P7-02: Optimizing Feature Extraction for Symbolic Music
Federico Simonetta (Instituto Complutense de Ciencias Musicales)*, Ana Llorens (Universidad Complutense de Madrid), Martín Serrano (Instituto Complutense de Ciencias Musicales), Eduardo García-Portugués (Universidad Carlos III de Madrid), Álvaro Torrente (Instituto Complutense de Ciencias Musicale - Universidad Complutense de Madrid)
Subjects (starting with primary): MIR fundamentals and methodology -> symbolic music processing ; Musical features and properties ; Knowledge-driven approaches to MIR -> computational music theory and musicology ; Computational musicology -> systematic musicology ; Computational musicology ; Knowledge-driven approaches to MIR -> machine learning/artificial intelligence for music
Presented In Person: 4-minute short-format presentation
This paper presents a comprehensive investigation of existing feature extraction tools for symbolic music and contrasts their performance to determine the set of features that best characterizes the musical style of a given music score. In this regard, we propose a novel feature extraction tool, named musif, and evaluate its efficacy on various repertoires and file formats, including MIDI, MusicXML, and **kern. Musif approximates existing tools such as jSymbolic and music21 in terms of computational efficiency while attempting to enhance the usability for custom feature development. The proposed tool also enhances classification accuracy when combined with other sets of features. We demonstrate the contribution of each set of features and the computational resources they require. Our findings indicate that the optimal tool for feature extraction is a combination of the best features from each tool rather than those of a single one. To facilitate future research in music information retrieval, we release the source code of the tool and benchmarks.
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