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INTERSPEECH
2010

A factorial sparse coder model for single channel source separation

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A factorial sparse coder model for single channel source separation
We propose a probabilistic factorial sparse coder model for single channel source separation in the magnitude spectrogram domain. The mixture spectrogram is assumed to be the sum of the sources, which are assumed to be generated frame-wise as the output of sparse coders plus noise. For dictionary training we use an algorithm which can be described as non-negative matrix factorization with 0 sparseness constraints. In order to infer likely source spectrogram candidates, we approximate the intractable exact inference by maximizing the posterior over a plausible subset of solutions. We compare our system to the factorial-max vector quantization model, where the proposed method shows a superior performance in terms of signal-tointerference ratio. Finally, the low computational requirements of the algorithm allows close to real time applications.
Robert Peharz, Michael Stark, Franz Pernkopf, Yann
Added 18 May 2011
Updated 18 May 2011
Type Journal
Year 2010
Where INTERSPEECH
Authors Robert Peharz, Michael Stark, Franz Pernkopf, Yannis Stylianou
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