Language Modelling for Speaker Diarization in Telephonic Interviews
- URL: http://arxiv.org/abs/2501.17893v1
- Date: Tue, 28 Jan 2025 18:18:04 GMT
- Title: Language Modelling for Speaker Diarization in Telephonic Interviews
- Authors: Miquel India, Javier Hernando, José A. R. Fonollosa,
- Abstract summary: Combination of acoustic features and linguistic content shows a 84.29% improvement in terms of a word-level DER.
The results of this study confirms that linguistic content can be efficiently used for some speaker recognition tasks.
- Score: 13.851959980488529
- License:
- Abstract: The aim of this paper is to investigate the benefit of combining both language and acoustic modelling for speaker diarization. Although conventional systems only use acoustic features, in some scenarios linguistic data contain high discriminative speaker information, even more reliable than the acoustic ones. In this study we analyze how an appropriate fusion of both kind of features is able to obtain good results in these cases. The proposed system is based on an iterative algorithm where a LSTM network is used as a speaker classifier. The network is fed with character-level word embeddings and a GMM based acoustic score created with the output labels from previous iterations. The presented algorithm has been evaluated in a Call-Center database, which is composed of telephone interview audios. The combination of acoustic features and linguistic content shows a 84.29% improvement in terms of a word-level DER as compared to a HMM/VB baseline system. The results of this study confirms that linguistic content can be efficiently used for some speaker recognition tasks.
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