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Content Based Music Retrieval

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Encyclopedia of Multimedia

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...

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Notes

  1. 1.

    1

    “Cepstrum” is a contraction of “perception” and “spectrum”.

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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

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