The need to accurately estimate the speed of road vehicles is becoming increasingly important for at least two main reasons. First, the number of speed cameras installed worldwide has been growing in recent years, as the introduction and enforcement of appropriate speed limits is considered one of the most effective means to increase the road safety. Second, traffic monitoring and forecasting in road networks plays a fundamental role to enhance traffic, emissions and energy consumption in smart cities, being the speed of the vehicles one of the most relevant parameters of the traffic state. Among the technologies available for the accurate detection of vehicle speed, the use of vision-based systems brings great challenges to be solved, but also great potential advantages, such as the drastic reduction of costs due to the absence of expensive range sensors, and the possibility of identifying vehicles accurately. This paper provides a review of vision-based vehicle speed estimation. We describe the terminology, the application domains, and propose a complete taxonomy of a large selection of works that categorizes all stages involved. An overview of performance evaluation metrics and available datasets is provided. Finally, we discuss current limitations and future directions.
翻译:准确估计公路车辆速度的必要性由于至少两个主要原因变得越来越重要。首先,近年来,全世界安装的高速摄像头数量不断增加,因为采用和执行适当的速度限制被认为是提高道路安全的最有效手段之一;其次,公路网络中的交通监测和预测对提高智能城市的交通、排放和能源消耗起着根本作用,因为车辆的速度是交通状态最相关的参数之一。在准确探测车辆速度的现有技术中,使用视像系统带来了巨大的挑战,但也有巨大的潜在优势,如由于缺少昂贵的射程传感器而大幅降低成本,以及准确识别车辆的可能性。本文审查了基于愿景的车辆速度估计。我们描述了术语、应用领域,并提出了对所有阶段进行分类的大量工程的完整分类。提供了业绩评价指标和现有数据集的概览。最后,我们讨论了目前的局限性和今后的方向。