Title :
Markov Random Field Linear Regression
Author :
Wu, Xintian ; Yan, Yonghong
Author_Institution :
Oregon Graduate Institute of Science and Technology, 20000 N.W. Walker Road, P.O. Box 91000, Portland, OR 97291-1000, USA
Abstract :
This paper outlines the Markov Random Field Linear Regression (MRFLR) algorithm, which combines the transformation-based adaptation and dependency-modeling technique together. The hypothesis is that the adaptation performance can be improved by explicitly modeling the correlations among acoustic parameters and applying such constraints to the transformation-matrix estimation. The correlations are modeled by Markov Random Field, and the incorporation of the correlations is under the Maximum A Posteriori framework. Experimental results show that MRFLR has significant improvement over Maximum Likelihood Linear Regression when only small amounts of adaptation data are available.
Keywords :
Error analysis;
Conference_Titel :
Signal Processing Conference, 2000 10th European
Conference_Location :
Tampere, Finland
Print_ISBN :
978-952-1504-43-3