Title
Soft frame margin estimation of Gaussian Mixture Models for speaker recognition with sparse training data
Abstract
Discriminative Training (DT) methods for acoustic modeling, such as MMI, MCE, and SVM, have been proved effective in speaker recognition. In this paper we propose a DT method for GMM using soft frame margin estimation. Unlike other DT methods such as MMI or MCE, the soft frame margin estimation attempts to enhance the generalization capability of GMM to unseen data in case the mismatch exists between training data and unseen data. We define an objective function which integrates multi-class separation frame margin and loss function, both as functions of GMM likelihoods. We propose to optimize the objective function based on a convex optimization technique, semidefinite programming. As shown in our experimental results, the proposed soft frame margin discriminative training with semidefinite programming optimization (SFME-SDP) is very effective for robust speaker model training when only limited amounts of training data are available.
Year
DOI
Venue
2011
10.1109/ICASSP.2011.5947546
ICASSP
Keywords
Field
DocType
mce,acoustic modeling,sparse training data,discriminative training method,convex programming,svm,speaker recognition,semidefinite programming,mmi,gaussian processes,gaussian mixture models,gmm likelihoods,convex optimization technique,dt method,soft frame margin estimation,convex optimization,hidden markov model,hidden markov models,objective function,gaussian mixture model,convex functions,speech,loss function,estimation,convex function,support vector machines,support vector machine
Pattern recognition,Computer science,Support vector machine,Speech recognition,Speaker recognition,Gaussian process,Artificial intelligence,Hidden Markov model,Discriminative model,Convex optimization,Semidefinite programming,Mixture model
Conference
ISSN
ISBN
Citations 
1520-6149 E-ISBN : 978-1-4577-0537-3
978-1-4577-0537-3
0
PageRank 
References 
Authors
0.34
8
2
Name
Order
Citations
PageRank
Yan Yin100.34
Qi Li211.04