2013
DOI: 10.5120/11391-6687
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Robust Speaker Identification using Denoised Wave Atom and GMM

Abstract: This paper introduces the use of Wave atom transformation as an efficient speech noise filter with Gaussian mixture models (GMM) for robust text-independent speaker identification. The individual Gaussian components of a GMM are shown to represent some general speaker identity. The focus of this work is on applications which require high robustness of noise and high identification rates using short utterance from noisy (Natural Noise) numerical speech and alphabetical words speech. A Full experimental evaluati… Show more

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Cited by 2 publications
(1 citation statement)
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“…The third class seeks for alternative spectrum estimation methods for speaker verification, such as wavelet transformation [97,98], the denoised wave atom [99], using gammatone filter bank as a cochlear filter simulator [100] and Mean Hilbert Envelope Coefficients (MHEC) [7]. In [101], the instantaneous frequency has been shown to be robust against channel and speaking style.…”
Section: Feature Domain Approachesmentioning
confidence: 99%
“…The third class seeks for alternative spectrum estimation methods for speaker verification, such as wavelet transformation [97,98], the denoised wave atom [99], using gammatone filter bank as a cochlear filter simulator [100] and Mean Hilbert Envelope Coefficients (MHEC) [7]. In [101], the instantaneous frequency has been shown to be robust against channel and speaking style.…”
Section: Feature Domain Approachesmentioning
confidence: 99%