Unsupervised Music Source Separation Using Differentiable Parametric Source Models
Kilian Schulze-Forster, Ga\"el Richard, Liam Kelley, Clement S. J., Doire, Roland Badeau

TL;DR
This paper introduces an unsupervised deep learning approach for musical source separation that models sources with differentiable parametric models, enabling effective separation with minimal training data.
Contribution
It presents a novel unsupervised model-based deep learning method using parametric source-filter models for musical source separation, reducing data requirements.
Findings
Outperforms nonnegative matrix factorization methods
Outperforms supervised deep learning baseline
Effective with less than three minutes of training data
Abstract
Supervised deep learning approaches to underdetermined audio source separation achieve state-of-the-art performance but require a dataset of mixtures along with their corresponding isolated source signals. Such datasets can be extremely costly to obtain for musical mixtures. This raises a need for unsupervised methods. We propose a novel unsupervised model-based deep learning approach to musical source separation. Each source is modelled with a differentiable parametric source-filter model. A neural network is trained to reconstruct the observed mixture as a sum of the sources by estimating the source models' parameters given their fundamental frequencies. At test time, soft masks are obtained from the synthesized source signals. The experimental evaluation on a vocal ensemble separation task shows that the proposed method outperforms learning-free methods based on nonnegative matrix…
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Taxonomy
TopicsSpeech and Audio Processing · Music and Audio Processing · Acoustic Wave Phenomena Research
