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ICASSP
2011
IEEE

Discriminative training for Bayesian sensing hidden Markov models

13 years 4 months ago
Discriminative training for Bayesian sensing hidden Markov models
We describe feature space and model space discriminative training for a new class of acoustic models called Bayesian sensing hidden Markov models (BS-HMMs). In BS-HMMs, speech data is represented by a set of state-dependent basis vectors. The relevance of a feature vector to different bases is determined by the precision matrices of the sensing weights. The basis vectors and the precision matrices of the reconstruction errors are jointly estimated by optimizing a maximum mutual information (MMI) criterion. Additionally, we discuss the training of an fMPE-style discriminative feature transformation under the same criterion given these models. Experimental results on an LVCSR task show that the proposed models outperform discriminatively trained conventional HMMs with Gaussian mixture models (GMMs). Cross-adapting the baseline GMM-HMMs to the BS-HMM output yields a 6% relative gain which indicates that the two systems make different errors.
George Saon, Jen-Tzung Chien
Added 20 Aug 2011
Updated 20 Aug 2011
Type Journal
Year 2011
Where ICASSP
Authors George Saon, Jen-Tzung Chien
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