Automatic Mood Detection from Acoustic Music Data

Embargo until
Date
2003-10-26
Journal Title
Journal ISSN
Volume Title
Publisher
Johns Hopkins University
Abstract
Music mood describes the inherent emotional meaning of a music clip. It is helpful in music understanding and music search and some music-related applications. In this paper, a hierarchical framework is presented to automate the task of mood detection from acoustic music data, by following some music psychological theories in western cultures. Three feature sets, intensity, timbre and rhythm, are extracted to represent the characteristics of a music clip. Moreover, a mood tracking approach is also presented for a whole piece of music. Experimental evaluations indicate that the proposed algorithms produce satisfactory results.
Description
Keywords
Perception and Cognition, Music Analysis
Citation
Collections