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Journal Dynamics of Complex Systems - XXI century №2 for 2020 г.
Article in number:
Representation of the image blur function as an informative parameter of the state and behavior of the analyzed object
DOI: 10.18127/j19997493-202002-02
UDC: 004.93, 537.75, 623.618
Authors:

D.A. Loktev – Ph.D. (Eng.), Associate Professor, 

Department “Information Systems and Telecommunications”, Bauman Moscow State Technical University

E-mail: loktevdan@bmstu.ru

V.A. Kochnev − Ph.D. (Eng.), 

Department “Transport construction”, Russian University of Transport (Moscow)

E-mail: nttmag@mail.ru

A.A. Loktev − Ph.D. (Eng.), Professor, Head of the Department “Transport construction”, 

Russian University of Transport (Moscow)

E-mail: aaloktev@yandex.ru

Abstract:

This research is devoted to the development of a model of the object image blurring function on an image that represents primary information for processing in an automated monitoring and control system in order to detect, recognize and detect parameters of moving and stationary objects. The presented model is based on two different aspects that represent the nature of the appearance and influence of the indistinctness of their contours on the displayed images. It is taken into account that blurring can both limit the capabilities of monitoring and control systems, causing various errors when detecting and recognizing an object, and provide the ability to determine parameters of its state and behavior. The proposed mathematical model of blurring takes into account seven main factors: the parameters of the environment from the monitoring system to the object under study; the dependence of blurring on color; features of movement of elements of the detection system; the state of the background; settings of detection tools; primary processing of the object image; the state and behavior of the object under study. The blur function allows you to determine the minimum distance between detected objects, the maximum speed of movement of objects for their recognition, and the parameters of photo and video detectors necessary for working in an automated system for remote monitoring and control in real conditions, taking into account external factors and the nature of the behavior of the diagnostic object. The proposed model of image blurring will allow us to develop mathematical and algorithmic software that allows us to increase the probability of detecting, recognizing and detecting parameters of control objects in remote monitoring systems.

Pages: 16-27
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Date of receipt: 5 мая 2020 г.