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A Novel Trust Region Tracking Algorithm Based on Kernel Density Estimation

机译:基于核密度估计的信任区域跟踪算法

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This paper presents a new approach which combines the Kernel Density Estimation and Trust Region algorithm for tracking objects in video sequences. Kernel density estimation (KDE) of the object's color distribution is built from the object region and used to generate a probability map for each incoming frame. Tracking is accomplished by localizing blobs in the maps. Compared with color histograms which are just empirical estimations of the objects' color distribution, KDE provides much better description of objects' color than histograms and promise better probability maps. The Trust Region algorithm ensures better convergence to objects' location than mean shift procedure. Different from the popular mean shift video tracking methods which determine objects' size and orientation using predefined parameters, the proposed algorithm calculates objects' size and orientation from geometric moments of the search window, rather than trial of discrete parameters. Experiments show that the proposed algorithm was able to precisely track the constant changes of the objects' size and orientation and achieved much better tracking precision on real video sequences than histogram based mean shift methods.
机译:本文提出了一种结合内核密度估计和信任区域算法来跟踪视频序列中对象的新方法。从对象区域构建对象颜色分布的内核密度估计(KDE),并用于为每个传入帧生成概率图。跟踪是通过在地图上定位Blob来完成的。与颜色直方图相比,后者只是对对象颜色分布的经验估计,与直方图相比,KDE提供了更好的对象颜色描述,并有望提供更好的概率图。与均值平移过程相比,信任区域算法可确保更好地收敛到对象的位置。与流行的均值平移视频跟踪方法不同,该方法使用预定义的参数确定对象的大小和方向,该算法从搜索窗口的几何矩计算对象的大小和方向,而不是尝试离散参数。实验表明,与基于直方图的均值平移方法相比,该算法能够精确地跟踪物体尺寸和方向的不断变化,并在真实视频序列上实现了更好的跟踪精度。

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