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Highway Vehicle Counting in Compressed Domain

机译:压缩域中的公路车辆计数

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This paper presents a highway vehicle counting method in compressed domain, aiming at achieving acceptable estimation performance approaching the pixel-domain methods. Such a task essentially is challenging because the available information (e.g. motion vector) to describe vehicles in videos is quite limited and inaccurate, and the vehicle count in realistic traffic scenes always varies greatly. To tackle this issue, we first develop a batch of low-level features, which can be extracted from the encoding metadata of videos, to mitigate the informational insufficiency of compressed videos. Then we propose a Hierarchical Classification based Regression (HCR) model to estimate the vehicle count from features. HCR hierarchically divides the traffic scenes into different cases according to vehicle density, such that the broad-variation characteristics of traffic scenes can be better approximated. Finally, we evaluated the proposed method on the real highway surveillance videos. The results show that our method is very competitive to the pixel-domain methods, which can reach similar performance along with its lower complexity.
机译:本文提出了一种压缩域的公路车辆计数方法,旨在达到接近像素域方法的可接受的估计性能。这种任务本质上具有挑战性,因为用于描述视频中的车辆的可用信息(例如运动矢量)非常有限且不准确,并且现实交通场景中的车辆数量总是变化很大。为了解决这个问题,我们首先开发了一批低级功能,可以从视频的编码元数据中提取这些功能,以减轻压缩视频的信息不足。然后,我们提出了一种基于层次分类的回归(HCR)模型,以根据特征估算车辆数量。 HCR根据车辆密度将交通场景分层划分为不同的情况,从而可以更好地近似交通场景的大范围变化特征。最后,我们在真实的公路监控视频上评估了所提出的方法。结果表明,与像素域方法相比,我们的方法具有很强的竞争力,像素域方法具有较低的复杂度,并且可以达到相似的性能。

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