Real-time Online Singing Voice Separation from Monaural Recordings Using Robust Low-rank Modeling

نویسندگان

  • Pablo Sprechmann
  • Alexander M. Bronstein
  • Guillermo Sapiro
چکیده

Separating the leading vocals from the musical accompaniment is a challenging task that appears naturally in several music processing applications. Robust principal component analysis (RPCA) has been recently employed to this problem producing very successful results. The method decomposes the signal into a low-rank component corresponding to the accompaniment with its repetitive structure, and a sparse component corresponding to the voice with its quasiharmonic structure. In this paper we first introduce a non-negative variant of RPCA, termed as robust lowrank non-negative matrix factorization (RNMF). This new framework better suits audio applications. We then propose two efficient feed-forward architectures that approximate the RPCA and RNMF with low latency and a fraction of the complexity of the original optimization method. These approximants allow incorporating elements of unsupervised, semiand fullysupervised learning into the RPCA and RNMF frameworks. Our basic implementation shows several orders of magnitude speedup compared to the exact solvers with no performance degradation, and allows online and faster-than-real-time processing. Evaluation on the MIR-1K dataset demonstrates state-of-the-art performance.

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تاریخ انتشار 2012