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Detection and identification in the intelligent traffic video monitoring system for pedestrians and vehicles

机译:行人和车辆智能交通视频监控系统中的检测与识别

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On the most of highway, tunnels and bridges, pedestrians are not allowed to access in the current public traffic management. The traditional transportation surveillance system can only monitor the scene but could not alarm automatically for the abnormity, so how to detect the pedestrians and alarm automatically when the people have access to the highway is a great challenge for the intelligent transportation video surveillance system. The paper proposes an algorithm which can solve the problems effectively by the improved Gaussian mixture model and Support vector machine. First of all, the paper introduce an improved Gaussian mixture model which can effectively detect the moving objects and resolve the problems of Gaussian mixture model sensitive to light changes. Then the paper designs some classifiers to recognize the pedestrians and vehicles by the idea of the improved SVM. The experimental results show that the method has a high recognition rate and can also satisfy the real-time intelligent transportation surveillance.
机译:在当前的大多数公共交通管理中,在大多数高速公路,隧道和桥梁上,都不允许行人通行。传统的交通监控系统只能监控现场,无法自动报警,异常情况如何发生,如何在行人通行时自动检测行人并自动报警是智能交通视频监控系统的一大挑战。提出了一种改进的高斯混合模型和支持向量机可以有效解决问题的算法。首先,本文介绍了一种改进的高斯混合模型,该模型可以有效地检测运动物体并解决高斯混合模型对光变化敏感的问题。然后,本文设计了一些分类器,通过改进的支持向量机的思想来识别行人和车辆。实验结果表明,该方法识别率高,还可以满足实时的智能交通监控。

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