Andrés Muñoz, Raquel Martínez-España, Gabriel Guerrero-Contreras, Sara Balderas-Díaz, A. Bueno-Crespo
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引用次数: 0
摘要
道路交通事故的管理是许多国家政府面临的一个问题。通常情况下,道路运营商都有监控此类事故的基础设施,尽管是以一种被动的方式。在西班牙,主要道路上有交通摄像头来检查可能发生的事故,但事故通知速度很慢,而且不是自动化的。作为一种替代方案,本文提出了一种自动实时交通警报系统。因此,部署在西班牙主要道路上的Dirección General de Tráfico (DGT)的1500个摄像头图像每4分钟被实时分析一次。这些图像没有经过预处理,它们有不同的质量,也会受到天气条件的影响,如雾、雨、太阳反射等。该系统使用了几个深度学习分类模型,这些模型是在一个众所周知的交通图像数据集上训练的,包括流动交通、密集交通、事故和火灾。这些模型用于实时对DGT图像进行分类,在检测流动交通和密集交通方面都取得了满意的初步结果。
A real-time traffic alert system based on image recognition: A case of study in Spain
The management of road traffic incidents is a problem faced by governments in many countries. Normally, road operators have the infrastructure in place to monitor such incidents, albeit in a reactive manner. In Spain, there are traffic cameras on major roads to check for possible incidents, however, incident notification is slow and not automated. As an alternative, this paper proposes a system for automatic real-time traffic alerts. Thus, 1,500 camera images from the Dirección General de Tráfico (DGT) deployed on the main Spanish roads are analyzed in real time every 4 minutes. These images are not preprocessed, they have different qualities and are also affected by weather conditions such as fog, rain, sun reflections, etc. The system uses several Deep Learning classification models trained on a well-known dataset of traffic images including flowing traffic, dense traffic, accidents and fires. These models are used to classify the DGT images in real time, with satisfactory initial results, detecting both flowing traffic and dense traffic.