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Testing the object detection algorithm on the digital image

Authors: Levinskiy A.T., Rodionov I.D., Agaltsev S.S., Timofeev D.V.
Published in issue: #5(22)/2018
DOI: 10.18698/2541-8009-2018-5-310


Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing, Statistics

Keywords: algorithm, detection, object, digital image, coefficient, image processing, fragment, nuclei, descriptor
Published: 07.05.2018

The subject matter of this article is a detection algorithm alongside with the investigation and modernization of the algorithm for detecting several objects on the digital image. The target goal is achieved due to the application of the studied image scaling with the aid of finding the maximum points where the image has the utmost resemblance to the master image. We have undertaken the work to improve the algorithm for detecting the objects on the image. An option has been added in the program to set the dimensions of the images, the coefficient of the similarity between the images and the scaling coefficient.


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