Nonstationary-state hidden Markov model representation of speech signals for speech enhancement (Q5958508)
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scientific article; zbMATH DE number 1715520
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Nonstationary-state hidden Markov model representation of speech signals for speech enhancement |
scientific article; zbMATH DE number 1715520 |
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Nonstationary-state hidden Markov model representation of speech signals for speech enhancement (English)
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3 March 2002
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A novel formulation of the nonstationary-state hidden Markov model (NS-HMM), employed as a speech model and serving as the theoretical basis for the construction of a speech enhancement system, is presented in this paper. The NS-HMM is used as a compact, parametric model, generalized from the stationary-state HMM, for describing clean speech statistics in the construction of the minimum mean-square-error (MMSE) speech enhancement system. The feature selection problem associated with the use of the NS-HMM in designing the speech enhancement system is addressed. The MMSE formulation is derived where the NS-HMM is used as the clean speech model and Gaussian-mixture, stationary-state HMM as the additive noise model. Speech enhancement experiments are conducted, demonstrating superiority of the NS-HMM over the stationary-state HMM in the speech enhancement performance for low SNRs. Detailed diagnostic analysis on the speech enhancement system's operation shows that the superiority arises from the ability of the NS-HMM to fit the spectral trajectory of the signal embedded in noise more closely than the stationary-state HMM.
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speech enhancement
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noise removal
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nonstationary-state hidden Markov model
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minimum mean-square-error estimate
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