Combining Particle filter and Population-Based Metaheuristics for Visual Articulated Motion Tracking

J. Pantrigo, Ángel Sánchez, A. S. Montemayor, Kostas Gianikellis
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引用次数: 27

Abstract

Visual tracking of articulated motion is a complex task with high computational costs. Because of the fact that articulated objects are usually represented as a set of linked limbs, tracking is performed with the support of a model. Model-based tracking allows determining object pose in an effortless way and handling occlusions. However, the use of articulated models generates a multidimensional state-space and, therefore, the tracking becomes computationally very expensive or even infeasible. Due to the dynamic nature of the problem, some sequential estimation algorithms like particle filters are usually applied to visual tracking. Unfortunately, particle filter fails in high dimensional estimation problems such as articulated objects or multiple object tracking. These problems are called \emph{dynamic optimization problems}. Metaheuristics, which are high level general strategies for designing heuristics procedures, have emerged for solving many real world combinatorial problems as a way to efficiently and effectively exploring the problem search space. Path relinking (PR) and scatter search (SS) are evolutionary metaheuristics successfully applied to several hard optimization problems. PRPF and SSPF algorithms respectively hybridize both, particle filter and these two population-based metaheuristic schemes. In this paper, We present and compare two different hybrid algorithms called Path Relinking Particle Filter (PRPF) and Scatter Search Particle Filter (SSPF), applied to 2D human motion tracking. Experimental results show that the proposed algorithms increase the performance of standard particle filters.
结合粒子滤波和基于种群的元启发式视觉关节运动跟踪
关节运动的视觉跟踪是一项复杂的任务,计算成本高。由于铰接对象通常被表示为一组连接的肢体,因此跟踪是在模型的支持下进行的。基于模型的跟踪允许以轻松的方式确定物体姿态并处理遮挡。然而,铰接模型的使用产生了一个多维状态空间,因此,跟踪在计算上变得非常昂贵,甚至是不可行的。由于问题的动态性,一些序列估计算法,如粒子滤波,通常应用于视觉跟踪。遗憾的是,粒子滤波在高维估计问题(如关节目标或多目标跟踪)中失败。这些问题被称为\emph{动态优化问题}。元启发式是设计启发式过程的高级通用策略,用于解决许多现实世界的组合问题,是一种高效探索问题搜索空间的方法。路径链接(PR)和分散搜索(SS)是进化元启发式方法,已成功地应用于若干困难的优化问题。PRPF和SSPF算法分别混合了粒子滤波和这两种基于种群的元启发式算法。在本文中,我们提出并比较了两种不同的混合算法,即路径重链接粒子滤波(PRPF)和散射搜索粒子滤波(SSPF),应用于二维人体运动跟踪。实验结果表明,所提算法提高了标准粒子滤波器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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