Shared-Distribution Hidden Markov Models for Speech Recognition (1991)
| Citations: | 227 - 5 self |
BibTeX
@MISC{Hwang91shared-distributionhidden,
author = {Mei-yuh Hwang and Xuedong Huang},
title = {Shared-Distribution Hidden Markov Models for Speech Recognition},
year = {1991}
}
Years of Citing Articles
OpenURL
Abstract
Parameter sharing plays an important role in statistical modeling since training data are usually limited. On the one hand, we would like to use models that are as detailed as possible. On the other hand, with models too detailed, we can no longer reliably estimate the parameters. Triphone generalization may force two models to be merged together when only parts of the model output distributions are similar, while the rest of the output distributions are different. This problem can be avoided if clustering is carried out at the distribution level. In this paper, a shared-distribution model is proposed to replace generalized triphone models for speaker-independent continuous speech recognition. Here, output distributions in the hidden Markov model are shared with each other if they exhibit acoustic similarity. In addition to detailed representation, it also gives us the freedom to use a large number of states for each phonetic model. Although an increase in the number of states will inc...







