29 mai 2019 36 min
29 mai 2019 10 min
14 avril 2005 01 h 01 min
14 avril 2005 24 min
12 mai 2005 52 min
4 février 2005 01 h 18 min
17 octobre 2007 49 min
27 juin 2007 01 h 12 min
11 juillet 2007 48 min
12 septembre 2007 01 h 07 min
19 septembre 2007 01 h 13 min
26 septembre 2007 01 h 00 min
3 octobre 2007 01 h 12 min
10 octobre 2007 01 h 10 min
0:00/0:00
This seminar proposes to display and discuss three research approaches to machine learning for music, which were adopted by the two speakers during the three years of their theses.
A first approach consists in studying machine learning for music with a scientific focus. Axel will present his thesis work, investigating Bayesian learning and information theory for audio analysis, raw generation, and synthesis space extraction from existing sound datasets.
A second approach consists in leveraging machine learning to design human musical interactions. Hugo will present his thesis work, relying on four human-centred methodologies to design (with) four learning algorithms for four data-driven interactive music systems.
A third approach consists in practicing with machine learning for music creation. Axel and Hugo will present their collaboration on aego, an improvisational piece with interactive sound and image, conceived with, and written for, one performer and one learning machine.
1, place Igor-Stravinsky
75004 Paris
+33 1 44 78 48 43
Du lundi au vendredi de 9h30 à 19h
Fermé le samedi et le dimanche
Hôtel de Ville, Rambuteau, Châtelet, Les Halles
Institut de Recherche et de Coordination Acoustique/Musique
Copyright © 2022 Ircam. All rights reserved.