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Vehicle detection in wide area aerial surveillance using Temporal Context

机译:使用时间上下文进行广域空中监视中的车辆检测

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Moving vehicle detection from wide area aerial surveillance is an important and challenging task, which can be aided by context information. In this paper, we present a Temporal Context(TC) which can capture the road information. In contrast with previous methods to exploit road information, TC does not need to get the location of the road first or to use the Geographical Information System's (GIS) information. We first use background subtraction to generate the candidates, then build TC based on the candidates that have been classified as positive by Histograms of Oriented Gradient(HOG) with Multiple Kernel Learning(MKL). For each positive candidate, a region around the candidate is divided into several subregions based on the direction of the candidate, then each subregion is divided into 12 bins with a fixed length; and finally the TC, a histogram, is built according to the positions of the positive candidates in 8 consecutive frames. In order to benefit from both the appearance and context information, we use MKL to combine TC and HOG. To evaluate the effect of TC, we use the publicly available CLIF 2006 dataset, and label the vehicles in 102 frames which are 2672 × 1200 subregions that contain expressway of the original 2672 × 4008 images. The experiments demonstrate that the proposed TC is useful to remove the false positives that are away from the road, and the combination of TC and HOG with MKL outperforms the use of TC or HOG only.
机译:从广域空中监视中检测移动车辆是一项重要且具有挑战性的任务,这可以借助上下文信息来辅助。在本文中,我们提出了可以捕获道路信息的时间上下文(TC)。与以前的利用道路信息的方法相比,TC不需要先获取道路的位置或使用地理信息系统(GIS)的信息。我们首先使用背景减法来生成候选者,然后基于通过多核学习(MKL)的定向梯度直方图(HOG)被归类为阳性的候选者来构建TC。对于每个阳性候选对象,根据候选对象的方向将候选对象周围的区域划分为几个子区域,然后将每个子区域划分为12个固定长度的bin。最后根据连续8帧中阳性候选者的位置建立TC(直方图)。为了从外观和上下文信息中受益,我们使用MKL组合TC和HOG。为了评估TC的效果,我们使用了公开的CLIF 2006数据集,并在102帧中标记了车辆,这些帧是2672×1200子区域,其中包含原始2672×4008图像的高速公路。实验表明,提出的TC可用于消除远离道路的误报,并且TC和HOG与MKL的结合优于仅使用TC或HOG。

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