Hilfe beim Zugang
Speech enhancement using an MMSE short time DCT coefficients estimator with supergaussian speech modeling
Abstract In this paper, two speech enhancement systems with supergaussian speech modeling are presented. The clean speech components are estimated by Minimum-Mean-Square-Error (MMSE) estimator under the assumption that the DCT coefficients of clean speech are modeled by a Laplacian or a Gamma distri...
Ausführliche Beschreibung
Abstract In this paper, two speech enhancement systems with supergaussian speech modeling are presented. The clean speech components are estimated by Minimum-Mean-Square-Error (MMSE) estimator under the assumption that the DCT coefficients of clean speech are modeled by a Laplacian or a Gamma distribution and the DCT coefficients of the noise are Gaussian distributed. Then, MMSE estimators under speech presence uncertainty are derived. Furthermore, the proper estimators of the speech statistical parameters are proposed. The speech Laplacian factor is estimated by a new decision-directed method. The simulation results show that the proposed algorithm yields less residual noise and better speech quality than the Gaussian based speech enhancement algorithms proposed in recent years. Ausführliche Beschreibung