A system for generative rhythmic modeling is presented. The work aims to explore computational models of creativity, realizing them in a system designed for realtime generation of semi-improvisational music. This is envisioned as an attempt to develop musical intelligence in the context of structured improvisation, and by doing so to enable and encourage new forms of musical control and performance; the systems described in this work, already capable of realtime creation, have been designed with the explicit intention of embedding them in a variety of performance-based systems. A model of qaida, a solo tabla form, is presented, along with the results of an online survey comparing it to a professional tabla player's recording on dimension...
This research addresses the development of machine learning techniques used to create musical scores...
Traditional Musical Computation Systems had to face the differences between the computational techni...
This work presents the development of a deep learning model capable of generating and completing mus...
This article presents a series of algorithmic techniques for melody generation, inspired by models o...
The practice of music composition often stems from a small idea or motif that blossoms into a comple...
This thesis studies rhythm from an evolutionary computation perspective. Rhythm is the most fundamen...
Musical Rhythms can be modeled in different ways. Usually the models rely on certain temporal divisi...
The paper deals with question of music modeling and generation, capturing the idiomatic style of a c...
The use of Cellular Automata (CA) for musical purposes has a rich history. In general the mapping of...
Generative music is a broad and well-explored field, in which researchers have attempted various app...
My research work focuses on a particular approach to symbolic modeling of music, concerned with the ...
Music composition is a complex, multi-modal human activity, engaging faculties of perception, memory...
This paper outlines a system for machine improvisation with a human performer where the focus is lim...
International audienceAn application of formal languages to the representation of musical processes ...
M.Phil.Algorithms and mathematical models have been used to automatically compose music for decades....
This research addresses the development of machine learning techniques used to create musical scores...
Traditional Musical Computation Systems had to face the differences between the computational techni...
This work presents the development of a deep learning model capable of generating and completing mus...
This article presents a series of algorithmic techniques for melody generation, inspired by models o...
The practice of music composition often stems from a small idea or motif that blossoms into a comple...
This thesis studies rhythm from an evolutionary computation perspective. Rhythm is the most fundamen...
Musical Rhythms can be modeled in different ways. Usually the models rely on certain temporal divisi...
The paper deals with question of music modeling and generation, capturing the idiomatic style of a c...
The use of Cellular Automata (CA) for musical purposes has a rich history. In general the mapping of...
Generative music is a broad and well-explored field, in which researchers have attempted various app...
My research work focuses on a particular approach to symbolic modeling of music, concerned with the ...
Music composition is a complex, multi-modal human activity, engaging faculties of perception, memory...
This paper outlines a system for machine improvisation with a human performer where the focus is lim...
International audienceAn application of formal languages to the representation of musical processes ...
M.Phil.Algorithms and mathematical models have been used to automatically compose music for decades....
This research addresses the development of machine learning techniques used to create musical scores...
Traditional Musical Computation Systems had to face the differences between the computational techni...
This work presents the development of a deep learning model capable of generating and completing mus...