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cepstral

  • Generalized Mel frequency cepstral coefficients for large-vocabulary Speaker-Independent Continuous-

    Generalized Mel frequency cepstral coefficients for large-vocabulary Speaker-Independent Continuous-Speech Recognition 關(guān)于MFCC算法的很好的英語文章

    標(biāo)簽: Speaker-Independent large-vocabulary coefficients Generalized

    上傳時(shí)間: 2014-01-23

    上傳用戶:liglechongchong

  • cepstral analisys for pitch and F0 detection

    cepstral analisys for pitch and F0 detection

    標(biāo)簽: detection cepstral analisys pitch

    上傳時(shí)間: 2017-03-08

    上傳用戶:ardager

  • CEP2POW convert cepstral means and variances to the power domain

    CEP2POW convert cepstral means and variances to the power domain

    標(biāo)簽: variances cepstral CEP2POW convert

    上傳時(shí)間: 2014-09-01

    上傳用戶:kytqcool

  • Signal Processing for Telecommunications

    This paper presents a Hidden Markov Model (HMM)-based speech enhancement method, aiming at reducing non-stationary noise from speech signals. The system is based on the assumption that the speech and the noise are additive and uncorrelated. cepstral features are used to extract statistical information from both the speech and the noise. A-priori statistical information is collected from long training sequences into ergodic hidden Markov models. Given the ergodic models for the speech and the noise, a compensated speech-noise model is created by means of parallel model combination, using a log-normal approximation. During the compensation, the mean of every mixture in the speech and noise model is stored. The stored means are then used in the enhancement process to create the most likely speech and noise power spectral distributions using the forward algorithm combined with mixture probability. The distributions are used to generate a Wiener filter for every observation. The paper includes a performance evaluation of the speech enhancer for stationary as well as non-stationary noise environment.

    標(biāo)簽: Telecommunications Processing Signal for

    上傳時(shí)間: 2020-06-01

    上傳用戶:shancjb

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