SING COMPUTER VISION ALGORITHMS TO IDENTIFY MOVING OBJECTS
https://doi.org/10.53360/2788-7995-2025-1(17)-6
Abstract
There are no universal algorithms for solving problems of recognizing moving objects by video surveillance systems. However, for different systems and in the case of different situations, only some specific algorithm is optimal, allowing for object recognition. This article analyzes the stability of intelligent algorithms that affect the quality of speech recognition and considers an integrated approach that integrates object detection, classification of people, and recognition of gender differences. The accumulated experience in the field of pattern recognition has allowed us to achieve high results in the creation of various devices and systems in medicine, in the industrial sector, in information processing systems and video surveillance. However, computer vision technologies and optical recognition of dynamic objects continue to be an extremely difficult part of scientific research due to the variety of video cameras and devices. As well as a wide range of applications, primarily for security purposes in crowded places, disorder detection, etc. This study presents the main tasks for developing a software system using computer vision and deep learning algorithms to identify and classify people in video streams, determine their number and determine their gender.
About the Authors
G. M. BaenovaL.N. Gumilyov Eurasian National University
Kazakhstan
Gulmira Musaevna Baenova – PhD, Senior Lecturer at the Department of Computer and Software Engineering
010000, Astana, Pushkin str., 11
K. S. Agadilova
L.N. Gumilyov Eurasian National University
Kazakhstan
Kalamkas Sairanovna Agadilova – 2nd year Master's student in the Computer Engineering and Software
010000, Astana, Pushkin str., 11
Sh. Zh. Seilov
L.N. Gumilyov Eurasian National University
Kazakhstan
Shakhmaran ursinbekovich Seilov – candidate of technical sciences, dean of the Faculty of Information Technologies
010000, Astana, Pushkin str., 11
N. Uzakkyzy
L.N. Gumilyov Eurasian National University
Kazakhstan
Nurgul Uzakkyzy – PhD, Senior Lecturer at the Department of Computer and Software Engineering
010000, Astana, Pushkin str., 11
References
1. Intellektual'nye sistemy videonablyudeniya [Ehlektronnyi resurs] – Rezhim dostupa: https://www.mascomvostok.ru/service/intellektualnye-sistemy-videonablyudeniya/ (Data obrashcheniya: 08.02.2025). (In Russian).
2. Chen K. Gender Classification Based on Deep Learning in Computer Vision / K. Chen, Y. Li, J. Wu // IEEE Access. – 2019. – № 7. – R. 117175-117184. (In English).
3. Karkkainen K. FairFace: Face Attribute Dataset for Balanced Race, Gender, and Age for Bias Measurement and Mitigation / K. Karkkainen, J. Joo // In Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision. – 2021 – R. 1548-1558. (In English).
4. Kolbasov S.YU., Orlov YU.K. Sravnenie ehffektivnosti obnaruzheniya ob"ektov sovremennykh svertochnykh neironnykh setei. [Ehlektronnyi resurs] – Rezhim dostupa: https://masters.donntu.ru/2020/fknt/kolbasov/library/article2.pdf (Data obrashcheniya: 03.03.2025). (In Russian).
5. LightCSPNet: A Lightweight Network for Image Classification and Objection Detection / S. Wang et al // International Journal of Computational Intelligence Systems. – 2023. – № 16(1). – R. 46. https://doi.org/10.1007/s44196-023-00226-5. (In English).
6. You Only Look Once: Unified Real-Time Object Detection / J. Redmon et al // In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR). – 2016. https://arxiv.org/abs/1506.02640. (In English).
7. Mahmood A. Human Detection Using CNN for Autonomous Systems / A. Mahmood, H. Liu, S. Wong // Journal of Robotics. – 2016. (In English).
8. Vasilescu M.A.O. Multilinear analysis of image ensembles: Tensor-Faces, in ECCV 2002 / M.A.O. Vasilescu, D. Terzopoulos // Proceedings of the 7th European Conference on Computer Vision. – 2002. – V. 2350 of Lecture Notes in Computer Science. – P. 447-460. (In English).
9. Nabor dannykh SOSO. [Ehlektronnyi resurs] – Rezhim dostupa: https://docs.ultralytics.com/ru/datasets/detect/coco/ (In Russian).
10. PyTorch torchvision COCO Dataset. [Ehlektronnyi resurs] – Rezhim dostupa: https://skine.ru/articles/338448/ (In English).
11. COCO Dataset: All You Need to Know to Get Started. [Ehlektronnyi resurs] – Rezhim dostupa: https://www.v7labs.com/blog/coco-dataset-guide. (In English).
Review
For citations:
Baenova G.M., Agadilova K.S., Seilov Sh.Zh., Uzakkyzy N. SING COMPUTER VISION ALGORITHMS TO IDENTIFY MOVING OBJECTS. Bulletin of Shakarim University. Technical Sciences. 2025;(1(17)):49-56. (In Russ.) https://doi.org/10.53360/2788-7995-2025-1(17)-6