Improving Speaker Diarization using Semantic Information: Joint Pairwise
Constraints Propagation
- URL: http://arxiv.org/abs/2309.10456v2
- Date: Sun, 4 Feb 2024 06:05:06 GMT
- Title: Improving Speaker Diarization using Semantic Information: Joint Pairwise
Constraints Propagation
- Authors: Luyao Cheng, Siqi Zheng, Qinglin Zhang, Hui Wang, Yafeng Chen, Qian
Chen, Shiliang Zhang
- Abstract summary: We propose a novel approach to leverage semantic information in speaker diarization systems.
We introduce spoken language understanding modules to extract speaker-related semantic information.
We present a novel framework to integrate these constraints into the speaker diarization pipeline.
- Score: 53.01238689626378
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Speaker diarization has gained considerable attention within speech
processing research community. Mainstream speaker diarization rely primarily on
speakers' voice characteristics extracted from acoustic signals and often
overlook the potential of semantic information. Considering the fact that
speech signals can efficiently convey the content of a speech, it is of our
interest to fully exploit these semantic cues utilizing language models. In
this work we propose a novel approach to effectively leverage semantic
information in clustering-based speaker diarization systems. Firstly, we
introduce spoken language understanding modules to extract speaker-related
semantic information and utilize these information to construct pairwise
constraints. Secondly, we present a novel framework to integrate these
constraints into the speaker diarization pipeline, enhancing the performance of
the entire system. Extensive experiments conducted on the public dataset
demonstrate the consistent superiority of our proposed approach over
acoustic-only speaker diarization systems.
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