Publication result detail

Speaker Diarization based on Bayesian HMM with Eigenvoice Priors

DIEZ SÁNCHEZ, M.; BURGET, L.; MATĚJKA, P.

Original Title

Speaker Diarization based on Bayesian HMM with Eigenvoice Priors

English Title

Speaker Diarization based on Bayesian HMM with Eigenvoice Priors

Type

Paper in proceedings (conference paper)

Original Abstract

Nowadays, most speaker diarization methods address thetask in two steps: segmentation of the input conversation into(preferably) speaker homogeneous segments, and clustering.Generally, different models and techniques are used for the twosteps. In this paper we present a very elegant approach where astraightforward and efficient Variational Bayes (VB) inferencein a single probabilistic model addresses the complete SD problem.Our model is a Bayesian Hidden Markov Model, in whichstates represent speaker specific distributions and transitions betweenstates represent speaker turns. As in the ivector or JFAmodels, speaker distributions are modeled by GMMs with parametersconstrained by eigenvoice priors. This allows to robustlyestimate the speaker models from very short speech segments.The model, which was released as open source codeand has already been used by several labs, is fully describedfor the first time in this paper. We present results and the systemis compared and combined with other state-of-the-art approaches.The model provides the best results reported so faron the CALLHOME dataset.

English abstract

Nowadays, most speaker diarization methods address thetask in two steps: segmentation of the input conversation into(preferably) speaker homogeneous segments, and clustering.Generally, different models and techniques are used for the twosteps. In this paper we present a very elegant approach where astraightforward and efficient Variational Bayes (VB) inferencein a single probabilistic model addresses the complete SD problem.Our model is a Bayesian Hidden Markov Model, in whichstates represent speaker specific distributions and transitions betweenstates represent speaker turns. As in the ivector or JFAmodels, speaker distributions are modeled by GMMs with parametersconstrained by eigenvoice priors. This allows to robustlyestimate the speaker models from very short speech segments.The model, which was released as open source codeand has already been used by several labs, is fully describedfor the first time in this paper. We present results and the systemis compared and combined with other state-of-the-art approaches.The model provides the best results reported so faron the CALLHOME dataset.

Keywords

Speaker diarization, speaker recognition

Key words in English

Speaker diarization, speaker recognition

Authors

DIEZ SÁNCHEZ, M.; BURGET, L.; MATĚJKA, P.

RIV year

2019

Released

26.06.2018

Publisher

International Speech Communication Association

Location

Les Sables d´Olonne

Book

Proceedings of Odyssey 2018

ISBN

2312-2846

Periodical

Proceedings of Odyssey: The Speaker and Language Recognition Workshop Odyssey 2014, Joensuu, Finland

Volume

2018

Number

6

State

Republic of Finland

Pages from

147

Pages to

154

Pages count

8

URL

BibTex

@inproceedings{BUT155067,
  author="Mireia {Diez Sánchez} and Lukáš {Burget} and Pavel {Matějka}",
  title="Speaker Diarization based on Bayesian HMM with Eigenvoice Priors",
  booktitle="Proceedings of Odyssey 2018",
  year="2018",
  journal="Proceedings of Odyssey: The Speaker and Language Recognition Workshop Odyssey 2014, Joensuu, Finland",
  volume="2018",
  number="6",
  pages="147--154",
  publisher="International Speech Communication Association",
  address="Les Sables d´Olonne",
  doi="10.21437/Odyssey.2018-21",
  issn="2312-2846",
  url="https://www.fit.vut.cz/research/publication/11786/"
}

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