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Combinatorial Resampling Particle Filter: An Effective and Efficient Method for Articulated Object Tracking

机译:组合式重采样粒子滤波器:一种有效的关节运动对象跟踪方法

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Particle filter (PF) is a method dedicated to posterior density estimations using weighted samples whose elements are called particles. In particular, this approach can be applied to object tracking in video sequences in complex situations and, in this paper, we focus on articulated object tracking, i.e., objects that can be decomposed as a set of subparts. One of PF's crucial step is a resampling step in which particles are resampled to avoid degeneracy problems. In this paper, we propose to exploit mathematical properties of articulated objects to swap conditionally independent subparts of the particles in order to generate new particle sets. We then introduce a new resampling method called Combinatorial Resampling that resamples over the particle set resulting from all the "admissible" swappings, the so-called combinatorial set. In essence, combinatorial resampling (CR) is quite similar to the combination of a crossover operator and a usual resampling, but there exists a fundamental difference between CR and the use of crossover operators: we prove that CR is sound, i.e., in a Bayesian framework, it is guaranteed to represent without any bias the posterior densities of the states over time. By construction, the particle sets produced by CR better represent the density to estimate over the whole state space than the original set and, therefore, CR produces higher quality samples. Unfortunately, the combinatorial set is generally of an exponential size and, therefore, to be scalable, we show how it can be implicitly constructed and resampled from, thus resulting in both an efficient and effective resampling scheme. Finally, through experimentations both on challenging synthetic and real video sequences, we also show that our resampling method outperforms all classical resampling methods both in terms of the quality of its results and in terms of computation times.
机译:粒子过滤器(PF)是专用于使用元素被称为粒子的加权样本进行后密度估计的方法。尤其是,这种方法可以应用于复杂情况下视频序列中的对象跟踪,在本文中,我们着重于关节式对象跟踪,即可以分解为一组子部分的对象。 PF的关键步骤之一是重新采样步骤,在该步骤中,对粒子进行重新采样以避免退化问题。在本文中,我们建议利用铰接对象的数学特性来交换粒子的条件独立子部分,以生成新的粒子集。然后,我们引入一种称为组合重采样的新重采样方法,该方法对所有“允许的”交换(所谓的组合集)所产生的粒子集进行重采样。从本质上讲,组合重采样(CR)与交叉算子和常规重采样的组合非常相似,但是CR和使用交叉算子之间存在根本的区别:我们证明了CR是合理的,即在贝叶斯算法中在框架中,可以保证在没有任何偏差的情况下代表状态随时间的变化。通过构造,由CR产生的粒子集比原始粒子集更好地表示了在整个状态空间上估计的密度,因此CR产生了更高质量的样本。不幸的是,组合集通常具有指数大小,因此,要进行扩展,我们将展示如何隐式构造和重采样组合集,从而产生一种有效的重采样方案。最后,通过对具有挑战性的合成和真实视频序列进行的实验,我们还表明,无论是在结果质量还是在计算时间方面,我们的重采样方法均优于所有经典的重采样方法。

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