Title :
A hybrid continuous speech recognition system using segmental neural nets with hidden Markov models
Author :
Austin, S. ; Zavaliagkos, G. ; Makhoul, J. ; Schwartz, R.
Author_Institution :
BBN Syst. & Technol., Cambridge, MA, USA
fDate :
30 Sep-1 Oct 1991
Abstract :
The authors present the concept of a `segmental neural net´ (SNN) for phonetic modeling in continuous speech recognition (CSR) and demonstrate how than can be used with a multiple hypothesis (or N-Best) paradigm to combine different CSR systems. In particular, they have developed a system that combines the SNN with a hidden Markov model (HMM) system. They believe that this is the first system incorporating a neural network for which the performance has exceeded the state of the art in large-vocabulary, continuous speech recognition. To take advantage of the training and decoding speed of HMMs, the authors have developed a novel hybrid SNN/HMM system that combines the advantages of both types of approaches. In this hybrid system, use is made of the N-best paradigm to generate likely phonetic segmentations, which are then scored by the SNN. The HMM and SNN scores are then combined to optimize performance
Keywords :
hidden Markov models; neural nets; optimisation; speech recognition; N-best paradigm; hidden Markov models; hybrid continuous speech recognition system; optimisation; performance; phonetic modeling; segmental neural nets; Availability; Computational efficiency; Context modeling; Decoding; Hidden Markov models; Hybrid power systems; Neural networks; Signal processing; Speech recognition; Sun;
Conference_Titel :
Neural Networks for Signal Processing [1991]., Proceedings of the 1991 IEEE Workshop
Conference_Location :
Princeton, NJ
Print_ISBN :
0-7803-0118-8
DOI :
10.1109/NNSP.1991.239507