Maintaining multimodality through mixture tracking

J. Vermaak, A. Doucet, P. Pérez
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引用次数: 463

Abstract

In recent years particle filters have become a tremendously popular tool to perform tracking for nonlinear and/or nonGaussian models. This is due to their simplicity, generality and success over a wide range of challenging applications. Particle filters, and Monte Carlo methods in general, are however poor at consistently maintaining the multimodality of the target distributions that may arise due to ambiguity or the presence of multiple objects. To address this shortcoming this paper proposes to model the target distribution as a nonparametric mixture model, and presents the general tracking recursion in this case. It is shown how a Monte Carlo implementation of the general recursion leads to a mixture of particle filters that interact only in the computation of the mixture weights, thus leading to an efficient numerical algorithm, where all the results pertaining to standard particle filters apply. The ability of the new method to maintain posterior multimodality is illustrated on a synthetic example and a real world tracking problem involving the tracking of football players in a video sequence.
通过混合跟踪维持多模态
近年来,粒子滤波已经成为一种非常流行的工具,用于执行非线性和/或非高斯模型的跟踪。这是由于它们的简单性、通用性和在各种具有挑战性的应用中取得的成功。然而,粒子滤波和一般的蒙特卡罗方法在一致地维持目标分布的多模态方面很差,这可能是由于模糊性或多个对象的存在而引起的。针对这一缺点,本文提出将目标分布建模为非参数混合模型,并给出了这种情况下的一般跟踪递归。它显示了一般递归的蒙特卡罗实现如何导致仅在混合权重计算中相互作用的混合粒子滤波器,从而导致有效的数值算法,其中所有有关标准粒子滤波器的结果都适用。通过一个综合实例和一个涉及视频序列中足球运动员跟踪的现实世界跟踪问题,说明了新方法保持后验多模态的能力。
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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