標題: DISCRIMINATIVE FEEDBACK ADAPTATION FOR GMM-UBM SPEAKER VERIFICATION
作者: Chao, Yi-Hsiang
Tsai, Wei-Ho
Wang, Hsin-Min
資訊工程學系
Department of Computer Science
關鍵字: Discriminative feedback adaptation;log-likelihood ratio;minimum verification squared-error linear regression;speaker verification
公開日期: 2008
摘要: The GMM-UBM system is the current state-of the-art approach for text-independent speaker verification. The advantage of the approach is that both target speaker model and impostor model (UBM) have generalization ability to handle "unseen" acoustic patterns. However, since GMM-UBM uses a common anti-model, namely UBM, for all target speakers, it tends to be weak in rejecting impostors\' voices that are similar to the target speaker\'s voice. To overcome this limitation, we propose a discriminative feedback adaptation (DFA) framework that reinforces the discriminability between the target speaker model and the antimodel, while preserves the generalization ability of the GMM-UBM approach. This is done by adapting the UBM to a target-speaker-dependent anti-model based on a minimum verification squared-error criterion, rather than estimating from scratch by applying the conventional discriminative training schemes. The results of experiments conducted on the NIST2001-SRE database show that DFA substantially improves the performance of the conventional GMM-UBM approach.
URI: http://hdl.handle.net/11536/135628
ISBN: 978-1-4244-2942-4
期刊: 2008 6TH INTERNATIONAL SYMPOSIUM ON CHINESE SPOKEN LANGUAGE PROCESSING, PROCEEDINGS
起始頁: 169
結束頁: 172
Appears in Collections:Conferences Paper