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Determination of a Similar Anatomical Area on a Chest CT Image Using Traditional Image Feature Extraction Methods

https://doi.org/10.35596/1729-7648-2022-20-5-48-56

Abstract

The traditional image descriptor definition algorithms are considered, such as SIFT, ORB, LBP, GLSM. With the help of them, the searching task for a similar anatomical area on the CT images of the lungs is solved. The article proposes a methodology for performing a comparative traditional algorithms for determining images descriptors analysis and optimal anatomical features. Algorithms are tested when searching for a similar anatomical layer in the framework of the computer tomography images layers of of light patient, as part of the search for similar anatomical form on the layer among the computer tomography images of light two patients, and among the images of computed tomography of light hundred patients. As a result, it is determined that GLSM shows the best results when solving the task of classifying an image anatomical area (averaged error of determining the anatomical layer is 5 %). It is determined that the optimal signs on the lungs correspond to the presence of organs: heart, liver and top edge of the lung. Conclusions are fomulated about the need to use neural network methods to improve the error in determining the similar layer containing the necessary anatomical structure.

 

About the Authors

A. A. Kosareva
Belarusian State University of Informatics and Radioelectronics
Belarus

Kosareva Alexandra Andreevna, Postgraduate, Assistant at the Electronic Engineering and Technology Department

220013, Republic of Belarus, Minsk, P. Brovka St., 6,
tel. +375-17- 293-88-60;



P. V. Kamlach
Belarusian State University of Informatics and Radioelectronics
Belarus

Kamlach Pavel V., Cand. of Sci., Deputy Dean of the Faculty of Computer Design, Associate Professor at the Electronic Engineering and Technology Department 

220013, Republic of Belarus, Minsk, P. Brovka St., 6,



V. A. Kovalev
United Institute of Informatics of the National Academy of Sciences of Belarus
Belarus

Kovalev Vassili A., Cand. of Sci., Head of the Biomedical Image Analysis Group

Minsk



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For citations:


Kosareva A.A., Kamlach P.V., Kovalev V.A. Determination of a Similar Anatomical Area on a Chest CT Image Using Traditional Image Feature Extraction Methods. Doklady BGUIR. 2022;20(5):48-56. (In Russ.) https://doi.org/10.35596/1729-7648-2022-20-5-48-56

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ISSN 1729-7648 (Print)
ISSN 2708-0382 (Online)