Using Pitch as Prior Knowledge in Template-Based Speech Recognition
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In this paper, we investigate the possibility of enhancing state-of-the-art HMM-based speech recognition systems using data-driven techniques, where whole set of training utterances is used as reference models and recognition is then performed through the ...
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