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Multiple Vehicle Tracking in Surveillance Videos

机译:监控视频中的多车跟踪

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摘要

In this paper, we present KNIGHT, a Windows-based standalone object detection, tracking and classification software, which is built upon Microsoft Windows technologies. The object detection component assumes stationary background settings and models background pixel values using Mixture of Gaussians. Gradient-based background subtraction is used to handle scenarios of sudden illumination change. Connected-component algorithm is applied to detected foreground pixels for finding object-level moving blobs. The foreground objects are further tracked based on a pixel-voting technique with the occlusion and entry/exit reasonings. Motion correspondences are established using the color, size, spatial and motion information of objects. We have proposed a texture-based descriptor to classify moving objects into two groups: vehicles and persons. In this component, feature descriptors are computed from image patches, which are partitioned by concentric squares. SVM is used to build the object classifier. The system has been used in the VACE-CLEAR. Evaluation forum for the vehicle tracking task. Corresponding system performance is presented in this paper.
机译:在本文中,我们介绍KNIGHT,这是一个基于Windows的独立对象检测,跟踪和分类软件,它基于Microsoft Windows技术构建。对象检测组件采用固定的背景设置,并使用高斯混合模型对背景像素值进行建模。基于梯度的背景减法用于处理光照突然变化的情况。连接分量算法应用于检测到的前景像素,以查找对象级移动斑点。基于具有遮挡和进入/退出推理的像素投票技术,进一步跟踪前景对象。使用对象的颜色,大小,空间和运动信息建立运动对应关系。我们提出了一种基于纹理的描述符,将运动物体分为两类:车辆和人。在此组件中,特征描述符是根据图像块计算的,这些图像块由同心正方形划分。 SVM用于构建对象分类器。该系统已在VACE-CLEAR中使用。车辆跟踪任务的评估论坛。本文介绍了相应的系统性能。

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