交通场景中停车车辆的实时检测

A. Bevilacqua, Stefano Vaccari
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引用次数: 38

摘要

计算机视觉技术被广泛应用于交通监控系统(TMS)中,以自动获取交通流量的统计信息,并在重大事件时触发警报。该领域的研究包含了广泛的方法来识别运动物体并推断它们的行为。跟踪系统通常使用背景差分方法来重建运动目标的轨迹。运动检测或跟踪中的错误都会干扰用于构建轨迹的物体质心的位置。为了应对不可避免的误差,我们提出了一种通过识别短稳定区间来检测非运动中心的方法。这些进一步连接,以建立长稳定间隔,用于测量整体车辆停车时间。在AVSS 2007提供的序列上完成的大量实验也证明了我们测量最大停止延迟的方法的有效性,甚至通过与地面真实值的比较。
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Real time detection of stopped vehicles in traffic scenes
Computer vision techniques are widely employed in Traffic Monitoring Systems (TMS) to automatically derive statistical information on traffic flow and trigger alarms on significant events. Research in this field embraces a wide range of methods developed to recognize moving objects and to infer their behavior. Tracking systems are used to reconstruct trajectories of moving objects detected often by using background difference approaches. Errors in either motion detection or tracking can perturb the position of the object centroids used to build the trajectories. To cope with the unavoidable errors, we have conceived a method to detect centers of non-motion through recognizing short stability intervals. These are further connected to build the long stability interval used to measure the overall vehicle stopping time. Extensive experiments also accomplished on the sequences provided by AVSS 2007 prove the effectiveness of our approach to measure the maximum stopped delay, even through a comparison with the ground truth.
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