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Traffic Parameters Acquisition System using Faster R-CNN Deep Learning based algorithm

机译:流量参数采集系统使用更快的R-CNN基于深度学习算法

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摘要

Traffic parameters survey is important for proper control of traffic lights on the roads. Computer vision is one of the tools that offer greater advantages and lower cost compared to other alternatives. Particularly among the computer vision algorithms, the use of Deep Learning stands out against the traditional methods of image processing, due to the varying conditions of the environment. In the present paper, vehicle detection is performed by using a Deep Learning based algorithm, running the system trained under different environments for which the system was not trained. Later, an area of interest is defined in the image to be analyzed where, based on the detected vehicles, the necessary parameters of each of the routes of interest will be obtained. The parameters detection includes obtaining the queue lengths, estimating the average number of passengers in the region of interest and detecting the number of vehicles detected according to their type.
机译:交通参数调查对于正确控制道路上的交通灯非常重要。计算机愿景是与其他替代方案相比提供更大优势和更低成本的工具之一。特别是在计算机视觉算法中,由于环境的不同条件,使用深度学习的使用突出了传统的图像处理方法。在本文中,通过使用基于深度学习的算法进行车辆检测,运行在没有培训系统的不同环境下培训的系统。稍后,在要分析的图像中定义感兴趣的区域,其中基于检测到的车辆,将获得每个感兴趣途径的必要参数。参数检测包括获得队列长度,估计感兴趣区域中的乘客的平均数量,并根据其类型检测检测到的车辆的数量。

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