Computer assisted music extensively relies on audio sample libraries and virtual instruments which provide users an ever increasing amount of contents to produce music with. However, principled methods for large-scale interactions are lacking so that browsing samples and presets with respect to a target sound idea is a tedious and arbitrary process. Indeed, library metadata can only describe coarse categories of sounds but do not meaningfully traduce the underlying acoustic contents and continuous variations in timbre which are key elements of music production and creativity. The recent advances in deep generative modelling show unprecedented successes at learning large-scale unsupervised representations which invert to data as diverse as i...
Présidente : Myriam Desainte-Catherine, LABRI, Université Bordeaux 1 Rapporteurs : Philippe Depalle,...
International audienceIn this article, we propose a new method of sound transformation based on cont...
A key part in the recent success of deep language processing models lies in the ability to learn eff...
La musique assistée par ordinateur fait beaucoup usage de librairies d’échantillons audios et d'inst...
Recently, deep learning methods have enabled transforming musical material in a data-driven manner. ...
Automatic music modelling and generation is a challenging task. The ability to learn from big data c...
One of the main challenges of the synthesizer market and the research in sound synthesis nowadays li...
We present the Latent Timbre Synthesis, a new audio synthesis method using deep learning. The synthe...
International audienceDeep generative neural networks have thrived in the field of computer vision, ...
Cette thèse porte sur les modèles génératifs pour la génération automatique de musique, avec une att...
In this paper, we learn disentangled representations of timbre and pitch for musical instrument soun...
Controllable timbre synthesis has been a subject of research for several decades, and deep neural ne...
Generative models aim to understand the properties of data, through the construction of latent space...
Controllability, despite being a much-desired property of a generative model, remains an ill-defined...
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
Présidente : Myriam Desainte-Catherine, LABRI, Université Bordeaux 1 Rapporteurs : Philippe Depalle,...
International audienceIn this article, we propose a new method of sound transformation based on cont...
A key part in the recent success of deep language processing models lies in the ability to learn eff...
La musique assistée par ordinateur fait beaucoup usage de librairies d’échantillons audios et d'inst...
Recently, deep learning methods have enabled transforming musical material in a data-driven manner. ...
Automatic music modelling and generation is a challenging task. The ability to learn from big data c...
One of the main challenges of the synthesizer market and the research in sound synthesis nowadays li...
We present the Latent Timbre Synthesis, a new audio synthesis method using deep learning. The synthe...
International audienceDeep generative neural networks have thrived in the field of computer vision, ...
Cette thèse porte sur les modèles génératifs pour la génération automatique de musique, avec une att...
In this paper, we learn disentangled representations of timbre and pitch for musical instrument soun...
Controllable timbre synthesis has been a subject of research for several decades, and deep neural ne...
Generative models aim to understand the properties of data, through the construction of latent space...
Controllability, despite being a much-desired property of a generative model, remains an ill-defined...
In the past years, several hybridization techniques have been proposed to synthesize novel audio con...
Présidente : Myriam Desainte-Catherine, LABRI, Université Bordeaux 1 Rapporteurs : Philippe Depalle,...
International audienceIn this article, we propose a new method of sound transformation based on cont...
A key part in the recent success of deep language processing models lies in the ability to learn eff...