2024
DOI: 10.3390/app14041329
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Comparison of Modern Deep Learning Models for Speaker Verification

Vitalii Brydinskyi,
Yuriy Khoma,
Dmytro Sabodashko
et al.

Abstract: This research presents an extensive comparative analysis of a selection of popular deep speaker embedding models, namely WavLM, TitaNet, ECAPA, and PyAnnote, applied in speaker verification tasks. The study employs a specially curated dataset, specifically designed to mirror the real-world operating conditions of voice models as accurately as possible. This dataset includes short, non-English statements gathered from interviews on a popular online video platform. The dataset features a wide range of speakers, … Show more

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