THE METHOD OF FORMING THE REFERENCE IMAGE OF A BRIGHT OBJECT

Authors

  • T. Shipova
  • G. Zubritsky
  • V. Kirvas

DOI:

https://doi.org/10.26906/SUNZ.2019.4.114

Keywords:

reference image, current image, brightness, maximum likelihood criterion, linear quasi-order ratio

Abstract

In article problems of forming of a standard image for an object are considered. At an object on images brightness variations are possible. The majority of the existing methods do not conform to requirements. At great values of a signal-to-noise ratio. On the probability of the correct recognition of the image. The purpose of article is a development of a method of forming of a standard image of a bright object. Which is based on the choice of its optimum numerical representation. What most corresponds to the current image. Results of researches. In the presented method at each stage of comparison of a standard image with fragments of the current image it is offered to synthesize optimum numerical representation of a standard image, saves the order relation on its elements. Statistical tests were carried out. The comparative assessment of probability is carried out. It is studied, the object offered and normal square differential algorithms will how correctly be recognized. Conclusion. At high values of the signal-to-noise ratio, the proposed algorithm significantly exceeds the standard algorithm in the probability of correct image recognition.

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Published

2019-09-11