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  4. A hands-on comparison of DNNs for dialog separation using transfer learning from music source separation
 
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2021
Conference Paper
Title

A hands-on comparison of DNNs for dialog separation using transfer learning from music source separation

Abstract
This paper describes a hands-on comparison on using state-of-the-art music source separation deep neural networks (DNNs) before and after task-specific fine-tuning for separating speech content from non-speech content in broadcast audio (i.e., dialog separation). The music separation models are selected as they share the number of channels (2) and sampling rate (44.1 kHz or higher) with the considered broadcast content, and vocals separation in music is considered as a parallel for dialog separation in the target application domain. These similarities are assumed to enable transfer learning between the tasks. Three models pretrained on music (Open-Unmix, Spleeter, and Conv-TasNet) are considered in the experiments, and fine-tuned with real broadcast data. The performance of the models is evaluated before and after fine-tuning with computational evaluation metrics (SI-SIRi, SI-SDRi, 2f-model), as well as with a listening test simulating an application where the non-speec h signal is partially attenuated, e.g., for better speech intelligibility. The evaluations include two reference systems specifically developed for dialog separation. The results indicate that pre-trained music source separation models can be used for dialog separation to some degree, and that they benefit from the fine-tuning, reaching a performance close to task-specific solutions.
Author(s)
Strauss, M.
Paulus, J.
Torcoli, M.
Edler, B.
Mainwork
Interspeech 2021. Proceedings. Online resource  
Conference
International Speech Communication Association (INTERSPEECH Annual Conference) 2021  
Open Access
DOI
10.21437/Interspeech.2021-1418
Additional link
Full text
Language
English
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