Leveraging speaker diarization for meeting recognition from distant microphones

Acoustics Speech and Signal Processing(2010)

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摘要
We investigate using state-of-the-art speaker diarization output for speech recognition purposes. While it seems obvious that speech recognition could benefit from the output of speaker diarization (“Who spoke when”) for effective feature normalization and model adaptation, such benefits have remained elusive in the very challenging domain of meeting recognition from distant microphones. In this study, we show that recognition gains are possible by careful post-processing of the diarization output. Still, recognition accuracy may suffer when the underlying diarization system performs worse than expected, even compared to far less sophisticated speaker-clustering techniques. We obtain a more accurate and robust overall system by combining recognition output with multiple speaker segmentations and clusterings. We evaluate our methods on data from the 2009 NIST Rich Transcription meeting recognition evaluation.
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关键词
microphones,pattern clustering,speaker recognition,speech processing,NIST Rich Transcription meeting recognition evaluation,feature normalization,microphone,model adaptation,multiple speaker clustering,multiple speaker segmentation,speaker diarization,speech recognition,meeting recognition,rich transcription,speaker diarization,speech processing,system combination,
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