Speech recognition using hidden Markov models: A CMU perspective
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Mei-Yuh Hwang | Xuedong Huang | Hsiao-Wuen Hon | Kai-Fu Lee | Kai-Fu Lee | H. Hon | M. Hwang | Xuedong Huang
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