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JOURNALS // Journal of the Belarusian State University. Mathematics and Informatics // Archive

Journal of the Belarusian State University. Mathematics and Informatics, 2023 Volume 3, Pages 72–81 (Mi bgumi670)

This article is cited in 2 papers

Theoretical foundations of computer science

Car parking detection in images by using a semi-supervised modified YOLOv5 model

Zh. Shuaiab, G. Mac, Ya. Weichenc, F. Zuod, S. V. Ablameykobe

a Luoyang Scorpio Information Technology Ltd., Luoyang 471000, Henan, China
b Belarusian State University, 4 Niezaliezhnasci Avenue, Minsk 220030, Belarus
c EarthView Image Inc., 11 Keyuan Road, Huzhou 313200, China
d Henan University, 85 Minglun Street, Kaifeng 475004, China
e United Institute of Informatics Problems, National Academy of Sciences of Belarus, 6 Surganava Street, Minsk 220012, Belarus

Abstract: The problem of car parking detection in images attracts the attention of many researchers. In this task, it is quite difficult to identify rectangular, continuous parking spaces in all kinds of city images under different weather conditions, combining the low-light environment and the system’s low cost with high detection accuracy. In this paper, we propose a modified version of the YOLOv5 model joined with semi-supervised learning that allows us to detect parking lots in any complex scene, independent of parking space lines and parking environments. Due to the combination of the nature of semi-supervised learning and the high accuracy of supervised learning models, the modified version of YOLOv5 model permits to use very little labeled data and a large amount of unlabeled data. It can significantly reduce training time while maintaining recognition accuracy. Compared with other neural network models, the modified version of YOLOv5 model has the characteristics of fast training speed, persistent operation, small model size, and high model precision and recall values.

Keywords: Car parking detection; semi-supervised learning; YOLOv5 neural network.

UDC: 004.93

Received: 11.01.2023
Revised: 21.11.2023
Accepted: 23.11.2023

Language: English



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