Sorry, you need to enable JavaScript to visit this website.

Singing voice separation: a study on training data.

Citation Author(s):
Laure Prétet, Romain Hennequin, Jimena Royo-Letelier, Andrea Vaglio
Submitted by:
Laure Pretet
Last updated:
22 May 2019 - 11:32am
Document Type:
Poster
Document Year:
2019
Event:
Presenters:
Laure Prétet
Paper Code:
ICASSP19005
 

In the recent years, singing voice separation systems showed increased performance due to the use of supervised training. The design of training datasets is known as a crucial factor in the performance of such systems. We investigate on how the characteristics of the training dataset impacts the separation performances of state-of-the-art singing voice separation algorithms. We show that the separation quality and diversity are two important and complementary assets of a good training dataset. We also provide insights on possible transforms to perform data augmentation for this task.

up
0 users have voted: