The application of Computer Vision (CV) techniques massively stimulates microscopic traffic safety analysis from the perspective of traffic conflicts and near misses, which is usually measured using Surrogate Safety Measures (SSM). However, as video processing and traffic safety modeling are two separate research domains and few research have focused on systematically bridging the gap between them, it is necessary to provide transportation researchers and practitioners with corresponding guidance. With this aim in mind, this paper focuses on reviewing the applications of CV techniques in traffic safety modeling using SSM and suggesting the best way forward. The CV algorithm that are used for vehicle detection and tracking from early approaches to the state-of-the-art models are summarized at a high level. Then, the video pre-processing and post-processing techniques for vehicle trajectory extraction are introduced. A detailed review of SSMs for vehicle trajectory data along with their application on traffic safety analysis is presented. Finally, practical issues in traffic video processing and SSM-based safety analysis are discussed, and the available or potential solutions are provided. This review is expected to assist transportation researchers and engineers with the selection of suitable CV techniques for video processing, and the usage of SSMs for various traffic safety research objectives.
翻译:应用计算机视觉(CV)技术,大规模刺激微观交通安全分析,从交通冲突和接近事故的角度进行测量,通常使用代理安全指标(SSM)进行。然而,由于视频处理和交通安全建模是两个不同的研究领域,很少有研究专注于系统地缩小它们之间的差距,因此有必要为交通研究人员和从业者提供相应的指导。为此,本文重点回顾了CV技术在交通安全建模中使用SSM的应用,并提出了最佳前进方向。首先在高层次上总结了用于车辆检测和跟踪的CV算法,从早期方法到最先进的模型。然后,引入了用于车辆轨迹提取的视频预处理和后处理技术。提供了车辆轨迹数据的SSM及其在交通安全分析中的应用的详细回顾。 最后,讨论了交通视频处理和基于SSM的安全分析中的实际问题,并提供了可用或潜在的解决方案。该回顾有望帮助交通研究员和工程师选择适合于视频处理的CV技术,并使用SSM实现各种交通安全研究目标。