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Meta-learning Extractors for Music Source Separation

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arxiv 2002.07016 v1 pith:FUAUXGFX submitted 2020-02-17 cs.SD cs.LGeess.AS

Meta-learning Extractors for Music Source Separation

classification cs.SD cs.LGeess.AS
keywords extractorsmeta-tasnetmodelmodelsmusicperformanceseparationsource
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We propose a hierarchical meta-learning-inspired model for music source separation (Meta-TasNet) in which a generator model is used to predict the weights of individual extractor models. This enables efficient parameter-sharing, while still allowing for instrument-specific parameterization. Meta-TasNet is shown to be more effective than the models trained independently or in a multi-task setting, and achieve performance comparable with state-of-the-art methods. In comparison to the latter, our extractors contain fewer parameters and have faster run-time performance. We discuss important architectural considerations, and explore the costs and benefits of this approach.

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