Definition:Content-based music retrieval systems search audio data and notated music based on content.
Two main groups of Music Information Retrieval (MIR) systems for content-based searching can be distinguished, systems for searching audio data and systems for searching notated music. There are also hybrid systems that first transcribe audio signal into a symbolic description of notes and then search a database of notated music. An example of such music transcription is the work of Klapuri [10], which in particular is concerned with multiple fundamental frequency estimation, and musical metre estimation, which has to do with ordering the rhythmic aspects of music. Part of the work is based on known properties of the human auditory system.
Content-based music search systems can be useful for a variety of purposes and audiences:
-
• In record stores, customers may only know a tune from a record they would like to buy, but not the title of the work, composer, or performers. Salespeople...
Notes
- 1.
1
“Cepstrum” is a contraction of “perception” and “spectrum”.
References
D. Byrd and T. Crawford, “Problems of music information retrieval in the real world,” Information Processing and Management, Vol. 38, 2002, pp. 249–272.
P. Cano, E. Batlle, T. Kalker, and J. Haitsma, “A Review of Algorithms for Audio Fingerprinting,” Proceedings of the International Workshop on Multimedia Signal Processing 2002.
R. Cilibrasi, P. Vitanyi, and R. de Wolf, “Algorithmic clustering of music based on string compression,” Computer Music Journal, Vol. 28, No. 4, 2004, pp. 49–67.
M. Clausen, R. Engelbrecht, D. Meyer, and J. Schmitz, “PROMS: a web-based tool for searching in polyphonic music,” In ISMIR Proceedings, 2000.
M. Clausen and F. Kurth, “A unified approach to content based and fault tolerant music identification,” Proceedings of International Conference on Web Delivering of Music, 2002.
J. S. Downie, “Evaluating a simple approach to music information retrieval: Conceiving melodic n-grams as text,” PhD Thesis, University of Western Ontario, London, Ontario, Canada, 1999.
A. Ghias et al., “Query by Humming: Musical Information Retrieval in an Audio Database,” In Proc. of Third ACM International Conference on Multimedia, 1995, pp. 231–236.
J. Foote, “An overview of audio information retrieval,” Multimedia Systems, 7(1), 1999, pp. 2–10.
H. Hoos, K. Renz, and M. Görg, “GUIDO/MIR — an experimental musical information retrieval system based on GUIDO music notation,” In ISMIR Proceedings, pp. 41–50, 2001.
A. Klapuri, “Signal Processing Methods for the Automatic Transcription of Music,” PhD thesis, Tampere University of Technology, 2004.
C.-C. Liu and P.-J. Tsai, “Content-based retrieval of MP3 music objects,” Proceedings of the 10th International Conference on Information and Knowledge Management, 2001, pp. 506–511.
A. Kornstädt, “Themefinder: A web-based melodic search tool,” In W. Hewlett and E. Selfridge-Field, Editors, Melodic Similarity: Concepts, Procedures, and Applications, Computing in Musicology, Volume 11. MIT Press, Cambridge, 1998.
J. H. Lee and J. S. Downie, “Survey of music information needs, uses, and seeking behaviours: Preliminary findings,” In ISMIR Proceedings, pp. 441–446, 2004.
MIDI, Musical Instrument Digital Interface, www.midi.org.
J. Pickens, J. P. Bello, G. Monti, T. Crawford, M. Dovey, M. Sandler, and D. Byrd, “Polyphonic Score Retrieval Using Polyphonic Audio Queries: A Harmonic Modelling Approach,” Proceedings ISMIR 2002, 3rd International Conference on Music Information Retrieval.
L. Prechelt and R. Typke, “An interface for melody input,” ACM Transactions on Computer-Human Interaction, 8(2), pp. 133–149, 2001.
A. Rauber, E. Pampalk, and D. Merkl, “The SOMenhanced jukebox: Organization and visualization of music collections based on perceptual models,” Journal of New Music Research (JNMR), 32(2), pp. 193–210, 2003.
R. Typke, P. Giannopoulos, R. C. Veltkamp, F. Wiering, and R. van Oostrum, “Using transportation distances for measuring melodic similarity,” In ISMIR Proceedings, pp. 107–114, 2003.
G. Tzanetakis and P. Cook, “Musical Genre Classification of Audio Signals,” IEEE Transactions on Speech and Audio Processing, 10(5), July 2002.
E. Ukkonen, K. Lemström, and V. Mäkinen, “Geometric Algorithms for Transposition Invariant Content-Based Music Retrieval,” ISMIR 2003 Proceedings of the Fourth International Conference on Music Information Retrieval, pp. 193–199.
E. Wold, T. Blum, D. Keislar, and J. Wheaton, “Content-based classification, search, and retrieval of audio,” IEEE Multimedia, 3(3), pp. 27–36, 1996.
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2006 Springer Science+Business Media, Inc.
About this entry
Cite this entry
Veltkamp, R.C., Wiering, F., Typke, R. (2006). Content Based Music Retrieval. In: Furht, B. (eds) Encyclopedia of Multimedia. Springer, Boston, MA. https://doi.org/10.1007/0-387-30038-4_32
Download citation
DOI: https://doi.org/10.1007/0-387-30038-4_32
Publisher Name: Springer, Boston, MA
Print ISBN: 978-0-387-24395-5
Online ISBN: 978-0-387-30038-2
eBook Packages: Computer ScienceReference Module Computer Science and Engineering