Affiliation:
1. College of Information Science and Technology, Nanjing Forestry University, 159 Longpan Road, Nanjing 210037, China
2. School of Foreign Studies, China University of Political Science and Law, 25 West Tu Cheng Road, Haidian District, Beijing 100088, China
Abstract
Traffic light detection and recognition are crucial for enhancing the security of unmanned systems. This study proposes a YOLOv5-based traffic light-detection algorithm to tackle the challenges posed by small targets and complex urban backgrounds. Initially, the Mosaic-9 method is employed to enhance the training dataset, thereby boosting the network’s ability to generalize and adapt to real-world scenarios. Furthermore, the Squeeze-and-Excitation (SE) attention mechanism is incorporated to improve the network. Moreover, the YOLOv5 algorithm’s loss function is optimized by substituting it with Efficient Intersection over Union loss (EIoU_loss), which addresses issues like missed detection and false alarms. Experimental results demonstrate that the model trained with this enhanced network achieves an mAP (mean average precision) of 99.4% on a custom dataset, which is 6.3% higher than that of the original YOLOv5, while maintaining a detection speed of 74 f/s. Therefore, this algorithm offers higher detection accuracy and effectively meets real-time operational requirements. The proposed method has a strong application potential, and can be widely used in the field of automatic driving, assisted driving, etc. Its application is not only of great significance in improving the accuracy and speed of traffic sign detection, but also can provide technical support for the development of intelligent transportation systems.
Funder
Postgraduate Research & Practice Innovation Program of Jiangsu Province
college student innovation and entrepreneurship training program of Jiangsu Province
Reference24 articles.
1. Modular Learning: Agile Development of Robust Traffic Sign Recognition;Lin;IEEE Trans. Intell. Veh.,2024
2. An Improved Traffic Sign Detection and Recognition Deep Model Based on YOLOv5;Wang;IEEE Access,2023
3. Vehicle-Mounted Adaptive Traffic Sign Detector for Small-Sized Signs in Multiple Working Conditions;Wang;IEEE Trans. Intell. Transp. Syst.,2024
4. Dharnesh, K., Prramoth, M.M., Sivabalan, M.A., and Sivraj, P. (2023, January 8–10). Performance Comparison of Road Traffic Sign Recognition System Based on CNN and Yolov5. Proceedings of the 2023 Innovations in Power and Advanced Computing Technologies (i-PACT), Kuala Lumpur, Malaysia.
5. An improved feature point extraction algorithm for field navigation;Chen;J. Guangxi Univ. Technol.,2018