Robust text-independent speaker identification using Gaussian ...
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Dr. Joseph Campbell. D. A. Reynolds is with the Speech Systems Technology Group, MIT ..... Institute of Technology Lincoln Laboratory, where his research ...
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TIMIT database and on a subset of the NTIMIT database are pre- sented. The new algorithm is shown to offer improved recognition rates over other existing ...
Jul 8, 2016 - PLOS ONE | DOI:10.1371/journal.pone.0158520 July 8, 2016. 1 / 21 a11111 .... dependent rate and phase responses, shift in the best frequency with level, adaptation, and sev- eral high-level .... Illustration of the effects of noise on t
The text-independent, closed-set speaker identification accuracies, as tested on KING, YOHO and the down-sampled version of. TIMIT databases were 98.81%, ...
text-independent speaker identification from samples of speech recorded over the ...... neering from McMaster University, Hamilton, Ont.,. Canada, in 1986, and ...
The performance is evaluated using clean speech corpus from TIMIT database combined with babble noise from the NOISEX-92 database. Experimental.
Douglas A. Reynolds, Thomas F. Quatieri, and Robert B. Dunn .... Reynolds,
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independent speaker identification on very short utterances. The tech- nique is based on ... effective parametric classifier for speaker identification in a telephone.
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1929; e-mail: [email protected]). extraction of speaker dependent features from the speech signal is the fundamental problem of speaker recognition.
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vowels and voiced consonants are relatively more effective for accurate speaker identification [5-6]. In our previous experiments, we conducted perceptual.
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Robust text-independent speaker identification using Gaussian ...
Douglas A. Reynolds, Member, IEEE, and Richard C. Rose, Member, IEEE.
Abstract— This ... D. A. Reynolds is with the Speech Systems Technology Group,
MIT.