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首页> 外文期刊>Journal of Intelligent Transportation Systems >Kalman Filtering Used in Video-Based Traffic Monitoring System
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Kalman Filtering Used in Video-Based Traffic Monitoring System

机译:基于卡尔曼滤波的视频交通监控系统

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摘要

Video object tracking is an important method of traffic detection in Intelligent Transportation Systems. In video traffic tracking systems the matching method is often used to find the position of moving objects. In this article an improved algorithm of corner feature extraction is presented and corner points are tracked as the feature points of traffic objects. The tracking precision is mainly decided by matching algorithms. If the matching is not accurate, good tracking results cannot be achieved. In this article Kalman Filtering is used to track the moving traffic objects. In this system two kinds of data are used: One is from the general matching algorithm, which is the representation of the target's position; the other is detected by a spatial filtering velocimeter, containing the rough flow velocity of the targets. Though neither kind of data are highly accurate, Kalman Filtering is capable of integrating both position and velocity data to obtain better tracking results.
机译:视频对象跟踪是智能交通系统中交通检测的重要方法。在视频流量跟踪系统中,匹配方法通常用于查找运动对象的位置。本文提出了一种改进的拐角特征提取算法,并将拐角点作为交通对象的特征点进行跟踪。跟踪精度主要由匹配算法决定。如果匹配不正确,则无法获得良好的跟踪结果。在本文中,卡尔曼滤波用于跟踪移动的交通对象。在该系统中,使用两种数据:一种来自通用匹配算法,即目标位置的表示;另一种来自目标位置的表示。另一个通过空间过滤测速仪检测,其中包含目标的粗略流速。尽管这两种数据都不十分准确,但卡尔曼滤波能够将位置和速度数据集成在一起以获得更好的跟踪结果。

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