Hierarchical and Networked Vehicle Surveillance in ITS: A Survey
Citations Over TimeTop 1% of 2016 papers
Abstract
Traffic surveillance has become an important topic in intelligent transportation systems (ITSs), which is aimed at monitoring and managing traffic flow. With the progress in computer vision, video-based surveillance systems have made great advances on traffic surveillance in ITSs. However, the performance of most existing surveillance systems is susceptible to challenging complex traffic scenes (e.g., object occlusion, pose variation, and cluttered background). Moreover, existing related research is mainly on a single video sensor node, which is incapable of addressing the surveillance of traffic road networks. Accordingly, we present a review of the literature on the video-based vehicle surveillance systems in ITSs. We analyze the existing challenges in video-based surveillance systems for the vehicle and present a general architecture for video surveillance systems, i.e., the hierarchical and networked vehicle surveillance, to survey the different existing and potential techniques. Then, different methods are reviewed and discussed with respect to each module. Applications and future developments are discussed to provide future needs of ITS services.
Related Papers
- → Out-of-Distribution Detection for LiDAR-based 3D Object Detection(2022)18 cited
- → Special issue on intelligent transportation systems, big data and intelligent technology(2016)20 cited
- → Pedestrian and Vehicle Detection Using the YOLO Framework and Multi-Model Approaches(2023)4 cited
- → Comparative Study on YOLOv2 Object Detection Based on Various Pretrained Networks(2023)1 cited
- A NEW LOOK AT HIGHWAY CAPACITY(1966)