Since most of music has repetitive structures from motifs to phrases, repeating musical ideas can be a basic operation for music composition. The basic block that we focus on is conceptualized as loops which are essential ingredients of music. Furthermore, meaningful note patterns can be formed in a finite space, so it is sufficient to represent them with combinations of discrete symbols as done in other domains. In this work, we propose symbolic music loop generation via learning discrete representations. We first extract loops from MIDI datasets using a loop detector and then learn an autoregressive model trained by discrete latent codes of the extracted loops. We show that our model outperforms well-known music generative models in terms...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
Automatic music modelling and generation is a challenging task. The ability to learn from big data c...
Machine learning allows automatic construction of generative models for music. However, they are lea...
Since most of music has repetitive structures from motifs to phrases, repeating musical ideas can be...
Score-based generative models and diffusion probabilistic models have been successful at generating ...
A representation is learned for MIDI drum loops, using a variational autoencoder. The aim is to crea...
The availability of large datasets is an essential key factor for machine learning success. However,...
Musical pattern discovery algorithms find instances of repetition in symbolic music, allowing for so...
International audienceA key aspect of machine learning models lies in their ability to learn efficie...
In this thesis, I will focus on representation learning from signals and sequences. I investigate va...
We present a model for capturing musical features and creating novel sequences of music, called the ...
We address the challenging open problem of learning an effective latent space for symbolic music da...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
Automatic music generation is an interdisciplinary research topic that combines computational creati...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
Automatic music modelling and generation is a challenging task. The ability to learn from big data c...
Machine learning allows automatic construction of generative models for music. However, they are lea...
Since most of music has repetitive structures from motifs to phrases, repeating musical ideas can be...
Score-based generative models and diffusion probabilistic models have been successful at generating ...
A representation is learned for MIDI drum loops, using a variational autoencoder. The aim is to crea...
The availability of large datasets is an essential key factor for machine learning success. However,...
Musical pattern discovery algorithms find instances of repetition in symbolic music, allowing for so...
International audienceA key aspect of machine learning models lies in their ability to learn efficie...
In this thesis, I will focus on representation learning from signals and sequences. I investigate va...
We present a model for capturing musical features and creating novel sequences of music, called the ...
We address the challenging open problem of learning an effective latent space for symbolic music da...
Modelling musical structure is vital yet challenging for artificial intelligence systems that genera...
Automatic music generation is an interdisciplinary research topic that combines computational creati...
The aim of the thesis is the design and evaluation of a generative model based on deep learning for ...
A big challenge in algorithmic composition is to devise a model that is both easily trainable and ab...
Automatic music modelling and generation is a challenging task. The ability to learn from big data c...
Machine learning allows automatic construction of generative models for music. However, they are lea...