Pianotree vae: Structured representation learning for polyphonic music

Z Wang, Y Zhang, Y Zhang, J Jiang, R Yang… - arXiv preprint arXiv …, 2020 - arxiv.org
The dominant approach for music representation learning involves the deep unsupervised
model family variational autoencoder (VAE). However, most, if not all, viable attempts on this …

A systematic literature review on computational musicology

B Mor, S Garhwal, A Kumar - Archives of Computational Methods in …, 2020 - Springer
Heartbeat retains a musical rhythm and music speaks whenever words fail. This paper
provides a systematic review of the papers related to computational musicology. This …

Tree-structured probabilistic model of monophonic written music based on the generative theory of tonal music

E Nakamura, M Hamanaka, K Hirata… - 2016 IEEE International …, 2016 - ieeexplore.ieee.org
This paper presents a probabilistic formulation of music language modelling based on the
generative theory of tonal music (GTTM) named probabilistic GTTM (PGTTM). GTTM is a …

deepgttm-iii: Multi-task learning with grouping and metrical structures

M Hamanaka, K Hirata, S Tojo - … 25-28, 2017, Revised Selected Papers 13, 2018 - Springer
This paper describes an analyzer that simultaneously learns grouping and metrical
structures on the basis of the generative theory of tonal music (GTTM) by using a deep …

[PDF][PDF] deepGTTM-II: automatic generation of metrical structure based on deep learning technique

M Hamanaka, K Hirata, S Tojo - 13th Sound and Music Conference, 2016 - gttm.jp
This paper describes an analyzer that automatically generates the metrical structure of a
generative theory of tonal music (GTTM). Although a fully automatic time-span tree analyzer …

Implementation of melodic morphing based on generative theory of tonal music

M Hamanaka, K Hirata, S Tojo - Journal of New Music Research, 2022 - Taylor & Francis
This paper proposes a new morphing method to generate a melody, given two melodies
represented by time-span trees obtained from the generative theory of tonal music (GTTM) …

deepGTTM-I&II: Local boundary and metrical structure analyzer based on deep learning technique

M Hamanaka, K Hirata, S Tojo - … , CMMR 2016, São Paulo, Brazil, July 5–8 …, 2017 - Springer
This paper describes an analyzer for detecting local grouping boundaries and generating
metrical structures of music pieces based on a generative theory of tonal music (GTTM) …

The learnability of the grammar of jazz: Bayesian inference of hierarchical structures in harmony

D Harasim - 2020 - infoscience.epfl.ch
Musical grammar describes a set of principles that are used to understand and interpret the
structure of a piece according to a musical style. The main topic of this study is grammar …

Time-span tree leveled by duration of time-span

M Hamanaka, K Hirata, S Tojo - International Symposium on Computer …, 2021 - Springer
This paper describes a time-span tree leveled by the length of the time span. Using the time-
span tree of the Generative Theory of Tonal Music, it is possible to reduce notes in a melody …

Melody slot machine: a controllable holographic virtual performer

M Hamanaka - Proceedings of the 27th ACM International Conference …, 2019 - dl.acm.org
This paper describes the" Melody Slot Machine," an interactive music system that enables
control over virtual performers. Conventional virtual players focus on what kind of output …