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1. Speech recognition using hidden Markov models with polynomial regression functions as nonstationary states
Li Deng; Aksmanovic, M.; Xiaodong Sun; Wu, C.F.J.;
Speech and Audio Processing, IEEE Transactions on
Volume 2,  Issue 4,  Oct. 1994 Page(s):507 - 520
Abstract:

Proposes, implements, and evaluates a class of nonstationary-state hidden Markov models (HMMs) having each state associated with a distinct polynomial regression function of time plus white Gaussian noise. The model represents the transitional acoustic trajectories of speech in a parametric manner, and includes the standard stationary-state HMM as a special, degenerated case. The authors develop an efficient dynamic programming technique which includes the state sojourn time as an optimization variable, in conjunction with a state-dependent orthogonal polynomial regression method, for estimating the model parameters. Experiments on fitting models to speech data and on limited-vocabulary speech recognition demonstrate consistent superiority of these nonstationary-state HMMs over the traditional stationary-state HMMs
Abstract | Full Text: PDF(820 KB)    IEEE JNL
 
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