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Tracking vehicles in congested traffic

机译:跟踪交通拥挤的车辆

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摘要

For the problem of tracking vehicles on freeways using machine vision, existing systems work well in free-flowing traffic. Traffic engineers, however, are more interested in monitoring freeways when there is congestion, and current systems break down for congested traffic due to the problem of partial occlusion. We are developing a feature-based tracking approach for the task of tracking vehicles under congestion. Instead of tracking entire vehicles, vehicle sub-features are tracked to make the system robust to partial occlusion. In order to group together sub-features that come from the same vehicle, the constraint of common motion is used. In this paper we describe the system and experiments of our tracker/grouper on several minutes of videotape.
机译:对于使用机器视觉进行高速公路跟踪车辆的问题,现有系统在自由流动的交通中运行良好。然而,当存在拥堵时,交通工程师对监控高速公路更感兴趣,并且由于部分闭塞问题,当前系统分解拥挤流量。我们正在开发一种基于特征的跟踪方法,用于在拥塞下跟踪车辆的任务。跟踪车辆子特征而不是跟踪整个车辆,以使系统稳健地闭塞。为了将来自同一车辆的子特征组合在一起,使用公共运动的约束。在本文中,我们在录像带几分钟内描述了我们的跟踪器/ Gouper的系统和实验。

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