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Fusing Length and Voicing Information, and HMM Decision Using a Bayesian Causal Tree against Insufficient Training Data
Barcelona, Spain September 03-September 08
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICPR.2000.90349515th International Conference on Patt ...
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Mübeccel Demirekler, Middle East Technical University
Fahri Karahan, Middle East Technical University
Tolga Çiloglu, Middle East Technical University
This paper presents the work done to improve the recognition rate in an isolated word recognition problem with single utterance training. The negative effect of errors (due to insufficient training data) in estimated model parameters is compensated by fusing the information obtained from HMM evaluation and those generated for the word length and voicing at the beginning and end of the word. A Bayesian Causal Tree structure is developed to accomplish the fusion. The final decision is made on one of the three candidates, which are most likely according to HMM evaluation. The reliability of the HMM ordering is improved by applying variance flooring.
Citation:
Mübeccel Demirekler, Fahri Karahan, Tolga Çiloglu, "Fusing Length and Voicing Information, and HMM Decision Using a Bayesian Causal Tree against Insufficient Training Data," icpr, vol. 3, pp.3106, 15th International Conference on Pattern Recognition (ICPR'00) - Volume 3, 2000
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