Gender-dependent phonetic refraction for speaker recognition

W.D. Andrews(United States Department of Defense), M.A. Kohler(United States Department of Defense), Joseph P. Campbell(Massachusetts Institute of Technology), John J. Godfrey(United States Department of Defense), Jaime Hernández-Cordero(United States Department of Defense)
IEEE International Conference on Acoustics Speech and Signal Processing
May 1, 2002
Cited by 74

Abstract

This paper describes improvements to an innovative high-performance speaker recognition system. Recent experiments showed that with sufficient training data phone strings from multiple languages are exceptional features for speaker recognition. The prototype phonetic speaker recognition system used phone sequences from six languages to produce an equal error rate of 11.5% on Switchboard-I audio files. The improved system described in this paper reduces the equal error rate to less then 4%. This is accomplished by incorporating gender-dependent phone models, pre-processing the speech files to remove cross-talk, and developing more sophisticated fusion techniques for the multi-language likelihood scores.


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