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Heuristic particle filter: applying abstraction techniques to the design of visual tracking algorithms

机译:启发式粒子滤波器:将抽象技术应用于视觉跟踪算法的设计

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摘要

Many real-world visual tracking applications have a high dimensionality, i.e. the system state is defined by a large number of variables. This kind of problem can be modelled as a dynamic optimization problem, which involves dynamic variables whose values change in time. Most applied research on optimization methods have focused on static optimization problems but these static methods often lack explicit adaptive methodologies. Heuristics are specific methods for solving problems in the absence of an algorithm for formal proof. Metaheuristics are approximate optimization methods which have been applied to more general problems with significant success. However, particle filters are Monte Carlo algorithms which solve the sequential estimation problem by approximating the theoretical distributions in the state space by simulated random measures called particles. However, particle filters lack efficient search strategies. In this paper, we propose a general framework to hybridize heuristics/metaheuristics with particle filters properly. The aim of this framework is to devise effective hybrid visual tracking algorithms naturally, guided by the use of abstraction techniques. Resulting algorithms exploit the benefits of both complementary approaches. As a particular example, a memetic algorithm particle filter is derived from the proposed hybridization framework. Finally, we show the performance of the memetic algorithm particle filter when it is applied to a multiple object tracking problem.
机译:许多现实世界中的视觉跟踪应用程序具有较高的维度,即系统状态由大量变量定义。可以将这种问题建模为动态优化问题,其中涉及其值随时间变化的动态变量。大多数关于优化方法的应用研究都集中在静态优化问题上,但是这些静态方法通常缺少显式的自适应方法。启发式是在没有形式证明的算法的情况下解决问题的特定方法。元启发法是一种近似优化方法,已成功应用于更一般的问题。但是,粒子滤波器是蒙特卡洛算法,它通过使用称为粒子的模拟随机量来近似状态空间中的理论分布来解决顺序估计问题。但是,粒子过滤器缺乏有效的搜索策略。在本文中,我们提出了将启发式/元启发式算法与粒子过滤器正确混合的通用框架。该框架的目的是自然地设计出有效的混合视觉跟踪算法,并以抽象技术为指导。结果算法利用了两种互补方法的优势。作为一个特定示例,从提出的杂交框架中衍生出模因算法粒子滤波器。最后,我们展示了模因算法粒子滤波器在应用于多对象跟踪问题时的性能。

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