Estimation of Global Posteriors and Forward-Backward Training of Hybrid HMM/ANN Systems
Tipo de publicação: | Inproceedings |
Citação: | henn97:euro |
Booktitle: | European Conference on Speech Communication and Technology (EUROSPEECH 97), Rhodes, Greece |
Ano: | 1997 |
Páginas: | 1951-1954 |
URL: | http://diuf.unifr.ch/people/he... |
Resumo: | The results of our research presented in this paper is two-fold. First, an estimation of global posteriors is formalized in the framework of hybrid HMM/ANN systems. It is shown that hybrid HMM/ANN systems, in which the ANN part estimates local posteriors, can be used to modelize global model posteriors. This formalization provides us with a clear theory in which both REMAP and ``classical'' Viterbi trained hybrid systems are unified. Second, a new forward-backward training of hybrid HMM/ANN systems is derived from the previous formulation. Comparisons of performance between Viterbi and forward-backward hybrid systems are presented and discussed. |
Palavras-chave: | ANN, MLP, Speech Recognition |
Autores | |
Adicionado por: | [] |
Total mark: | 0 |
Anexos
|
|
Notas
|
|
|
|
Tópicos
|
|
|