio...
An essential step to achieving human-machine speech communication with the naturalness of communicat...
Speech Emotion Recognition (SER) is the task of recognizing a speaker’s emotional state from speech....
An interesting and important problem in Speech and Language Digital Signal Processing [8] is the cla...