Semi-supervised Speech Enhancement in Envelop and Details Subspaces
In this study, we propose a modulation decoupling based single channel speech enhancement subspace framework, in which the spectrogram of noisy speech is decoupled as the product of a spectral envelop subspace and a spectral details subspace. This decoupling approach provides a method to specificall...
Saved in:
| Main Authors | , |
|---|---|
| Format | Journal Article |
| Language | English |
| Published |
29.09.2016
|
| Subjects | |
| Online Access | Get full text |
| DOI | 10.48550/arxiv.1609.09443 |
Cover
| Summary: | In this study, we propose a modulation decoupling based single channel speech
enhancement subspace framework, in which the spectrogram of noisy speech is
decoupled as the product of a spectral envelop subspace and a spectral details
subspace. This decoupling approach provides a method to specifically work on
elimination of those noises that greatly affect the intelligibility. Two
supervised low-rank and sparse decomposition schemes are developed in the
spectral envelop subspace to obtain a robust recovery of speech components. A
Bayesian formulation of non-negative factorization is used to learn the speech
dictionary from the spectral envelop subspace of clean speech samples. In the
spectral details subspace, a standard robust principal component analysis is
implemented to extract the speech components. The validation results show that
compared with four speech enhancement algorithms, including MMSE-SPP, NMF-RPCA,
RPCA, and LARC, the proposed MS based algorithms achieve satisfactory
performance on improving perceptual quality, and especially speech
intelligibility. |
|---|---|
| DOI: | 10.48550/arxiv.1609.09443 |