EURASIP Journal on Audio, Speech, and Music Processing 
Volume 2008 (2008), Article ID 846135, 12 pages
doi:10.1155/2008/846135
Research Article

Tango or Waltz?: Putting Ballroom Dance Style into Tempo Detection

Björn Schuller, Florian Eyben, and Gerhard Rigoll

Institute for Human-Machine Communication, Technische Universität München, Arcisstraße 21, 80333 München, Germany

Received 31 October 2007; Revised 14 February 2008; Accepted 14 March 2008

Recommended by Sen Kuo

Abstract

Rhythmic information plays an important role in Music Information Retrieval. Example applications include automatically annotating large databases by genre, meter, ballroom dance style or tempo, fully automated D.J.-ing, and audio segmentation for further retrieval tasks such as automatic chord labeling. In this article, we therefore provide an introductory overview over basic and current principles of tempo detection. Subsequently, we show how to improve on these by inclusion of ballroom dance style recognition. We introduce a feature set of 82 rhythmic features for rhythm analysis on real audio. With this set, data-driven identification of the meter and ballroom dance style, employing support vector machines, is carried out in a first step. Next, this information is used to more robustly detect tempo. We evaluate the suggested method on a large public database containing 1.8 k titles of standard and Latin ballroom dance music. Following extensive test runs, a clear boost in performance can be reported.