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首页> 外文期刊>EURASIP journal on image and video processing >Real-time car tracking system based on surveillance videos
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Real-time car tracking system based on surveillance videos

机译:基于监视视频的实时汽车跟踪系统

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Abstract As a variety of video surveillance devices such as CCTV, drones, and car dashboard cameras have become popular, numerous studies have been conducted regarding the effective enforcement of security and surveillance based on video analysis. In particular, in car-related surveillance, car tracking is the most challenging task. One early approach to accomplish such a task was to analyze frames from different video sources separately. Considering the shooting range of the bulk of video devices, the outcome from the analysis of single video source is highly limited. To obtain more comprehensive information for car tacking, a set of video sources should be considered together and the relevant information should be integrated according to spatial and temporal constraints. Therefore, in this study, we propose a real-time car tracking system based on surveillance videos from diverse devices including CCTV, dashboard cameras, and drones. For scalability and fault tolerance, our system is built on a distributed processing framework and comprises a Frame Distributor, a Feature Extractor, and an Information Manager. The Frame Distributor is responsible for distributing the video frames from various devices to the processing nodes. The Feature Extractor extracts principal vehicle features such as plate number, location, and time from each frame. The Information Manager stores all the features into a database and handles user requests by collecting relevant information from the feature database. To illustrate the effectiveness of our proposed system, we implemented a prototype system and performed a number of experiments. We report some of the results.
机译:摘要作为中央电视台,无人机和汽车仪表板相机等各种视频监控装置变得流行,已经有助于基于视频分析的安全和监督的有效执行。特别是在与汽车有关的监视中,汽车跟踪是最具挑战性的任务。完成此类任务的早期方法是分别分析不同视频源的帧。考虑到批量视频设备的拍摄范围,从单个视频源分析的结果非常有限。为了获得更全面的汽车加密信息,应将一组视频来源一起考虑,并且应根据空间和时间约束来整合相关信息。因此,在本研究中,我们提出了一种基于来自不同设备的监视视频的实时车跟踪系统,包括CCTV,仪表板相机和无人机。为了可伸缩性和容错,我们的系统基于分布式处理框架构建,包括帧分发器,特征提取器和信息管理器。帧分配器负责将来自各种设备的视频帧分发到处理节点。该特征提取器从每个帧中提取诸如板号,位置和时间的主车辆特征。信息管理器将所有功能存储到数据库中,并通过从功能数据库收集相关信息来处理用户请求。为了说明我们所提出的系统的有效性,我们实现了一种原型系统并进行了许多实验。我们报告了一些结果。

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