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Automated Visual Information Processing Using Artificial Intelligence

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Abstract

The main provisions for solving the complex problem of efficiently processing visual information in an automated optronic ground-space monitoring system using artificial intelligence are presented. The basic relationships and statements of the formally developed body of mathematical tools for processing information in real-time mode are presented. This body of tools has been used for develo** the corresponding efficient information and mathematical support for automated optronic systems. The experimental results are presented.

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Correspondence to D. A. Gavrilov.

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Translated by S. Kuznetsov

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Gavrilov, D.A., Lovtsov, D.A. Automated Visual Information Processing Using Artificial Intelligence. Sci. Tech. Inf. Proc. 48, 436–445 (2021). https://doi.org/10.3103/S0147688221060034

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