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Bayesian Network based Computer Vision Algorithm for Traffic Monitoring using Video

机译:基于贝叶斯网络的计算机视觉算法,用于使用视频的流量监控

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This paper presents a novel approach to estimating the 3D velocity of vehicles from video. Here we propose using a Bayesian Network to classify objects into pedestrians and different types of vehicles, using 2D features extracted from the video taken from a stationary camera. The classification allows -us to estimate an approximate 3D model for the different classes. The height information is then used with the image co-ordinates of the object and the camera's perspective projection matrix to estimate the objects 8D world co-ordinates and hence its 3D velocity. Accurate velocity and acceleration estimates are both very useful parameters in traffic monitoring systems. We show results of highly accurate classification and measurement of vehicle's motion from real life traffic video streams.
机译:本文介绍了一种估计视频的车辆3D速度的新方法。在这里,我们建议使用贝叶斯网络将物体分类为行人和不同类型的车辆,使用从静止相机中拍摄的视频中提取的2D特征。分类允许 - 估计不同类的近似3D模型。然后将高度信息与对象的图像协调和相机的透视投影矩阵一起使用,以估计对象8D世界协调并因此实现其3D速度。准确的速度和加速度估计是交通监控系统中的非常有用的参数。从现实生活中,我们展示了高度准确的分类和测量车辆运动的结果。

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