In the face of complex road traffic scenes,intelligent,fast and accurate detection of road identifiers is of great significance to automatic driving technology.The YOLOv7 algorithm with fast detection speed and high accura-cy is suitable for real-time complex road identifier detection.In this paper,the YOLOv7 model is trained with the Chi-nese traffic sign detection dataset,and three different road traffic scene images,namely,ordinary,occluded and blurred,are selected to test the training model and compared and analyzed with three popular target detection algo-rithms,namely,CenterNet,Faster R-CNN and SSD.The results show that the YOLOv7 algorithm is fast in detection,has the highest average accuracy with 89.7%mAP,and has the best performance in the image tests of the three sce-narios,successfully detecting road marker targets in the images even in the presence of occlusion and blurring.
deep learningtarget detectionYOLOv7road identifier recognition