Title :
Discriminative state-weighting of HMM-based speech recognizers
Author :
Kwon, Oh Wook ; Un, Chong Kwan
Author_Institution :
Spoken Language Processing Sect., ETRI, Taejon, South Korea
Abstract :
Assuming that the score of a speech utterance is a weighted sum of hidden Markov model (HMM) log state-likelihoods, we propose a new method of finding discriminative state-weights recursively using the generalized probabilistic descent method. Experimental results showed that the recognizers with phoneme-based and word-based state-weights achieved 20% and 50% decrease in word error rate, respectively, for isolated word recognition, and 5% decrease for continuous speech recognition. Our approach yields recognition accuracies comparable to those of the previous approaches for continuous speech recognition, but it is much simpler to implement than others
Keywords :
errors; hidden Markov models; probability; speech recognition; HMM log state-likelihoods; HMM-based speech recognizers; continuous speech recognition; discriminative state-weights; generalized probabilistic descent method; hidden Markov model; isolated word recognition; phoneme-based state-weights; word error rate; word-based state-weights; Data mining; Electronic mail; Error analysis; Hidden Markov models; Maximum likelihood estimation; Natural languages; Parameter estimation; Speech recognition; State estimation; Viterbi algorithm;
Conference_Titel :
Circuits and Systems, 1996., IEEE Asia Pacific Conference on
Conference_Location :
Seoul
Print_ISBN :
0-7803-3702-6
DOI :
10.1109/APCAS.1996.569266