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FAST AND ADAPTIVE BLIND AUDIO SOURCE SEPARATION USING RECURSIVE LEVENBERG-MARQUARDT SYNCHROSQUEEZING

Citation Author(s):
Dominique Fourer, Geoffroy Peeters
Submitted by:
Dominique Fourer
Last updated:
12 April 2018 - 11:22am
Document Type:
Poster
Document Year:
2018
Event:
Presenters:
Dominique Fourer
Paper Code:
3601
 

This paper revisits the Degenerate Unmixing Estimation Technique (DUET) for blind audio separation of an arbitrary
number of sources given two mixtures through a recursively computed and adaptive time-frequency representation.
Recently, synchrosqueezing was introduced as a promising signal disentangling method which allows to compute reversible
and sharpen time-frequency representations. Thus, it can be used to reduce overlaps between the sources in the
time-frequency plane and to improve the sources’ sparsity which is often exploited by source separation techniques.
Furthermore, synchrosqueezing can also be extended using the Levenberg-Marquardt algorithm to allow a user to adjust
the energy concentration of a time-frequency representation which can be efficiently implemented without the FFT algorithm.
Hence, we show that our approach can improve the quality of the source separation process while remaining suitable for real-time applications.

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