This paper proposes an emotion detection method using a combination of dimensional approach and categorical approach. Thayer’s model is divided into discrete emotion sections based on the level of arousal and valence. The main objective of the method is to increase the number of detected emotions which is used for emotion visualization. To evaluate the suggested method, we conducted various experiments with supervised learning and feature selection strategies. We collected 300 music clips with emotions annotated by music experts. Two feature sets are employed to create two training models for arousal and valence dimensions of Thayer’s model. Finally, 36 music emotions are detected by proposed method. The results showed that the suggested al...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
In recent years, the field of Music Emotion Recognition has become established. Less attention has b...
Taking user’s emotion in music retrieval and recommendation as application background, this paper pr...
The aim of this paper was to discover what combination of audio features gives the best performance ...
Abstract. We propose an approach to the dimensional music emotion recognition (MER) problem, combini...
Music emotion recognition (MER) deals with music classification by emotion using signal processing a...
We propose an approach to the dimensional music emotion recognition (MER) problem, combining both st...
Every person reacts differently to music. The task then is to identify a specific set of music featu...
UnrestrictedThis thesis investigates the modeling of human emotion perception in music, placing part...
Achieving advancements in automatic recognition of emotions that music can induce require considerin...
The size of easily-accessible libraries of digital music recordings is growing every day, and people...
Most researchers in the automatic music emotion recognition field focus on the two-dimensional valen...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Music emotion recognition is concerned with developing pre-dictive models that comprehend the affect...
We present a set of novel emotionally-relevant audio features to help improving the classification o...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
In recent years, the field of Music Emotion Recognition has become established. Less attention has b...
Taking user’s emotion in music retrieval and recommendation as application background, this paper pr...
The aim of this paper was to discover what combination of audio features gives the best performance ...
Abstract. We propose an approach to the dimensional music emotion recognition (MER) problem, combini...
Music emotion recognition (MER) deals with music classification by emotion using signal processing a...
We propose an approach to the dimensional music emotion recognition (MER) problem, combining both st...
Every person reacts differently to music. The task then is to identify a specific set of music featu...
UnrestrictedThis thesis investigates the modeling of human emotion perception in music, placing part...
Achieving advancements in automatic recognition of emotions that music can induce require considerin...
The size of easily-accessible libraries of digital music recordings is growing every day, and people...
Most researchers in the automatic music emotion recognition field focus on the two-dimensional valen...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Music emotion recognition is concerned with developing pre-dictive models that comprehend the affect...
We present a set of novel emotionally-relevant audio features to help improving the classification o...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
In recent years, the field of Music Emotion Recognition has become established. Less attention has b...
Taking user’s emotion in music retrieval and recommendation as application background, this paper pr...