SVM-based Utterance Verification Using Various Confidence Measures

다양한 신뢰도 척도를 이용한 SVM 기반 발화검증 연구

  • 권석봉 (한국정보통신대학교 음성인식기술연구실) ;
  • 김회린 (한국정보통신대학교 음성인식기술연구실) ;
  • 강점자 (한국전자통신연구원 음성처리연구팀) ;
  • 구명완 (KT 미래기술연구소) ;
  • 류창선 (KT 미래기술연구소 HCI연구담당 미디어처리연구부)
  • Published : 2006.12.30

Abstract

In this paper, we present several confidence measures (CM) for speech recognition systems to evaluate the reliability of recognition results. We propose heuristic CMs such as mean log-likelihood score, N-best word log-likelihood ratio, likelihood sequence fluctuation and likelihood ratio testing(LRT)-based CMs using several types of anti-models. Furthermore, we propose new algorithms to add weighting terms on phone-level log-likelihood ratio to merge word-level log-likelihood ratios. These weighting terms are computed from the distance between acoustic models and knowledge-based phoneme classifications. LRT-based CMs show better performance than heuristic CMs excessively, and LRT-based CMs using phonetic information show that the relative reduction in equal error rate ranges between $8{\sim}13%$ compared to the baseline LRT-based CMs. We use the support vector machine to fuse several CMs and improve the performance of utterance verification. From our experiments, we know that selection of CMs with low correlation is more effective than CMs with high correlation.

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