Sciweavers

TASLP
2008

Noise Tracking Using DFT Domain Subspace Decompositions

13 years 4 months ago
Noise Tracking Using DFT Domain Subspace Decompositions
All discrete Fourier transform (DFT) domain-based speech enhancement gain functions rely on knowledge of the noise power spectral density (PSD). Since the noise PSD is unknown in advance, estimation from the noisy speech signal is necessary. An overestimation of the noise PSD will lead to a loss in speech quality, while an underestimation will lead to an unnecessary high level of residual noise. We present a novel approach for noise tracking, which updates the noise PSD for each DFT coefficient in the presence of both speech and noise. This method is based on the eigenvalue decomposition of correlation matrices that are constructed from time series of noisy DFT coefficients. The presented method is very well capable of tracking gradually changing noise types. In comparison to state-of-the-art noise tracking algorithms the proposed method reduces the estimation error between the estimated and the true noise PSD. In combination with an enhancement system the proposed method improves the ...
Richard C. Hendriks, Jesper Jensen, Richard Heusde
Added 29 Dec 2010
Updated 29 Dec 2010
Type Journal
Year 2008
Where TASLP
Authors Richard C. Hendriks, Jesper Jensen, Richard Heusdens
Comments (0)