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

Unsuper vised Deep Clustering for Source Separation: Direct Learning from Mixtures Using Spatial Information Slides

Citation Author(s):
Efthymios Tzinis, Shrikant Venkataramani, Paris Smaragdis
Submitted by:
Efthymios Tzinis
Last updated:
7 May 2019 - 4:28pm
Document Type:
Presentation Slides
Document Year:
2019
Event:
Presenters:
Efthymios Tzinis
Paper Code:
AASP-L3.5
 

We present a monophonic source separation system that is trained by only observing mixtures with no ground truth separation information. We use a deep clustering approach which trains on multi-channel mixtures and learns to project spectrogram bins to source clusters that correlate with various spatial features. We show that using such a training process we can obtain separation performance that is as good as making use of ground truth separation information. Once trained, this system is capable of performing sound separation on monophonic inputs, despite having learned how to do so using multi-channel recordings.

up
0 users have voted: