Publications:
All
- Ponce de León P. J. and Iñesta J. M.
"A Pattern Recognition Approach for Music Style Identification Using Shallow Statistical Descriptors" IEEE Transactions on Systems Man and Cybernetics C, vol. 37, pp. 248-257
(2007)
: bibtexAbstract: In the field of computer music, pattern recognition algorithms are very
relevant for music information retrieval (MIR) applications. One challenging
task in this area is the automatic recognition of musical style, having a
number of applications like indexing and selecting musical databases. From
melodies symbolically represented as digital scores (standard MIDI files) a
number of melodic, harmonic, and rhythmic statistical descriptors are
computed and their classification capability assessed in order to build
effective description models. A framework for experimenting in this
problem is presented, covering the feature extraction, feature selection,
and classification stages, in such a way that new features and new musical
styles can be easily incorporated and tested. Different classification
methods, like Bayesian classifier, nearest neighbors, and self-organising
maps are applied. The performance of such algorithms against different
description models and parameters is analyzed for two particular musical
styles, like jazz and classical, used as an initial benchmark for our
system.
@article {
author = "Ponce de León P. J. and Iñesta J. M.",
title = "A Pattern Recognition Approach for Music Style Identification Using Shallow Statistical Descriptors",
issn = "1094-6977",
journal = "IEEE Transactions on Systems Man and Cybernetics C",
number = "2",
pages = "248-257",
volume = "37",
year = "2007"
}
|