This paper investigates the effect of fixed point calculations on the accuracy of automatic emotion detection from speech signals. The tests used natural emotional speech recordings representing 16 speakers expressing two emotions: anger and neutral (unemotional) state. The feature set was derived from the Teager energy operator (TEO) and the speech was classified using the Gaussian mixture model (GMM) method. The results showed that with decreasing fixed point resolution from 16 bits down to 6 bits, the average classification error for the TEO increases from 0.0% to 6.6%. At 8 bit resolution, the error was an acceptable 2.4%, which implies that the TEO can be efficiently calculated using low-cost hardware
In this article, we study emotion detection from speech in a speaker-specific scenario. By parameter...
This paper investigates the effects of standard speech compression techniques on the accuracy of aut...
AbstractThe kinship between man and machines has become a new trend of technology such that machines...
In this paper, an emotion classification system based on speech signals is presented. The classifier...
This paper describes a system that deploys acoustic and linguistic information from speech in order ...
AbstractRecognizing emotion from speech has become one the active research themes in speech processi...
Abstract Recognizing emotion from speech has become one the active research themes in speech process...
We investigate an affective saliency approach for speech emotion recognition of spoken dialogue utte...
This paper investigates the use of speech-to-text methods for assigning an emotion class to a given ...
Abstract: We report on the progress with respect to an emotion-aware voice portal concerning several...
The present study elaborates on the exploitation of both linguistic and acoustic feature modeling fo...
The goals of this research were: (1) to develop a system that will automatically measure changes in ...
Abstract—We present a method to classify fixed-duration windows of speech as expressing anger or not...
In this paper, a Speech Emotion Recognition (SER) system is proposed using the feature combination o...
The speech signal is an important tool for conveying information between humans; at the same time, i...
In this article, we study emotion detection from speech in a speaker-specific scenario. By parameter...
This paper investigates the effects of standard speech compression techniques on the accuracy of aut...
AbstractThe kinship between man and machines has become a new trend of technology such that machines...
In this paper, an emotion classification system based on speech signals is presented. The classifier...
This paper describes a system that deploys acoustic and linguistic information from speech in order ...
AbstractRecognizing emotion from speech has become one the active research themes in speech processi...
Abstract Recognizing emotion from speech has become one the active research themes in speech process...
We investigate an affective saliency approach for speech emotion recognition of spoken dialogue utte...
This paper investigates the use of speech-to-text methods for assigning an emotion class to a given ...
Abstract: We report on the progress with respect to an emotion-aware voice portal concerning several...
The present study elaborates on the exploitation of both linguistic and acoustic feature modeling fo...
The goals of this research were: (1) to develop a system that will automatically measure changes in ...
Abstract—We present a method to classify fixed-duration windows of speech as expressing anger or not...
In this paper, a Speech Emotion Recognition (SER) system is proposed using the feature combination o...
The speech signal is an important tool for conveying information between humans; at the same time, i...
In this article, we study emotion detection from speech in a speaker-specific scenario. By parameter...
This paper investigates the effects of standard speech compression techniques on the accuracy of aut...
AbstractThe kinship between man and machines has become a new trend of technology such that machines...