基于概率观点的核跟踪

Q. A. Nguyen, A. Robles-Kelly, Chunhua Shen
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引用次数: 15

摘要

在本文中,我们提出了一种基于极大似然估计的核跟踪方法的概率公式。为此,我们将目标模型及其候选模型中像素的坐标视为随机变量,并利用生成模型将跟踪任务置于最大似然框架中。这反过来又允许使用em算法来估计一组可用于更新目标中心位置的潜在变量。一旦潜在变量被估计,我们使用Kullback-Leibler散度来最小化目标模型和候选分布之间的互信息,从而制定目标中心更新规则和核带宽调整方案。这个方法在本质上是非常通用的。我们使用两个可选的核函数来说明我们的方法在跟踪真实世界视频序列方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel-based Tracking from a Probabilistic Viewpoint
In this paper, we present a probabilistic formulation of kernel-based tracking methods based upon maximum likelihood estimation. To this end, we view the coordinates for the pixels in both, the target model and its candidate as random variables and make use of a generative model so as to cast the tracking task into a maximum likelihood framework. This, in turn, permits the use of the EM-algorithm to estimate a set of latent variables that can be used to update the target-center position. Once the latent variables have been estimated, we use the Kullback-Leibler divergence so as to minimise the mutual information between the target model and candidate distributions in order to develop a target-center update rule and a kernel bandwidth adjustment scheme. The method is very general in nature. We illustrate the utility of our approach for purposes of tracking on real-world video sequences using two alternative kernel functions.
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