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Audio Source Separation with Discriminative Scattering Networks

Sound 2015-04-29 v3 Machine Learning

Abstract

In this report we describe an ongoing line of research for solving single-channel source separation problems. Many monaural signal decomposition techniques proposed in the literature operate on a feature space consisting of a time-frequency representation of the input data. A challenge faced by these approaches is to effectively exploit the temporal dependencies of the signals at scales larger than the duration of a time-frame. In this work we propose to tackle this problem by modeling the signals using a time-frequency representation with multiple temporal resolutions. The proposed representation consists of a pyramid of wavelet scattering operators, which generalizes Constant Q Transforms (CQT) with extra layers of convolution and complex modulus. We first show that learning standard models with this multi-resolution setting improves source separation results over fixed-resolution methods. As study case, we use Non-Negative Matrix Factorizations (NMF) that has been widely considered in many audio application. Then, we investigate the inclusion of the proposed multi-resolution setting into a discriminative training regime. We discuss several alternatives using different deep neural network architectures.

Keywords

Cite

@article{arxiv.1412.7022,
  title  = {Audio Source Separation with Discriminative Scattering Networks},
  author = {Pablo Sprechmann and Joan Bruna and Yann LeCun},
  journal= {arXiv preprint arXiv:1412.7022},
  year   = {2015}
}
R2 v1 2026-06-22T07:40:48.189Z