음소기반 인식 네트워크에서의 비인식 대상 문장 거부 기능의 비교 연구

Comparison Research of Non-Target Sentence Rejection on Phoneme-Based Recognition Networks

  • 김형태 (강원대학교 컴퓨터학부) ;
  • 하진영 (강원대학교 컴퓨터학부)
  • 발행 : 2006.09.30

초록

For speech recognition systems, rejection function as well as decoding function is necessary to improve the reliability. There have been many research efforts on out-of-vocabulary word rejection, however, little attention has been paid on non-target sentence rejection. Recently pronunciation approaches using speech recognition increase the need for non-target sentence rejection to provide more accurate and robust results. In this paper, we proposed filler model method and word/phoneme detection ratio method to implement non-target sentence rejection system. We made performance evaluation of filler model along to word-level, phoneme-level, and sentence-level filler models respectively. We also perform the similar experiment using word-level and phoneme-level word/phoneme detection ratio method. For the performance evaluation, the minimized average of FAR and FRR is used for comparing the effectiveness of each method along with the number of words of given sentences. From the experimental results, we got to know that word-level method outperforms the other methods, and word-level filler mode shows slightly better results than that of word detection ratio method.

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