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		    Poster
MULTI-SCENARIO DEEP LEARNING FOR MULTI-SPEAKER SOURCE SEPARATION
			- Citation Author(s):
 - Submitted by:
 - Jeroen Zegers
 - Last updated:
 - 13 April 2018 - 4:58am
 - Document Type:
 - Poster
 - Document Year:
 - 2018
 - Event:
 - Presenters:
 - Jeroen Zegers
 - Paper Code:
 - 4287
 
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Research in deep learning for multi-speaker source separation has received a boost in the last years. However, most studies are restricted to mixtures of a specific number of speakers, called a specific scenario. While some works included experiments for different scenarios, research towards combining data of different scenarios or creating a single model for multiple scenarios have been very rare. In this work it is shown that data of a specific scenario is relevant for solving another scenario. Furthermore, it is concluded that a single model, trained on different scenarios is capable of matching performance of scenario specific models.