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Real-Time Vowel Detection with Guaranteed Reliability

  • THEORY AND METHODS OF SIGNAL PROCESSING
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Abstract

The article proposes a new algorithm for solving the problem of real-time detection of vowel speech sounds based on (R + 1)-element information and the whitening filter method. An example of practical application of the algorithm is described and an assessment of its efficiency is provided. A full-scale experiment is conducted; its results indicate that the proposed algorithm demonstrates a sufficiently high speed and a guaranteed significance level of decisions with minimal performance requirements to the computing equipment.

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Notes

  1. The program is currently available in open access at the URL https://sites.google.com/site/frompldcreators/produkty-1/ phonemetraining.

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Funding

This research was supported by the Russian Science Foundation (project no. 20-71-10010).

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Correspondence to A. V. Savchenko or V. V. Savchenko.

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Translated by A. Ovchinnikova

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Savchenko, A.V., Savchenko, V.V. Real-Time Vowel Detection with Guaranteed Reliability. J. Commun. Technol. Electron. 67, 273–280 (2022). https://doi.org/10.1134/S1064226922030135

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