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Published in: Pattern Recognition and Image Analysis 4/2023

01-12-2023 | SCIENTIFIC SCHOOLS OF THE FEDERAL RESEARCH CENTER “COMPUTER SCIENCE AND CONTROL” OF THE RUSSIAN ACADEMY OF SCIENCES, MOSCOW, THE RUSSIAN FEDERATION

Recognition Methods in Academician Yu.I. Zhuravlev’s Scientific School

Authors: A. P. Vinogradov, A. G. D’yakonov, A. A. Dokukin, V. V. Ryazanov, O. V. Senko

Published in: Pattern Recognition and Image Analysis | Issue 4/2023

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Abstract

This review provides an overview of methods for solving recognition problems developed by the eminent Soviet and Russian academic and scientist, Yu.I. Zhuravlev, together with his students and those that followed him. Zhuravlev was the leader of a prominent scientific school associated with the widespread use of various combinatorial-logical and algebraic methods for in the development of methods for solving recognition tasks. The school’s contributions lie in formulating a universal mathematical lexicon for describing recognition algorithms and an algebraic toolkit tailored for the synthesis of effective algorithms for solving learning problems based on precedents. Within the framework of the scientific school, researchers have devised various recognition methodologies, which have been successfully used to solve numerous applied problems.

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Metadata
Title
Recognition Methods in Academician Yu.I. Zhuravlev’s Scientific School
Authors
A. P. Vinogradov
A. G. D’yakonov
A. A. Dokukin
V. V. Ryazanov
O. V. Senko
Publication date
01-12-2023
Publisher
Pleiades Publishing
Published in
Pattern Recognition and Image Analysis / Issue 4/2023
Print ISSN: 1054-6618
Electronic ISSN: 1555-6212
DOI
https://doi.org/10.1134/S1054661823040521

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SCIENTIFIC SCHOOL OF THE INSTITUTE OF MATHEMATICAL PROBLEMS OF BIOLOGY OF THE RUSSIAN ACADEMY OF SCIENCES–THE BRANCH OF KELDYSH INSTITUTE OF APPLIED MATHEMATICS OF RUSSIAN ACADEMY OF SCIENCES, PUSHCHINO, MOSCOW REGION, THE RUSSIAN FEDERATION

Spectral Methods in Data Analysis and Pattern Recognition Problems: Works of the Pushchino School

SCIENTIFIC SCHOOL OF ULYANOVSK STATE TECHNICAL UNIVERSITY, ULYANOVSK, THE RUSSIAN FEDERATION

Research Overview on Statistical Image Analysis Conducted at Ulyanovsk State Technical University

SCIENTIFIC SCHOOLS OF THE LOMONOSOV MOSCOW STATE UNIVERSITY (MSU), MOSCOW, THE RUSSIAN FEDERATION

Image Analysis and Enhancement: General Methods and Biomedical Applications

SCIENTIFIC SCHOOLS OF THE FEDERAL RESEARCH CENTER “COMPUTER SCIENCE AND CONTROL” OF THE RUSSIAN ACADEMY OF SCIENCES, MOSCOW, THE RUSSIAN FEDERATION

Advances of the Scientific School of V.L. Arlazarov in Dataset Creation and Training Sample Synthesis for Solving Modern Computer Vision Problems

SCIENTIFIC SCHOOL OF THE KOTELNIKOV INSTITUTE OF RADIO ENGINEERING AND ELECTRONICS OF THE RUSSIAN ACADEMY OF SCIENCES, MOSCOW, THE RUSSIAN FEDERATION

Magnetometric SQUID Systems and Magnetic Measurement Methods for Biomedical Research

SCIENTIFIC SCHOOLS OF THE FEDERAL RESEARCH CENTER “COMPUTER SCIENCE AND CONTROL” OF THE RUSSIAN ACADEMY OF SCIENCES, MOSCOW, THE RUSSIAN FEDERATION

Developing the Theory of Stochastic Canonic Expansions and Its Applications

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