This paper explores Deep Learning (DL) methods that are used or have the potential to be used for traffic video analysis, emphasizing driving safety for both Autonomous Vehicles (AVs) and human-operated vehicles. We present a typical processing pipeline, which can be used to understand and interpret traffic videos by extracting operational safety metrics and providing general hints and guidelines to improve traffic safety. This processing framework includes several steps, including video enhancement, video stabilization, semantic and incident segmentation, object detection and classification, trajectory extraction, speed estimation, event analysis, modeling and anomaly detection. Our main goal is to guide traffic analysts to develop their own custom-built processing frameworks by selecting the best choices for each step and offering new designs for the lacking modules by providing a comparative analysis of the most successful conventional and DL-based algorithms proposed for each step. We also review existing open-source tools and public datasets that can help train DL models. To be more specific, we review exemplary traffic problems and mentioned requires steps for each problem. Besides, we investigate connections to the closely related research areas of drivers' cognition evaluation, Crowd-sourcing-based monitoring systems, Edge Computing in roadside infrastructures, Automated Driving Systems (ADS)-equipped vehicles, and highlight the missing gaps. Finally, we review commercial implementations of traffic monitoring systems, their future outlook, and open problems and remaining challenges for widespread use of such systems.
翻译:本文探讨了用于或有可能用于交通视频分析的深层学习(DL)方法,强调自治车辆和人操作车辆的驾驶安全,强调机动车辆和人操作车辆的驾驶安全,我们提出了一个典型的处理管道,可以通过提取操作安全指标和提供一般提示和指导方针来理解和解释交通视频,以改进交通安全,这一处理框架包括若干步骤,包括视频增强、视频稳定、语义和事件分割、目标探测和分类、轨迹提取、速度估计、事件分析、建模和异常探测。我们的主要目标是指导交通分析师制定自己的定制处理框架,为每步选择最佳选择选择,并为缺少的模块提供新设计,方法是对每步最成功的常规和基于DL的算法进行比较分析。我们还审查现有的开放源工具和公共数据集,这些工具有助于培训DL模式。更具体地说,我们审查典型的交通问题,并提到每个问题都需要采取步骤。此外,我们调查与密切相关的司机认知系统、Crow-Brow-Brow-C-C-Systemission Stub-S-DRODS-DS-DRS-S-S-C-C-C-Supal-Supal-SupOLOLLs-Suplviews