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Multi-dimensional visual tracking using scatter search particle filter

机译:使用散点搜索粒子过滤器的多维视觉跟踪

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Multi-dimensional visual tracking (MVT) problems include visual tracking tasks where the system state is defined by a high number of variables corresponding to multiple model components and/or multiple targets. A MVT problem can be modeled as a dynamic optimization problem. In this context, we propose an algorithm which hybridizes particle filters (PF) and the scatter search (SS) metaheuristic, called scatter search particle filter (SSPF), where the optimization strategies from SS are embedded into the PF framework. Scatter search is a population-based metaheuristic successfully applied to several complex combinatorial optimization problems. The most representative optimization strategies from SS are both solution combination and solution improvement. Combination stage enables the solutions to share information about the problem to produce better solutions. Improvement stage makes also possible to obtain better solutions by exploring the neighborhood of a given solution. In this paper, we have described and evaluated the performance of the scatter search particle filter (SSPF) in MVT problems. Specifically, we have compared the performance of several state-of-the-art PF-based algorithms with SSPF algorithm in different instances of 2D articulated object tracking problem and 2D multiple object tracking. Some of these instances are from the CVBase'06 standard database. Experimental results show an important performance gain and better tracking accuracy in favour of our approach.
机译:多维视觉跟踪(MVT)问题包括视觉跟踪任务,其中系统状态由对应于多个模型组件和/或多个目标的大量变量定义。 MVT问题可以建模为动态优化问题。在这种情况下,我们提出了一种将粒子过滤器(PF)和分散搜索(SS)元启发式算法混合的算法,称为分散搜索粒子过滤器(SSPF),其中将来自SS的优化策略嵌入到PF框架中。散点搜索是一种基于人口的元启发式方法,已成功应用于若干复杂的组合优化问题。 SS最具代表性的优化策略是解决方案组合和解决方案改进。组合阶段使解决方案可以共享有关问题的信息,以产生更好的解决方案。改进阶段还可以通过探索给定解决方案的邻域来获得更好的解决方案。在本文中,我们已经描述并评估了分散搜索粒子滤波器(SSPF)在MVT问题中的性能。具体来说,我们比较了几种基于PF的最新算法和SSPF算法在2D铰接对象跟踪问题和2D多对象跟踪的不同情况下的性能。其中一些实例来自CVBase'06标准数据库。实验结果表明,采用我们的方法可以显着提高性能并提高跟踪精度。

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