基于支持向量机的车辆交通密度状态估计

S. Purusothaman, K. Parasuraman
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引用次数: 3

摘要

由于机动化、城市化和人口增长的增加,道路交通拥堵在世界范围内是一个严重的问题。交通拥堵降低了城市交通基础设施的效率;增加旅行时间,燃料消耗和空气污染,并导致用户增加挫败感和疲劳。减少交通拥堵可以改善交通流量,减少出行时间和对环境的影响。本文的主要目的是考虑车辆交通密度问题,以确定低交通条件和高交通条件。为了确定流量,我们首先确定纹理特征。根据纹理特征确定各种交通状况。该过程包括背景相减,从中得到差分图像,并对给定的捕获图像应用支持向量机(SVM)过程。实验结果表明,该方法具有很高的效率,准确率高达90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicular traffic density state estimation using Support Vector Machine
Road traffic congestion is a severe problem worldwide due to increased motorization, urbanization and population growth. Traffic congestion reduces the efficiency of the transportation infrastructure of a city; increases travel time, fuel consumption and air pollution, and leads to increased user frustration and fatigue. Reducing traffic congestion can improve traffic flow, reduce travel times and the environmental impact. The main objective of this paper is to consider the problem of vehicular traffic density to determine the low and high traffic conditions. To determine the traffic firstly we determine the texture features. Based on the texture features we determine the various traffic conditions. The procedure includes background subtraction from which we obtain the difference image and we apply the Support Vector Machine (SVM) procedure on a given captured image. Experimental result shows that the approaches are very efficient and produce up to 90% accuracy.
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