Maximum likelihood Linear Programming Data Fusion for Speaker Recognition
Other authors
Publication date
2009ISSN
0167-6393
Abstract
Biometric system performance can be improved by means of data fusion. Several kinds of
information can be fused in order to obtain a more accurate classification (identification or
verification) of an input sample. In this paper we present a method for computing the
weights in a weighted sum fusion for score combinations, by means of a likelihood model.
The maximum likelihood estimation is set as a linear programming problem. The scores are
derived from a GMM classifier working on a different feature extractor. Our experimental
results assesed the robustness of the system in front a changes on time (different sessions)
and robustness in front a change of microphone. The improvements obtained were
significantly better (error bars of two standard deviations) than a uniform weighted sum or a
uniform weighted product or the best single classifier. The proposed method scales
computationaly with the number of scores to be fussioned as the simplex method for linear
programming.
Document Type
Article
Language
English
Keywords
Veu, Processament de
Pages
19 p.
Publisher
Elsevier
Citation
MONTE-MORENO, Enric i altres . "Maximum likelihood linear programming data fusion for speaker recognition". A: Speech Communication, 2009, vol. 51, núm. 9, pàg. 820-830
This item appears in the following Collection(s)
- Articles [1389]
Rights
(c) 2009 Elsevier. Published article is available at: http://dx.doi.org/10.1016/j.specom.2008.05.009