Deep Learning Methods in Speaker Recognition: A Review

Authors

  • Dávid Sztahó
    Affiliation

    Department of Telecommunications and Media Informatics, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, H-1117 Budapest, Magyar tudósok körútja 2., Hungary

  • György Szaszák
    Affiliation

    Department of Telecommunications and Media Informatics, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, H-1117 Budapest, Magyar tudósok körútja 2., Hungary

  • András Beke
    Affiliation

    Department of Telecommunications and Media Informatics, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, H-1117 Budapest, Magyar tudósok körútja 2., Hungary

https://doi.org/10.3311/PPee.17024

Abstract

This paper reviews the applied Deep Learning (DL) practices in the field of Speaker Recognition (SR), both in verification and identification. Speaker Recognition has been a widely used topic of speech technology. Many research works have been carried out and little progress has been achieved in the past 5–6 years. However, as Deep Learning techniques do advance in most machine learning fields, the former state-of-the-art methods are getting replaced by them in Speaker Recognition too. It seems that Deep Learning becomes the now state-of-the-art solution for both Speaker Verification (SV) and identification. The standard x-vectors, additional to i-vectors, are used as baseline in most of the novel works. The increasing amount of gathered data opens up the territory to Deep Learning, where they are the most effective.

Keywords:

Speaker Recognition (SR), Speaker Verification (SV), Speaker Identification (SI), Deep Learning (DL), x-vector, i-vector, Deep Neural Networks (DNN)

Citation data from Crossref and Scopus

Published Online

2021-10-29

How to Cite

Sztahó, D., Szaszák, G., Beke, A. “Deep Learning Methods in Speaker Recognition: A Review”, Periodica Polytechnica Electrical Engineering and Computer Science, 65(4), pp. 310–328, 2021. https://doi.org/10.3311/PPee.17024

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Section

Articles