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Real-time visual detection and tracking system for traffic monitoring

机译:用于交通监控的实时视觉检测和跟踪系统

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摘要

Computer vision systems for traffic monitoring represent an essential tool for a broad range of traffic surveillance applications. Two of the most noteworthy challenges for these systems are the real-time operation with hundreds of vehicles and the total occlusions which hinder the tracking of the vehicles. In this paper, we present a traffic monitoring approach that deals with these two challenges based on three modules: detection, tracking and data association. First, vehicles are identified through a deep learning based detector. Second, tracking is performed with a combination of a Discriminative Correlation Filter and a Kalman Filter. This permits to estimate the tracking error in order to make tracking more robust and reliable. Finally, the data association through the Hungarian algorithm combines the information of the previous steps. The contributions are: (i) a real-time traffic monitoring system robust to occlusions that can process more than four hundred vehicles simultaneously; and (ii) the application of the system to anomaly detection in traffic and roundabout input/output analysis. The system has been evaluated with more than two thousand vehicles in real-life videos.
机译:用于交通监控的计算机视觉系统代表了广泛的交通监控应用的基本工具。这些系统最值得注意的两个挑战是对数百辆车辆的实时操作以及阻碍车辆跟踪的总遮挡。在本文中,我们提出了一种流量监控方法,它基于三个模块来应对这两个挑战:检测,跟踪和数据关联。首先,通过基于深度学习的检测器识别车辆。其次,结合使用鉴别相关滤波器和卡尔曼滤波器进行跟踪。这允许估计跟踪误差,以使跟踪更加鲁棒和可靠。最后,通过匈牙利算法的数据关联结合了先前步骤的信息。做出的贡献是:(i)实时交通监控系统,对阻塞具有鲁棒性,可以同时处理四百多辆车; (ii)将该系统应用于交通和回旋处输入/输出分析中的异常检测。该系统已通过超过2000辆真实视频的车辆进行了评估。

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