A harmonic excitation state-space approach to blind separation of speech |
Rasmus Kongsgaard Olsson, Lars Kai Hansen
|
Abstract | We discuss an identification framework for noisy speech mixtures. A block-based generative model is formulated that explicitly incorporates the time-varying harmonic plus noise (H+N) model for a number of latent sources observed through noisy convolutive mixtures. All parameters including the pitches of the source signals, the amplitudes and phases of the sources, the mixing filters and the noise statistics are estimated by maximum likelihood, using an EM-algorithm. Exact averaging over the hidden sources is obtained using the Kalman smoother. We show that pitch estimation and source separation can be performed simultaneously. The pitch estimates are compared to laryngograph (EGG) measurements. Artificial and real room mixtures are used to demonstrate the viability of the approach. Intelligible speech signals are re-synthesized from the estimated H+N models. |
Type | Conference paper [With referee] |
Conference | Advances in Neural Information Processing Systems |
Editors | Lawrence K. Saul and Yair Weiss and {L\'{e}on} Bottou |
Year | 2005 Vol. 17 pp. 993-1000 |
Publisher | MIT Press |
Address | Cambridge, MA |
Electronic version(s) | [pdf] |
Publication link | http://books.nips.cc/papers/files/nips17/NIPS2004_0507.pdf |
BibTeX data | [bibtex] |
IMM Group(s) | Intelligent Signal Processing |