SPEAKER RECOGNITION BASED ON THE PLDA MODEL IN INTELLIGENT SPEECH PROCESSING SYSTEMS

Received: 2026-07-16 12:14:38

Published: 2026-04-18

Abstract

This article examines the issues of speaker recognition within intelligent speech processing systems. It analyzes the process of extracting and comparing individual speaker characteristics based on modern speech processing techniques. The study highlights effective methods for speaker recognition using the PLDA model, demonstrating its applicability under various conditions and its advantages in conserving computational resources.

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About the Authors

Shukurov Kamoliddin
Khasanov Umidjon

License

How to Cite

[1]
Shukurov Kamoliddin and Khasanov Umidjon trans. 2026. SPEAKER RECOGNITION BASED ON THE PLDA MODEL IN INTELLIGENT SPEECH PROCESSING SYSTEMS. Uzbekistan Open Conference. 1 (Apr. 2026), 362–366. DOI:https://doi.org/10.57033/.

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