P7-14: Cadence Detection in Symbolic Classical Music using Graph Neural Networks.

Karystinaios, Emmanouil*, Widmer, Gerhard

Subjects (starting with primary): Musical features and properties -> harmony, chords and tonality ; Musical features and properties -> representations of music ; MIR fundamentals and methodology -> symbolic music processing ; Musical features and properties -> structure, segmentation, and form

Presented In-person, in Bengaluru: 4-minute short-format presentation

Abstract:

Cadences are complex structures that have been driving music from the beginning of contrapuntal polyphony until today. Detecting such structures is vital for numerous MIR tasks such as musicological analysis, key detection, music segmentation, and others. However, automatic cadence detection remains a challenging task mainly because it involves a combination of high-level musical elements like harmony, voice leading, and rhythm. In this work, we present a graph representation of symbolic scores as an intermediate means to solve the cadence detection task. We approach cadence detection as an imbalanced node classification problem using a Graph Convolutional Network. We obtain results that are at least on par with the state of the art, and we present a model capable of making predictions at multiple levels of granularity, from individual notes to beats, thanks to the fine-grained, note-by-note representation. Moreover, our experiments suggest that graph convolution is able to learn non-local features that assist in cadence detection, freeing us from the need of having to devise specialized features that encode non-local context. We argue that this general approach to modeling musical scores and classification tasks has a number of potential advantages, beyond the specific recognition task presented here.

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