Title :
Spectral Domain Speech Enhancement Using HMM State-Dependent Super-Gaussian Priors
Author :
Mohammadiha, Nasser ; Martin, Rashad ; Leijon, Arne
Author_Institution :
Sch. of Electr. Eng., KTH R. Inst. of Technol., Stockholm, Sweden
Abstract :
The derivation of MMSE estimators for the DFT coefficients of speech signals, given an observed noisy signal and super-Gaussian prior distributions, has received a lot of interest recently. In this letter, we look at the distribution of the periodogram coefficients of different phonemes, and show that they have a gamma distribution with shape parameters less than one. This verifies that the DFT coefficients for not only the whole speech signal but also for individual phonemes have super-Gaussian distributions. We develop a spectral domain speech enhancement algorithm, and derive hidden Markov model (HMM) based MMSE estimators for speech periodogram coefficients under this gamma assumption in both a high uniform resolution and a reduced-resolution Mel domain. The simulations show that the performance is improved using a gamma distribution compared to the exponential case. Moreover, we show that, even though beneficial in some aspects, the Mel-domain processing does not lead to better results than the algorithms in the high-resolution domain.
Keywords :
Gaussian distribution; discrete Fourier transforms; gamma distribution; hidden Markov models; least mean squares methods; signal resolution; speech enhancement; DFT coefficients; HMM state-dependent superGaussian prior distributions; MMSE estimators; gamma distribution; hidden Markov model; observed noisy signal; phonemes; reduced-resolution Mel-domain processing; spectral domain speech enhancement algorithm; speech periodogram coefficients; speech signals; Discrete Fourier transforms; Hidden Markov models; Noise; Shape; Signal processing algorithms; Speech; Speech enhancement; HMM; speech enhancement; super-Gaussian pdf;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2013.2242467