Discriminative gaussian mixture models for speaker verification

This invention relates generally to methods and apparatus for use in performing speaker identification. Speaker identification is performed using a single Gaussian mixture model (GMM) for multiple speakers-referred to herein as a Discriminative Gaussian mixture model (DGMM). A likelihood sum of the...

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Bibliographische Detailangaben
1. Verfasser: Burges, Christopher John
Format: Patent
Sprache:eng
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Zusammenfassung:This invention relates generally to methods and apparatus for use in performing speaker identification. Speaker identification is performed using a single Gaussian mixture model (GMM) for multiple speakers-referred to herein as a Discriminative Gaussian mixture model (DGMM). A likelihood sum of the single GMM is factored into two parts, one of which depends only on the Gaussian mixture model, and the other of which is a discriminative term. The discriminative term allows for the use of a binary classifier, such as a support vector machine (SVM). In one embodiment of the invention, a voice messaging system incorporates a DGMM to identify the speaker who generated a message, if that speaker is a member of a chosen list of target speakers, or to identify the speaker as a "non-target" otherwise.