DocumentCode
2666493
Title
Recognizing a voice from its model
Author
Damiano, Brian ; Kercel, Stephen W. ; Tucker, Raymond W., Jr. ; Brown-VanHoozer, S. Alenka
Author_Institution
Oak Ridge Nat. Lab., TN, USA
Volume
3
fYear
2000
fDate
2000
Firstpage
2216
Abstract
Investigates a potential solution to the “large-population” speaker identification problem by characterizing a voice by the entailments in two different kinds of models. These entailments are found in the representational models of neuro-linguistic programming (NLP) and in the model of the mechanics of the voice as revealed by the continuous wavelet transform (CWT). Results to date have been obtained from examining samples in the TIMIT database and human subjects. Local features correlated with individual speakers for selected vowel sounds have been found in the CWT space. Features of NLP representation systems have also been found and are compared with voice features for speakers whose NLP representation systems are known a priori. Gaussian mixture models are used to calculate probability density functions from the local feature distributions. This speaker identification strategy combines three elements of novelty. First, it exploits the fact that the 2D CWT of a 1D signal can be interpreted as an image, and can thus use feature extraction techniques first developed for image processing. Second, voice waveforms are systematically studied to identify features that are attributed to the speaker´s mental representation. Third, the reliability of the identification is strengthened by combining entailments from these two completely different aspects of the speaker´s identity: the mechanical aspects of the speaker´s vocal tract and the pattern of representation
Keywords
feature extraction; linguistics; probability; psychology; speaker recognition; speech; wavelet transforms; 1D signal; 2D continuous wavelet transform; Gaussian mixture models; TIMIT database; expectation maximization algorithm; feature extraction techniques; image interpretation; image processing; large-population speaker identification; local feature correlation; local feature distributions; model entailments; neurolinguistic programming; probability density functions; reliability; representational models; speaker mental representation; vocal mechanics; vocal tract; voice features; voice recognition; voice waveforms; vowel sounds; Continuous wavelet transforms; Feature extraction; Humans; Image processing; Loudspeakers; Probability density function; Signal processing; Spatial databases; Speech recognition; Wavelet transforms;
fLanguage
English
Publisher
ieee
Conference_Titel
Systems, Man, and Cybernetics, 2000 IEEE International Conference on
Conference_Location
Nashville, TN
ISSN
1062-922X
Print_ISBN
0-7803-6583-6
Type
conf
DOI
10.1109/ICSMC.2000.886445
Filename
886445
Link To Document