Many of the music generation systems based on neural networks are fully autonomous and do not offer control over the generation process. In this research, we present a controllable music generation system in terms of tonal tension. We incorporate two tonal tension measures based on the Spiral Array Tension theory into a variational autoencoder model. This allows us to control the direction of the tonal tension throughout the generated piece, as well as the overall level of tonal tension. Given a seed musical fragment, stemming from either the user input or from directly sampling from the latent space, the model can generate variations of this original seed fragment with altered tonal tension. This altered music still resembles the seed musi...
In this paper we present a new approach for the generation of multi-instrument symbolic music driven...
Machine learning allows automatic construction of generative models for music. However, they are lea...
We describe recent extensions to our framework for the automatic generation of music-making programs...
The Ancient Greeks are one of the first civilisations we know of to have created algorithms to compo...
We suggest a graphical representation of the musical tension flow in tonal music using a piecewise p...
International audienceIn tonal music, musical tension is strongly associated with musical expression...
Controllability, despite being a much-desired property of a generative model, remains an ill-defined...
Tension is a complex multidimensional concept that is not easily quantified. This research proposes ...
This thesis presents the design and implementation of a generative model of tonal tension. It furthe...
A musical-tone generator based on physical modeling of the sound production mechanisms is presented....
Music signals comprise of atomic notes drawn from a musical scale. The creation of musical sequences...
This paper presents NetWorks (NW), an interactive musicgeneration system that uses a hierarchically ...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
Since the early years of the past century, many scholars have focused their efforts towards designin...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
In this paper we present a new approach for the generation of multi-instrument symbolic music driven...
Machine learning allows automatic construction of generative models for music. However, they are lea...
We describe recent extensions to our framework for the automatic generation of music-making programs...
The Ancient Greeks are one of the first civilisations we know of to have created algorithms to compo...
We suggest a graphical representation of the musical tension flow in tonal music using a piecewise p...
International audienceIn tonal music, musical tension is strongly associated with musical expression...
Controllability, despite being a much-desired property of a generative model, remains an ill-defined...
Tension is a complex multidimensional concept that is not easily quantified. This research proposes ...
This thesis presents the design and implementation of a generative model of tonal tension. It furthe...
A musical-tone generator based on physical modeling of the sound production mechanisms is presented....
Music signals comprise of atomic notes drawn from a musical scale. The creation of musical sequences...
This paper presents NetWorks (NW), an interactive musicgeneration system that uses a hierarchically ...
We introduce MIDI-VAE, a neural network model based on Variational Autoencoders that is capable of h...
Since the early years of the past century, many scholars have focused their efforts towards designin...
We propose a novel approach to automated rhythm generation in which a Transformer XL model is employ...
In this paper we present a new approach for the generation of multi-instrument symbolic music driven...
Machine learning allows automatic construction of generative models for music. However, they are lea...
We describe recent extensions to our framework for the automatic generation of music-making programs...