Computer Vision has played a major role in Intelligent Transportation Systems (ITS) and traffic surveillance. Along with the rapidly growing automated vehicles and crowded cities, the automated and advanced traffic management systems (ATMS) using video surveillance infrastructures have been evolved by the implementation of Deep Neural Networks. In this research, we provide a practical platform for real-time traffic monitoring, including 3D vehicle/pedestrian detection, speed detection, trajectory estimation, congestion detection, as well as monitoring the interaction of vehicles and pedestrians, all using a single CCTV traffic camera. We adapt a custom YOLOv5 deep neural network model for vehicle/pedestrian detection and an enhanced SORT tracking algorithm. For the first time, a hybrid satellite-ground based inverse perspective mapping (SG-IPM) method for camera auto-calibration is also developed which leads to an accurate 3D object detection and visualisation. We also develop a hierarchical traffic modelling solution based on short- and long-term temporal video data stream to understand the traffic flow, bottlenecks, and risky spots for vulnerable road users. Several experiments on real-world scenarios and comparisons with state-of-the-art are conducted using various traffic monitoring datasets, including MIO-TCD, UA-DETRAC and GRAM-RTM collected from highways, intersections, and urban areas under different lighting and weather conditions.
翻译:在智能交通系统和交通监视方面,计算机愿景在智能交通系统和交通监视方面发挥了主要作用;与快速增长的自动化车辆和拥挤城市一道,通过实施深神经网络,开发了使用视频监视基础设施的自动化和先进的交通管理系统;在这项研究中,我们为实时交通监测提供了一个实用平台,包括3D车辆/行距探测、速度探测、轨迹估计、交通堵塞探测,以及监测车辆和行人之间的互动,所有这些都使用单一闭路电视交通摄像机;我们调整了一种定制的YOLOv5深神经网络模型,用于车辆/行距探测和强化的SORT跟踪算法;第一次,还开发了基于反视角的混合卫星地面图像自动校正(SG-IPM)方法,用于对3D物体进行准确的探测和可视化;我们还开发了基于短期和长期时间视频数据流的分级交通建模解决方案,以了解交通流量、瓶颈和脆弱道路使用者的风险点。