Work place: Dept. of Applied Mathematics, Igor Sikorsky Kyiv Polytechnic Institute, Kyiv, Ukraine
E-mail: oleg.r.chertov@gmail.com
Website: https://orcid.org/0000-0003-0087-1028
Research Interests:
Biography
Prof. Dr. O. Chertov obtained his PhD in Engineering Sciences from Igor Sikorsky Kyiv Polytechnic Institute (Kyiv, Ukraine), and his DSc degree in Engineering Sciences from the Institute of Mathematical Machines and Systems Problems of the Ukrainian National Academy of Science.
He is a Professor in the Department of Applied Mathematics at the National Technical University of Ukraine “Igor Sikorsky Kyiv Polytechnic Institute”. Research interests: Data Mining & Machine Learning, Group Anonymity (Privacy-Preserving Data Mining & Publishing).
He was a University project coordinator for some projects: Volkswagen Foundation (2016-2018), Horizon2020 program (2015-2019), NATO Science for Peace and Security program (2017-2020), Erasmus Mundus Joint Masters (2024-2030). In 2016-2022, he was a Scientific Secretary of the Section “Informatics and Cybernetics” of the Scientific Council of the Ministry of Education and Science of Ukraine.
DOI: https://doi.org/10.5815/ijwmt.2026.03.15, Pub. Date: 8 Jun. 2026
Wavelet analysis has established itself as a robust and highly effective framework for the processing and characterization of non-stationary signals. While classical dyadic wavelet transforms are widely utilized due to their computational efficiency, non-dyadic (rational) wavelet transforms often provide a superior representation of signal singularities and complex oscillatory patterns. The proliferation of diverse wavelet functions necessitates a systematic approach to basis selection, which remains a critical task for maximizing feature extraction capabilities.
This paper investigates fundamental approaches for evaluating the efficiency of wavelet bases, focusing on criteria derived from the energy distribution of decomposition coefficients, the similarity between the wavelet coefficients and the original signal, and mutual information metrics. The applicability and mathematical robustness of these evaluation methods are specifically examined in the context of non-dyadic wavelet transforms. To validate the investigated methodologies, an additive two-harmonic test signal is employed, subjected to four distinct types of interference (additive white Gaussian, impulse, pink, and multiplicative noise) under varying signal-to-noise ratios. Finally, a comprehensive Composite Quality Index (CQI) is proposed. By aggregating the considered energetic and information-entropic characteristics, this index provides a reliable criterion for selecting the optimal non-dyadic wavelet basis for specific signal processing tasks.
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