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Tracking articulated body by dynamic Markov network

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A new method for visual tracking of articulated objects is presented. Analyzing articulated motion is challenging because the dimensionality increase potentially demands tremendous increase of computation. To ease this problem, we propose an approach that analyzes subparts locally while reinforcing the structural constraints at the mean time. The computational model of the proposed approach is based on a dynamic Markov network, a generative model which characterizes the dynamics and the image observations of each individual subpart as well as the motion constraints among different subparts. Probabilistic variational analysis of the model reveals a mean field approximation to the posterior densities of each subparts given visual evidence, and provides a computationally efficient way for such a difficult Bayesian inference problem. In addition, we design mean field Monte Carlo (MFMC) algorithms, in which a set of low dimensional particle filters interact with each other and solve the high dimensional problem collaboratively. Extensive experiments on tracking human body parts demonstrate the effectiveness, significance and computational efficiency of the proposed method.
机译:提出了一种用于视觉跟踪铰接物体的新方法。分析铰接运动是具有挑战性的,因为维度增加可能需要巨大增加计算。为了缓解这个问题,我们提出了一种方法,该方法在本地分析子部分,同时在平均时间加强结构约束。所提出的方法的计算模型基于动态马尔可夫网络,该生成模型,其表征了每个单个子部分的动态和图像观察以及不同子部分之间的运动约束。模型的概率变分析显示给定视证据的每个子部分的后密度的平均场近似,并为这种困难的贝叶斯推论问题提供了计算有效的方法。此外,我们设计了平均字段蒙特卡罗(MFMC)算法,其中一组低尺寸粒子过滤器彼此相互作用,并协同解决高维问题。跟踪人体部位的广泛实验证明了所提出的方法的有效性,意义和计算效率。

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