Publications

Novel affective features for multiscale prediction of emotion in music

Abstract

The majority of computational work on emotion in music concentrates on developing machine learning methodologies to build new, more accurate prediction systems, and usually relies on generic acoustic features. Relatively less effort has been put to the development and analysis of features that are particularly suited for the task. The contribution of this paper is twofold. First, the paper proposes two features that can efficiently capture the emotion-related properties in music. These features are named compressibility and sparse spectral components. These features are designed to capture the overall affective characteristics of music (global features). We demonstrate that they can predict emotional dimensions (arousal and valence) with high accuracy as compared to generic audio features. Secondly, we investigate the relationship between the proposed features and the dynamic variation in the emotion ratings. To …

Date
2016
Authors
Naveen Kumar, Tanaya Guha, Che-Wei Huang, Colin Vaz, Shrikanth S Narayanan
Conference
2016 ieee 18th international workshop on multimedia signal processing (mmsp)
Pages
1-5
Publisher
IEEE