Title :
Bottleneck ANN: Dealing with small amount of data in shift-MLLR adaptation
Author :
Zajic, Zbynek ; Machlica, Lukas ; Muller, Lukas
Author_Institution :
Dept. of Cybern., Univ. of West Bohemia, Plzei, Czech Republic
Abstract :
The aim of this work is to propose a refinement of the shift-MLLR (shift Maximum Likelihood Linear Regression) adaptation of an acoustics model in the case of limited amount of adaptation data, which can lead to ill-conditioned transformations matrices. We try to suppress the influence of badly estimated transformation parameters utilizing the bottleneck Artificial Neural Network (ANN). The ill-conditioned shift-MLLR transformation is propagated through a bottleneck ANN (suitably trained beforehand), and the output of the net is used as the new refined transformation. To train the ANN the well and the badly conditioned shift-MLLR transformations are used as outputs and inputs of ANN, respectively.
Keywords :
maximum likelihood estimation; neural nets; regression analysis; speech recognition; acoustics model; artificial neural network; bottleneck ANN; maximum likelihood linear regression; shift-MLLR adaptation; shift-MLLR transformation; transformations matrices; ANN; ASR; Adaptation; bottleneck; shift-MLLR;
Conference_Titel :
Signal Processing (ICSP), 2012 IEEE 11th International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4673-2196-9
DOI :
10.1109/ICoSP.2012.6491536