Traffic Density Estimation for Traffic Management Applications Using Neural Networks

Manipriya Sankaranarayanan, C. Mala, Snigdha Jain
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Abstract

Traffic density is one of the elemental variables used in molding road traffic kinetics. Current density estimation techniques include loop detectors and sensors which are dependent on the crowd-sourcing of traffic data, which suffers from limited coverage and high cost. This article proposes a unique method to estimate traffic density based on neural network and mathematical modelling which uses surveillance feed from cameras. The proposed method can save both transportation costs and journey time, thus helping in better traffic management. The result analysis shows that the proposed method works well for varying traffic flow conditions and dynamic conditions.
利用神经网络为交通管理应用估算交通密度
交通密度是塑造道路交通动力学的基本变量之一。目前的密度估算技术包括环路探测器和传感器,这些技术依赖于交通数据的众包,但覆盖范围有限且成本高昂。本文提出了一种基于神经网络和数学建模的独特方法,利用摄像头的监控信息来估算交通密度。该方法既能节约交通成本,又能节省行程时间,从而有助于更好地进行交通管理。结果分析表明,所提出的方法在不同的交通流量条件和动态条件下都能很好地发挥作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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