MUSIB: musical score inpainting benchmark
School authors:
author photo
Denis Alejandro Parra
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Rodrigo Fernando Cadiz
External authors:
  • Mauricio Araneda-Hernandez ( Universidad de Chile , Millennium Inst Fdn Res Data IMFD , Natl Ctr Artificial Intelligence CENIA )
  • Felipe Bravo-Marquez ( Universidad de Chile , Millennium Inst Fdn Res Data IMFD , Natl Ctr Artificial Intelligence CENIA )
Abstract:

Music inpainting is a sub-task of automated music generation that aims to infill incomplete musical pieces to help musicians in their musical composition process. Many methods have been developed for this task. However, we observe a tendency for each method to be evaluated using different datasets and metrics in the papers where they are presented. This lack of standardization hinders an adequate comparison of these approaches. To tackle these problems, we present MUSIB, a new benchmark for musical score inpainting with standardized conditions for evaluation and reproducibility. MUSIB evaluates four models: Variable Length Piano Infilling (VLI), Music InpaintNet, Music SketchNet, and AnticipationRNN, and over two commonly used datasets: JSB Chorales and IrishFolkSong. We also compile, extend, and propose metrics to adequately quantify note attributes such as pitch and rhythm with Note Metrics, but also higher-level musical properties with the introduction of Divergence Metrics, which operate by comparing the distance between distributions of musical features. Our evaluation shows that VLI, a model based on Transformer architecture, is the best performer on a larger dataset, while VAE-based models surpass this Transformer-based model on a relatively small dataset. With MUSIB, we aim at inspiring the community towards better reproducibility in music generation research, setting an example for strongly founded comparisons among SOTA methods.

UT WOS:000982682800001
Number of Citations 0
Type
Pages
ISSUE 1
Volume 2023
Month of Publication MAY 5
Year of Publication 2023
DOI https://doi.org/10.1186/s13636-023-00279-6
ISSN
ISBN
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