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Featured researches published by Michael D. Plumpe.


IEEE Transactions on Speech and Audio Processing | 1999

Modeling of the glottal flow derivative waveform with application to speaker identification

Michael D. Plumpe; Thomas F. Quatieri; Douglas A. Reynolds

An automatic technique for estimating and modeling the glottal flow derivative source waveform from speech, and applying the model parameters to speaker identification, is presented. The estimate of the glottal flow derivative is decomposed into coarse structure, representing the general flow shape, and fine structure, comprising aspiration and other perturbations in the flow, from which model parameters are obtained. The glottal flow derivative is estimated using an inverse filter determined within a time interval of vocal-fold closure that is identified through differences in formant frequency modulation during the open and closed phases of the glottal cycle. This formant motion is predicted by Ananthapadmanabha and Fant (1982) to be a result of time-varying and nonlinear source/vocal tract coupling within a glottal cycle. The glottal flow derivative estimate is modeled using the Liljencrants-Fant (1986) model to capture its coarse structure, while the fine structure of the flow derivative is represented through energy and perturbation measures. The model parameters are used in a Gaussian mixture model speaker identification (SID) system. Both coarse- and fine-structure glottal features are shown to contain significant speaker-dependent information. For a large TIMIT database subset, averaging over male and female SID scores, the coarse-structure parameters achieve about 60% accuracy, the fine-structure parameters give about 40% accuracy, and their combination yields about 70% correct identification. Finally, in preliminary experiments on the counterpart telephone-degraded NTIMIT database, about a 5% error reduction in SID scores is obtained when source features are combined with traditional mel-cepstral measures.


Archive | 1996

Method and system of runtime acoustic unit selection for speech synthesis

Xuedong Huang; Michael D. Plumpe; Alejandro Acero; James L. Adcock


Archive | 2000

Pattern recognition training method and apparatus using inserted noise followed by noise reduction

Li Deng; Xuedong Huang; Michael D. Plumpe


Archive | 2009

LOCAL AND REMOTE AGGREGATION OF FEEDBACK DATA FOR SPEECH RECOGNITION

Michael D. Plumpe; Julian J. Odell; Jon Hamaker; Robert L. Chambers; Christopher Le; Onur Domanic


Archive | 2006

Intelligent speech recognition of incomplete phrases

David Mowatt; Ricky Loynd; Robert Edward Dewar; Rachel Morton; Qiang Wu; Robert Brown; Michael D. Plumpe; Philipp H. Schmid


Journal of the Acoustical Society of America | 2006

Method and apparatus using spectral addition for speaker recognition

Xuedong Huang; Michael D. Plumpe


Archive | 2009

LOCAL AND REMOTE FEEDBACK LOOP FOR SPEECH SYNTHESIS

Michael D. Plumpe


Archive | 2003

Method for training of subspace coded gaussian models

Alejandro Acero; Michael D. Plumpe


Archive | 2015

Hybrid Client/Server Architecture for Parallel Processing

Christopher Le; Michael V. Calcagno; Jon Hamaker; Robert L. Chambers; Michael D. Plumpe; Travis Wilson


Archive | 2001

Noise robust pattern recognition

Li Sammamish Deng; Xuedong Woodinville Huang; Michael D. Plumpe

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