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A Novel Video Object Tracking Approach Based on Kernel Density Estimation and Markov Random Field

机译:基于核密度估计和马尔可夫随机场的视频目标跟踪方法

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摘要

In this paper, we propose a novel video object tracking approach based on kernel density estimation and Markov random field (MRF). The interested video objects are first segmented by the user, and a nonparametric model based on kernel density estimation is initialized for each video object and the remaining background, respectively. A temporal saliency map is also initialized for each object to memorize the temporal trajectory. Based on the probabilities evaluated on the non-parametric models, each pixel in the current frame is first classified into the corresponding video object or background using the maximum likelihood criterion. Starting from the initial classification result, a MRF model that combines spatial smoothness and temporal coherency is selectively exploited to generate more reliable video objects. The nonparametric model and the temporal saliency map for each video object are updated and propagated for the future tracking. Experimental results on several MPEG-4 test sequences demonstrate the good segmentation performance of our approach.
机译:在本文中,我们提出了一种基于核密度估计和马尔可夫随机场(MRF)的新型视频对象跟踪方法。感兴趣的视频对象首先由用户进行细分,然后分别针对每个视频对象和其余背景初始化基于内核密度估计的非参数模型。还为每个对象初始化一个时间显着图,以存储时间轨迹。基于在非参数模型上评估的概率,首先使用最大似然准则将当前帧中的每个像素分类为相应的视频对象或背景。从初始分类结果开始,有选择地利用结合了空间平滑度和时间相干性的MRF模型来生成更可靠的视频对象。每个视频对象的非参数模型和时间显着性图都会更新并传播,以备将来跟踪。在几个MPEG-4测试序列上的实验结果证明了我们方法的良好分割性能。

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