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TRAFFIC CONGESTION PARAMETER ESTIMATION IN TIME SERIES OF AIRBORNE OPTICAL REMOTE SENSING IMAGES

机译:空中光学遥感图像的时间序列交通拥堵参数估计

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In this paper we propose a new model based traffic parameter estimation approach in congested situations in time series of airborne optical remote sensing data. The proposed approach is based on the combination of various techniques: change detection, image processing and incorporation of a priori information such as road network, information about vehicles and roads and finally a traffic model. The change detection in two images with a short time lag of several seconds is implemented using the multivariate alteration detection method resulting in a change image where the moving vehicles on the roads are highlighted. Further, image processing techniques are applied to derive the vehicle density in the binarized change image. Finally, this estimated vehicle density is related to the vehicle density, acquired by modelling the traffic flow for a road segment. The model is derived from a priori information about the vehicle sizes and road parameters, the road network and the spacing between the vehicles. Then, the modelled vehicle density is directly related to the average vehicle velocity on the road segment and thus the information about the traffic situation can be derived. To confirm our idea and to validate the method several flight campaigns with the DLR airborne experimental wide angle optical 3K digital camera system operated on a Do-228 aircraft were performed. Experiments are performed to analyse the performance of the proposed traffic parameter estimation method for highways and main streets in the cities. The estimated velocity profiles coincide qualitatively and quantitatively quite well with the reference measurements.
机译:在本文中,我们提出了一个新的基于模型的交通参数估计在拥挤的情况下,在时间序列航天光学遥感数据的方法。所提出的方法是基于各种技术的组合:变化检测,图像处理和先验信息掺入诸如道路网络,约车辆和道路和最后一个流量模型的信息。在两个图像的几秒钟短的时间滞后的变化检测是使用所得的在道路上的行驶中的车辆被突出显示的改变图像多元改变检测方法来实现。另外,图像处理技术被应用以得到二进制化的变化图像中的车辆的密度。最后,这个估计的车辆密度与车辆密度,由路段交通流建模收购。该模型是从关于车辆尺寸和道路参数,道路网络和车辆之间的间距的先验信息的。然后,建模车辆密度直接相关,在所述道路段的平均车辆速度,从而可以导出关于交通状况的信息。为了证实我们的想法,并验证与进行了机载试验广角光学3K数码相机系统的一个Do-228飞机运行的DLR方法几个飞行活动。试验的目的就是分析在城市公路和主要街道的交通提出了参数估计方法的性能。所估计的速度分布的定性和定量相当好重合与基准测量值。

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