Several studies exist in the literature that address the problem of emotion classification of visual stimuli but less effort has been devoted to emotion classification of audio stimuli. The most of these studies start from the analysis of physiological signals such as EEG data [1]. The aim of this work is to evaluate if it is possible to classify audio signals according to elicited emotions using only objective features. In our analysis we adopt the IADS (International Affective Digitized Sound) database [2], composed of 167 auditory stimuli. The database provides pleasure, arousal and dominance ratings for each audio stimulus, recorded from 100 subjects during psycho physical test. The database is formed by different type of audio: from en...
Abstract—We present a multimodal dataset for the analysis of human affective states. The electroence...
Without doubt, there is emotional information in almost any kind of sound received by humans every d...
Recently, the field of automatic recognition of users' affective states has gained a great deal of a...
Several studies exist in the literature that address the problem of emotion classification of visual...
The aim of this paper was to discover what combination of audio features gives the best performance ...
Part 9: Music Information Processing WorkshopInternational audienceIn this paper, we decided to stud...
In this paper, we present an analysis of the associations between emotion categories and audio featu...
In this paper, we present an analysis of the associations between emotion categories and audio featu...
Every person reacts differently to music. The task then is to identify a specific set of music featu...
We present a set of novel emotionally-relevant audio features to help improving the classification o...
iii This Ph.D thesis work is dedicated to automatic emotion/mood recognition in audio signals. Indee...
In recent years, the field of Music Emotion Recognition has become established. Less attention has b...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
Music induces different kinds of emotions in listeners. Previous research on music and emotions disc...
Abstract—We present a multimodal dataset for the analysis of human affective states. The electroence...
Without doubt, there is emotional information in almost any kind of sound received by humans every d...
Recently, the field of automatic recognition of users' affective states has gained a great deal of a...
Several studies exist in the literature that address the problem of emotion classification of visual...
The aim of this paper was to discover what combination of audio features gives the best performance ...
Part 9: Music Information Processing WorkshopInternational audienceIn this paper, we decided to stud...
In this paper, we present an analysis of the associations between emotion categories and audio featu...
In this paper, we present an analysis of the associations between emotion categories and audio featu...
Every person reacts differently to music. The task then is to identify a specific set of music featu...
We present a set of novel emotionally-relevant audio features to help improving the classification o...
iii This Ph.D thesis work is dedicated to automatic emotion/mood recognition in audio signals. Indee...
In recent years, the field of Music Emotion Recognition has become established. Less attention has b...
Speech is a direct and rich way of transmitting information and emotions from one point to another. ...
In this study we propose a multi-modal machine learning approach, combining EEG and Audio features f...
Music induces different kinds of emotions in listeners. Previous research on music and emotions disc...
Abstract—We present a multimodal dataset for the analysis of human affective states. The electroence...
Without doubt, there is emotional information in almost any kind of sound received by humans every d...
Recently, the field of automatic recognition of users' affective states has gained a great deal of a...