The State Based Mixture of Expert HMM with Applications to the Recognition of Spontaneous Speech (2001)
| Citations: | 1 - 0 self |
BibTeX
@TECHREPORT{Tuerk01thestate,
author = {Andreas Tuerk},
title = {The State Based Mixture of Expert HMM with Applications to the Recognition of Spontaneous Speech},
institution = {},
year = {2001}
}
OpenURL
Abstract
Although the performance of speech recognition systems has increased substantially over the last decades, there still remain a number of tasks which pose considerable problems for current state-of-the-art techniques. One of these tasks is the recognition of spontaneous speech which differs from read or planned speech in that its underlying dynamics change frequently over time. The negative effect of changes in acoustic background condition on recognition performance can also be observed in other situations as, for instance, in the case of speech that is corrupted by non-stationary noise. This thesis is concerned with the development of an acoustic model for speech recognition which automatically detects changes in the background condition of a signal and compensates for the model-data mismatch by combining the information of several expert models. These experts are specialised on the different acoustic conditions under consideration and their influ-ence on the recognition process is determined by how well their associated condition matches







