Utterance verification improves closed-set recognition and out-of-vocabulary rejection

We report on utterance veriication of puta-tive recognitions in both open-set and closed-set recognition tasks using telephone speech. For open-set recognition, we report on rejection of out-of-vocabulary utterances. In a two-keyword task (\male" and \female") using 50% out-of-vocabulary utterances, utterance veriication reduced errors by 60%, from 12% to 4.8% compared to our baseline rejection strategy. For closed-set recognition, we report on reordering the N-best hypotheses. In a 58-phrase task, utterance veriication reduced closed-set recognition errors by 30%, from 6.5% to 4.5%.

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