In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM) and the Multi-Layer Perceptron (MLP) Neural Network, using prosodic and voice quality features extracted from the Berlin Emotional Database, is reported. The features were extracted using PRAAT tools, while the WEKA tool was used for classification. Different parameters were set up for both SVM and MLP, which are used to obtain an optimized emotion classification. The results show that MLP overcomes SVM in overall emotion classification performance. Nevertheless, the training for SVM was much faster when compared to MLP. The overall accuracy was 76.82% for SVM and 78.69% for MLP. Sadness was the emotion most recognized by MLP, with accuracy ...
Humans connect to each other through language. Verbal words play an important role in communication....
This thesis compares several machine learning algorithms: identify which model would be best at clas...
Abstract. This paper presents a new classification algorithm for real-time inference of emotions fro...
In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM)...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
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...
Speech emotion recognition enables a computer system to records sounds and realizes the emotion of t...
To investigate human emotion, which is conveyed in human speech, methods which can achieve this need...
Creating an accurate Speech Emotion Recognition (SER) system depends on extracting features relevant...
As an essential approach to understanding human interactions, emotion classification is a vital comp...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
The recognition of emotional states is a relatively new technique in the field of Machine Learning. ...
This paper reports on the comparison between various acoustic feature sets and classification algori...
Speech recognition has gained significant importance in facilitating user interactions with various ...
Humans connect to each other through language. Verbal words play an important role in communication....
This thesis compares several machine learning algorithms: identify which model would be best at clas...
Abstract. This paper presents a new classification algorithm for real-time inference of emotions fro...
In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM)...
Abstract- In this paper we present a comparative analysis of four classifiers for speech signal emot...
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...
Speech emotion recognition enables a computer system to records sounds and realizes the emotion of t...
To investigate human emotion, which is conveyed in human speech, methods which can achieve this need...
Creating an accurate Speech Emotion Recognition (SER) system depends on extracting features relevant...
As an essential approach to understanding human interactions, emotion classification is a vital comp...
Affective computing is becoming increasingly significant in the interaction between humans and machi...
The recognition of emotional states is a relatively new technique in the field of Machine Learning. ...
This paper reports on the comparison between various acoustic feature sets and classification algori...
Speech recognition has gained significant importance in facilitating user interactions with various ...
Humans connect to each other through language. Verbal words play an important role in communication....
This thesis compares several machine learning algorithms: identify which model would be best at clas...
Abstract. This paper presents a new classification algorithm for real-time inference of emotions fro...