SPLITTING THE CONTOUR OF AN IMAGE OF A GRAPHIC OBJECT INTO FRAGMENTS IN CLASSIFICATION TASKS
The article substantiates a method for recognizing graphic objects based on the analysis of image contours, including the extraction of special points and the use of skeletal representation of contours. Various approaches to contour analysis, such as topological and editorial features, are discussed, along with their advantages and disadvantages. Particular attention is given to the problems associated with the non-invariance of methods to affine transformations and the complexity of identifying key points. The possibility of contour segmentation to improve recognition accuracy is outlined, and mathematical methods, including differential equations, are proposed for determining reference points on the contour. The proposed method enables more accurate description and analysis of images, overcoming the limitations of existing approaches. The importance of further research in the field of pattern recognition to enhance the accuracy and efficiency of graphic object analysis is emphasized.
Titov A.I., Korsunov N.I., Shcherbinina N.V. Splitting the contour of an image of a graphic object into fragments in classification tasks // Research result. Information technologies. – T. 10, №1, 2025. – P. 16-23. DOI: 10.18413/2518-1092-2025-10-1-0-2
While nobody left any comments to this publication.
You can be first.
1. Chernogorova Yu.V. Pattern Recognition Methods / Yu.V. Chernogorova // Young Scientist. – 2016. – No. 28 (132). – P. 40-43.
2. Marr D. Theory of Edge Detection / D. Marr, E. Hildreth // Proceedings of the Royal Society of London, 1980. – No. 207(1167). – P. 187-217. DOI: 10.1098/rspb.1980.0020
3. Xie S. Holistically-Nested Edge Detection / S. Xie, Zh. Tu // International Conference on Computer Vision (ICCV). – 2015. – P. 1395–1403. DOI: 10.1109/ICCV.2015.164
4. Bakulina M.P. Residues and their applications to calculating integrals / M.P. Bakulina. – Novosibirsk state University. Novosibirsk, 2006. – 36 p.
5. Gudkov V.Yu. Skeletonization of binary images and allocation of special points for fingerprint recognition / V.Yu. Gudkov, D.A. Klyuev // Bulletin of SUSU. Series "Computer technologies, control, radio electronics. 2015. – Vol. 15. – No. 3. – P. 11-17.
6. Alekseev V.E. Graph theory / V.E. Alekseev, D.V. Zakharova. – Nizhny Novgorod: Nizhny Novgorod State University, 2017. – 119 p.
7. Canny J. A Computational Approach to Edge Detection / J. Canny // IEEE Transactions on Pattern Analysis and Machine Intelligence. – Vol. PAMI-8. – № 6. – 1986. – P. 679-698. DOI:10.1109/TPAMI.1986.4767851
8. Zalessky B.A. Combinatorial algorithm for detecting object contours in digital images / B.A. Zalessky // United Institute of Informatics Problems of the NAS of Belarus, Minsk. INFORMATICS. – 2013. – №3. – P. 13-20.
9. Titov A.I. Object Identification Method in Robot Vision Systems / A.I. Titov, N.I. Korsunov // Economics. Information technologies. – 2022. – Vol. 49. – № 4. – P: 782-787. DOI: 10.52575/2687-0932-2022-49-4-782-787.
10. Mingalev A.V., Agafonova R.R., Gabdullin I.M., Nikolaev A.V., Sarykov F.A., Shusharin S.N. 2018. The Russian Federation, on behalf of which the Federal State Budgetary Institution "Military Unit 68240" acts. Method for Recognizing Graphic Images of Objects. Patent No. 2672622 C1 RF, IPC G06K 9/48. No. 2017132646; Claimed 18.09.2017; Published 16.11.2018, Bulletin No. 32.