Document Type

Conference Paper

Rights

This item is available under a Creative Commons License for non-commercial use only

Disciplines

Electrical and electronic engineering

Publication Details

8th Annual Information Technology & Telecommunication Conference, 2009, Galway Mayo Institute of Technology

Abstract

Current estimates put the canon of traditional Irish dance tunes at least 7,000 compositions. Given this diversity, a common problem faced by musicians and ethnomusicologists is identifying tunes from recordings. This is evident even in the number of commercial recordings whose title is gan aimn (without name). This work attempts to solve this problem by developing a Content Based Music Information Retrieval (CBMIR) System adapted to the characteristics of traditional Irish music. A system is presented called MATT2 (Machine Annotation of Traditional Tunes) whose primary goal is to annotate recordings of traditional Irish dance music with useful meta-data including tune names. MATT2 incorporates a number of novel algorithms for transcription of traditonal music and for adapting melodic similarity measures to the creativity and style preent in the playing of traditional music. It incorporates a new algorithm for filterning ornamentaion notes and accommodating "the long note" in traditional music called Ornamentation Filtering using Adaptive Hisograms (OFAH). A new alogorithm is presented called TANSEY (Turn ANnotation from SEts using SimilaritY profiles) that annotates sets of tunes played seque as is the custom in traditional Irish dance music. The work presented is validated in experiments using 130 real-world field recordings of traditional music from sessions, classes, concerts and commercial recordings. Test audio inlcudes solo and emsemble playing on a variety of instruments recorded in real-world settings such as noisy public sessions. Results are reported using standard measure from the field of information retrieval (IR) including accuracy, error, precision and recall and the system is compared to alternative approaches for CBMIR common in the literature

DOI

https://doi.org/10.21427/qxn7-5v26


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