The proven ability of music to transmit emotions provokes the increasing interest in the development of new algorithms for music emotion recognition (MER). In this work, we present an automatic system of emotional classification of music by implementing a neural network. This work is based on a previous implementation of a dimensional emotional prediction system in which a multilayer perceptron (MLP) was trained with the freely available MediaEval database. Although these previous results are good in terms of the metrics of the prediction values, they are not good enough to obtain a classification by quadrant based on the valence and arousal values predicted by the neural network, mainly due to the imbalance between classes in the dataset. ...
Machine categorisation of the emotional content of music is an ongoing research area. Feature descri...
Achieving advancements in automatic recognition of emotions that music can induce require considerin...
Empirical thesis.Bibliography: pages 45-49.1. Introduction -- 2. Music features -- 3. Emotion models...
The proven ability of music to transmit emotions provokes the increasing interest in the development...
Music emotion recognition (MER) field rapidly expanded in the last decade. Many new methods and new ...
Music emotion recognition (MER) field rapidly expanded in the last decade. Many new methods and new ...
Projecte realitzat en el marc d’un programa de mobilitat amb la Haute Ecole d'Ingénierie et Gestion ...
Music is widely associated with emotions. The automatic recognition of emotions from audio is very c...
In this paper we describe our approach for the MediaEval's "Emotion in Music" task. Our method consi...
Music emotion recognition (MER) deals with music classification by emotion using signal processing a...
In this paper, we describe the IRIT's approach used for the MediaEval 2015 "Emotion in Music" task. ...
The field of Music Emotion Recognition has become and established research sub-domain of Music Infor...
In this paper we describe TUM's approach for the MediaEval's \Emotion in Music" task. The goal of th...
This paper studies the emotion recognition from musical tracks in the 2-dimensional valence-arousal ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Machine categorisation of the emotional content of music is an ongoing research area. Feature descri...
Achieving advancements in automatic recognition of emotions that music can induce require considerin...
Empirical thesis.Bibliography: pages 45-49.1. Introduction -- 2. Music features -- 3. Emotion models...
The proven ability of music to transmit emotions provokes the increasing interest in the development...
Music emotion recognition (MER) field rapidly expanded in the last decade. Many new methods and new ...
Music emotion recognition (MER) field rapidly expanded in the last decade. Many new methods and new ...
Projecte realitzat en el marc d’un programa de mobilitat amb la Haute Ecole d'Ingénierie et Gestion ...
Music is widely associated with emotions. The automatic recognition of emotions from audio is very c...
In this paper we describe our approach for the MediaEval's "Emotion in Music" task. Our method consi...
Music emotion recognition (MER) deals with music classification by emotion using signal processing a...
In this paper, we describe the IRIT's approach used for the MediaEval 2015 "Emotion in Music" task. ...
The field of Music Emotion Recognition has become and established research sub-domain of Music Infor...
In this paper we describe TUM's approach for the MediaEval's \Emotion in Music" task. The goal of th...
This paper studies the emotion recognition from musical tracks in the 2-dimensional valence-arousal ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Machine categorisation of the emotional content of music is an ongoing research area. Feature descri...
Achieving advancements in automatic recognition of emotions that music can induce require considerin...
Empirical thesis.Bibliography: pages 45-49.1. Introduction -- 2. Music features -- 3. Emotion models...