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Vehicle Image Classification Based on Edge: Features and Distances Comparison

机译:基于边缘的车辆图像分类:特征和距离比较

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Automatic vehicle classification is an important task in Intelligent Transport System (ITS) because it allows the traffic parameter, called vehicles count by category, to be obtained. In terrestrial public roads, variants sources of information for vehicles counter by category have been used such as video, magnetic induction coil, sound sensors, temperature sensors and microwave. The use of video has increased support for traffic management due to the advantages of installation cost and a wide range of information it contains. This paper presents comparison of vehicle image classification based on edge features. Contour points number, height, width and fractal dimension are used like features. Nearest neighbor, adaptive nearest neighbor and adaptive distance are used in classification. The experimental platform is built on Matlab R2009a.
机译:自动车辆分类是智能运输系统(ITS)的一项重要任务,因为它可以获取交通参数,即按类别进行车辆计数。在陆地公共道路上,已经使用了按类别分类的车辆信息源,例如视频,磁感应线圈,声音传感器,温度传感器和微波。视频的使用由于安装成本和其中包含的广泛信息的优势而增加了对流量管理的支持。本文提出了基于边缘特征的车辆图像分类的比较。轮廓点的数量,高度,宽度和分形维数与特征一样使用。分类中使用最近邻居,自适应最近邻居和自适应距离。实验平台基于Matlab R2009a构建。

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