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Scaling and compressing melodies using geometric similarity measures

2022-09-19 08:48:23
Luis Evaristo Caraballo, José Miguel Díaz-Báñez, Fabio Rodríguez, Vanesa Sánchez-Canales, Inmaculada Ventura

Abstract

Melodic similarity measurement is of key importance in music information retrieval. In this paper, we use geometric matching techniques to measure the similarity between two melodies. We represent music as sets of points or sets of horizontal line segments in the Euclidean plane and propose efficient algorithms for optimization problems inspired in two operations on melodies; linear scaling and audio compression. In the scaling problem, an incoming query melody is scaled forward until the similarity measure between the query and a reference melody is minimized. The compression problem asks for a subset of notes of a given melody such that the matching cost between the selected notes and the reference melody is minimized.

Abstract (translated)

URL

https://arxiv.org/abs/2209.09621

PDF

https://arxiv.org/pdf/2209.09621.pdf


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