Self-supervised learning has recently been implemented widely in speech processing areas, replacing conventional acoustic feature extraction to extract meaningful information from speech. One of the challenging applications of speech processing is to extract affective information from speech, commonly called speech emotion recognition. Until now, it is not clear the position of these speech representations compared to the classical acoustic feature. This paper evaluates nineteen self-supervised speech representations and one classical acoustic feature for five distinct speech emotion recognition datasets on the same classifier. We calculate the effect size among twenty speech representations to show the magnitude of relative differences fro...
When recognizing emotions from speech, we encounter two common problems: how to optimally capture em...
In this thesis, we describe extensive experiments on the classification of emotions from speech usin...
In this paper, we describe emotion recognition experiments carried out for spontaneous affective spe...
This thesis compares several machine learning algorithms: identify which model would be best at clas...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
We present a speech signal driven emotion recognition system. Our system is trained and tested with ...
The differences between self-reported and observed emotion have only marginally been investigated in...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
Speech Emotion Recognition (SER) plays a pivotal role in enhancing human-computer interaction by ena...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
This paper investigates the use of speech-to-text methods for assigning an emotion class to a given ...
As automatic emotion recognition based on speech matures, new challenges can be faced. We therefore ...
When recognizing emotions from speech, we encounter two common problems: how to optimally capture em...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
When recognizing emotions from speech, we encounter two common problems: how to optimally capture em...
In this thesis, we describe extensive experiments on the classification of emotions from speech usin...
In this paper, we describe emotion recognition experiments carried out for spontaneous affective spe...
This thesis compares several machine learning algorithms: identify which model would be best at clas...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
We present a speech signal driven emotion recognition system. Our system is trained and tested with ...
The differences between self-reported and observed emotion have only marginally been investigated in...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
Speech Emotion Recognition (SER) plays a pivotal role in enhancing human-computer interaction by ena...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
This paper investigates the use of speech-to-text methods for assigning an emotion class to a given ...
As automatic emotion recognition based on speech matures, new challenges can be faced. We therefore ...
When recognizing emotions from speech, we encounter two common problems: how to optimally capture em...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
When recognizing emotions from speech, we encounter two common problems: how to optimally capture em...
In this thesis, we describe extensive experiments on the classification of emotions from speech usin...
In this paper, we describe emotion recognition experiments carried out for spontaneous affective spe...