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arxiv: 1710.10779 · v1 · pith:3BGTSADXnew · submitted 2017-10-30 · 💻 cs.SD · cs.LG· cs.NE· stat.ML

Generative Adversarial Source Separation

classification 💻 cs.SD cs.LGcs.NEstat.ML
keywords sourceauto-encodersgenerativeseparationadversarialassumptiondensityoutput
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Generative source separation methods such as non-negative matrix factorization (NMF) or auto-encoders, rely on the assumption of an output probability density. Generative Adversarial Networks (GANs) can learn data distributions without needing a parametric assumption on the output density. We show on a speech source separation experiment that, a multi-layer perceptron trained with a Wasserstein-GAN formulation outperforms NMF, auto-encoders trained with maximum likelihood, and variational auto-encoders in terms of source to distortion ratio.

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