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Journal Article 2025

EVALUATING THE EFFECTIVENESS OF A VOICE ACTIVITY DETECTOR BASED ON VARIOUS NEURAL NETWORKS.

Eastern-European Journal of Enterprise Technologies 133 (5) · Journal · 2025

DOI 10.15587/1729-4061.2025.321659

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6
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2025
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Аннотация

This paper considers the efficiency of neural networks for human voice recognition. The objects of the study are artificial neural networks used for human voice recognition. Their ability to effectively recognize a human voice regardless of language, trained on a small number of speakers in noisy conditions, has been considered. The task being solved is to enhance the accuracy of speech activity detection, which plays a significant role in improving the functioning of automatic speech recognition systems, especially under conditions of a low signal-to-noise ratio. The findings showed that the accuracy of human voice recognition in languages of different phonetic proximity could vary greatly. As a result of the study, it was found that the recurrent neural network (RNN) demonstrates high accuracy in voice recognition–95%, which exceeds the results of the convolutional neural network (CNN), reaching an accuracy of 94 …

Авторы

# ФИО Роль ORCID Сотрудник
1 Албанбай Нуртай Первый автор 0000-0002-3393-7380 Да
2 B Medetov Соавтор
3 A Zhetpisbayeva Соавтор
4 A Akhmediyarova Соавтор
5 A Nurlankyzy Соавтор
6 ... Соавтор

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Название: Eastern-European Journal of Enterprise Technologies 133 (5)

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