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THE CONCEPT OF A SOFTWARE AND HARDWARE COMPLEX FOR EARLY DETECTION OF FOREST FIRES

Abstract

This paper describes conceptual solution of software and hardware complex for early detection of forest fires based on Machine Vision and algorithms of image processing. the urgency of this work is a difficult situation in the field of combating such technological disasters as forest fires. This paper based on research of already existing platforms and systems. Problem of forest fires is one of the most significant problems of human race, interfaced with problems of ecology, politics and economics. One of the most effective methods of fighting fires is their earlier detection and stopping at the initial stages until the conflagration has become spontaneous nature

About the Author

Y. Kultyshev
Kazakh-British technological university
Kazakhstan


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Kultyshev Y. THE CONCEPT OF A SOFTWARE AND HARDWARE COMPLEX FOR EARLY DETECTION OF FOREST FIRES. Herald of the Kazakh-British technical university. 2020;17(4):161-170.

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ISSN 1998-6688 (Print)
ISSN 2959-8109 (Online)