ISCA Archive Eurospeech 1991
ISCA Archive Eurospeech 1991

Two level continuous speech recognition using demisyllable-based HMM word spotting

Eduardo Lleida, Jose B. Marino, Climent Nadeu, Albert Oliveras

This paper describes a two level Spanish Continuous Speech Recognition System based on Demisyllable HMM modelling, word-spotting and finite-state lexical and syntactic knowledge. The first level, the word level, is based on a spotting algorithm which takes as input the unknown utterance, the HMM of the reference demisyllable and the lexical knowledge in terms of a finite-state network. The output of the word level is a lattice of word hypothesis [1]. The second level, the phrase level, searches in a time-synchronous procedure the best sentence that end at each time instant. It takes as input the word lattice and the syntactic knowledge in terms of a finite-state network, giving as output the best legal sentence. The proposal two-level system was tested recognizing the integers from 0 to 1000 in a speaker independent approach. We get a word accuracy of 93,2% with a sentence accuracy of 84. 5%. Keywords: Speech Recognition, Hidden Markov Model, Fuzzy Training, Demisyllable, Word-spotting, Multiple Hypothesis, Finite State Networks.


doi: 10.21437/Eurospeech.1991-174

Cite as: Lleida, E., Marino, J.B., Nadeu, C., Oliveras, A. (1991) Two level continuous speech recognition using demisyllable-based HMM word spotting. Proc. 2nd European Conference on Speech Communication and Technology (Eurospeech 1991), 1199-1202, doi: 10.21437/Eurospeech.1991-174

@inproceedings{lleida91_eurospeech,
  author={Eduardo Lleida and Jose B. Marino and Climent Nadeu and Albert Oliveras},
  title={{Two level continuous speech recognition using demisyllable-based HMM word spotting}},
  year=1991,
  booktitle={Proc. 2nd European Conference on Speech Communication and Technology (Eurospeech 1991)},
  pages={1199--1202},
  doi={10.21437/Eurospeech.1991-174}
}