Verification of Speech Recognition Results Incorporating In-domain Confidence and Discourse Coherence Measures(Speech Recognition, <Special Section> Statistical Modeling for Speech Processing)
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概要
- 論文の詳細を見る
Conventional confidence measures for assessing the reliability of ASR (automatic speech recognition) output are typically derived from "low-level" information which is obtained during speech recognition decoding. In contrast to these approaches, we propose a novel utterance verification framework which incorporates "high-level" knowledge sources. Specifically, we investigate two application-independent measures: in-domain confidence, the degree of match between the input utterance and the application domain of the back-end system, and discourse coherence, the consistency between consecutive utterances in a dialogue session. A joint confidence score is generated by combining these two measures with an orthodox measure based on GPP (generalized posterior probability). The proposed framework was evaluated on an utterance verification task for spontaneous dialogue performed via a (English/Japanese) speech-to-speech translation system. Incorporating the two proposed measures significantly improved utterance verification accuracy compared to using GPP alone, realizing reductions in CER (confidence error-rate) of 11.4% and 8.1% for the English and Japanese sides, respectively. When negligible ASR errors (that do not affect translation) were ignored, further improvement was achieved for the English side, realizing a reduction in CER of up to 14.6% compared to the GPP case.
- 社団法人電子情報通信学会の論文
- 2006-03-01
著者
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Kawahara Tatsuya
Kyoto Univ. Kyoto‐shi Jpn
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Kawahara Tatsuya
The School Of Informatics Kyoto University
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Kawahara Tatsuya
The School Of Informatics Kyoto University:spoken Language Communication Research Laboratories Advan
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LANE Ian
the School of Informatics, Kyoto University
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Lane Ian
The School Of Informatics Kyoto University:spoken Language Communication Research Laboratories Advan
関連論文
- Verification of Speech Recognition Results Incorporating In-domain Confidence and Discourse Coherence Measures(Speech Recognition, Statistical Modeling for Speech Processing)
- Trigger-Based Language Model Adaptation for Automatic Transcription of Panel Discussions(Speech Recognition, Statistical Modeling for Speech Processing)
- Key-Phrase Detection and Verification for Flexible Speech Understanding