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Road Pollution Estimation Using Static Cameras And Neural Networks

机译:使用静态摄像机和神经网络的道路污染估算

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This paper presents a methodology for estimating pollution on roads by analyzing traffic video sequences. The objective is to take advantage of the huge network of static cameras which is possible to lind in the road system of any state or country to estimate the pollution on each area. This proposal uses deep learning neural networks for the object detection, and a pollution estimation model based on the frequency of vehicles and their speed. The experiments show promising results which suggest that the system can be used alone or combined with existing systems for measuring pollution on roads.
机译:本文提出了一种通过分析交通视频序列估算道路污染的方法。目的是利用庞大的静态摄像机网络,可以将其安装在任何州或国家的道路系统中,以估计每个区域的污染。该提议使用深度学习神经网络进行目标检测,并使用基于车辆频率及其速度的污染评估模型。实验显示出令人鼓舞的结果,表明该系统可以单独使用,也可以与现有的系统结合使用以测量道路上的污染。

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