Road car image target detection and recognition based on YOLOv8 deep learning algorithm

Hao Wang, Zhengyu Li, Jianwei Li
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Abstract

In this paper, target detection of car images in roads is performed based on the YOLOv8 model of YOLO family of models, which improves the accuracy and generalisation of the target detection task by combining multi-scale prediction, CSPNet structure and optimisation techniques such as BoF and BoS. The input images contain five types of vehicles such as Ambulance, Bus, Car, Motorcycle and Truck, which are analysed and learnt to have a classification accuracy of 75.4% on Ambulance, 53.5% on Bus, 55.1% on Car, 51.1% on Motorcycle and 42.5% on Truck. Despite the gap in specific classification accuracy, the YOLOv8 model can detect 100% of vehicles on the road, demonstrating good target detection capability. This research is of great significance for improving road traffic safety, intelligent traffic management, and the development of future autonomous driving technology. By optimising the deep learning model to achieve more accurate and efficient vehicle target detection, it can help to improve road safety and traffic efficiency, and promote the progress of intelligent transportation systems.
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基于 YOLOv8 深度学习算法的道路汽车图像目标检测与识别
本文基于 YOLO 系列模型中的 YOLOv8 模型对道路中的汽车图像进行目标检测,该模型结合了多尺度预测、CSPNet 结构以及 BoF 和 BoS 等优化技术,提高了目标检测任务的准确性和泛化能力。输入图像包含救护车、公共汽车、汽车、摩托车和卡车等五种类型的车辆,经过分析和学习,救护车的分类准确率为 75.4%,公共汽车为 53.5%,汽车为 55.1%,摩托车为 51.1%,卡车为 42.5%。尽管在具体分类准确率上存在差距,但 YOLOv8 模型可以 100% 检测到道路上的车辆,显示了良好的目标检测能力。这项研究对提高道路交通安全、智能交通管理以及未来自动驾驶技术的发展具有重要意义。通过优化深度学习模型,实现更准确、更高效的车辆目标检测,有助于提高道路交通安全和交通效率,推动智能交通系统的进步。
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