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arxiv 1811.10761 v2 pith:XPNQYV62 submitted 2018-11-27 cs.CL

Speaker Diarization With Lexical Information

classification cs.CL
keywords speakerdiarizationinformationlexicalsystemembeddingsintegratemethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This work presents a novel approach to leverage lexical information for speaker diarization. We introduce a speaker diarization system that can directly integrate lexical as well as acoustic information into a speaker clustering process. Thus, we propose an adjacency matrix integration technique to integrate word level speaker turn probabilities with speaker embeddings in a comprehensive way. Our proposed method works without any reference transcript. Words, and word boundary information are provided by an ASR system. We show that our proposed method improves a baseline speaker diarization system solely based on speaker embeddings, achieving a meaningful improvement on the CALLHOME American English Speech dataset.

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