DocumentCode
1759345
Title
Multi-Feature Beat Tracking
Author
Zapata, Jose R. ; Davies, Matthew E. P. ; Gomez, Eva
Author_Institution
Fac. of TIC, Univ. Pontificia Bolivariana, Medellin, Colombia
Volume
22
Issue
4
fYear
2014
fDate
41730
Firstpage
816
Lastpage
825
Abstract
A recent trend in the field of beat tracking for musical audio signals has been to explore techniques for measuring the level of agreement and disagreement between a committee of beat tracking algorithms. By using beat tracking evaluation methods to compare all pairwise combinations of beat tracker outputs, it has been shown that selecting the beat tracker which most agrees with the remainder of the committee, on a song-by-song basis, leads to improved performance which surpasses the accuracy of any individual beat tracker used on its own. In this paper we extend this idea towards presenting a single, standalone beat tracking solution which can exploit the benefit of mutual agreement without the need to run multiple separate beat tracking algorithms. In contrast to existing work, we re-cast the problem as one of selecting between the beat outputs resulting from a single beat tracking model with multiple, diverse input features. Through extended evaluation on a large annotated database, we show that our multi-feature beat tracker can outperform the state of the art, and thereby demonstrate that there is sufficient diversity in input features for beat tracking, without the need for multiple tracking models.
Keywords
audio databases; audio signal processing; music; annotated database; beat tracking algorithms; multifeature beat tracking; musical audio signals; Accuracy; Estimation; Feature extraction; Fourier transforms; IEEE transactions; Speech; Speech processing; Beat tracking; evaluation; music information retrieval; music signal processing;
fLanguage
English
Journal_Title
Audio, Speech, and Language Processing, IEEE/ACM Transactions on
Publisher
ieee
ISSN
2329-9290
Type
jour
DOI
10.1109/TASLP.2014.2305252
Filename
6734668
Link To Document