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Vehicle detection and tracking in wide field-of-view aerial video

机译:宽视野航拍视频中的车辆检测和跟踪

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This paper presents a joint probabilistic relation graph approach to simultaneously detect and track a large number of vehicles in low frame rate aerial videos. Due to low frame rate, low spatial resolution and sheer number of moving objects, detection and tracking in wide area video poses unique challenges. In this paper, we explore vehicle behavior model from road structure and generate a set of constraints to regulate both object based vertex matching and pairwise edge matching schemes. The proposed relation graph approach then unifies these two matching schemes into a single cost minimization framework to produce a quadratic optimized association result. The experiments on hours of real videos demonstrate the graph matching framework with vehicle behavior model effectively improves tracking performance in large scale dense traffic scenarios.
机译:本文提出了一种联合概率关系图方法,可以同时检测和跟踪低帧频航拍视频中的大量车辆。由于帧速率低,空间分辨率低以及运动对象的数量众多,因此在广域视频中进行检测和跟踪提出了独特的挑战。在本文中,我们从道路结构中探索了车辆行为模型,并生成了一组约束来调节基于对象的顶点匹配和成对边缘匹配方案。然后,所提出的关系图方法将这两个匹配方案统一为一个成本最小化框架,以产生二次优化的关联结果。真实视频小时数的实验表明,具有车辆行为模型的图形匹配框架可有效提高大规模密集交通场景下的跟踪性能。

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