Rao-Blackwellised particle filter for tracking with application in visual surveillance

Xinyu Xu, Baoxin Li
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引用次数: 28

Abstract

Particle filters have become popular tools for visual tracking since they do not require the modeling system to be Gaussian and linear. However, when applied to a high dimensional state-space, particle filters can be inefficient because a prohibitively large number of samples may be required in order to approximate the underlying density functions with desired accuracy. In this paper, by proposing a tracking algorithm based on Rao-Blackwellised particle filter (RBPF), we show how to exploit the analytical relationship between state variables to improve the efficiency and accuracy of a regular particle filter. Essentially, we estimate some of the state variables as in a regular particle filter, and the distributions of the remaining variables are updated analytically using an exact filter (Kalman filter in this paper). We discuss how the proposed method can be applied to facilitate the visual tracking task in typical surveillance applications. Experiments using both simulated data and real video sequences show that the proposed method results in more accurate and more efficient tracking than a regular particle filter.
rao - blackwell粒子滤波跟踪及其在视觉监控中的应用
粒子过滤器已经成为视觉跟踪的流行工具,因为它们不需要建模系统是高斯和线性的。然而,当应用于高维状态空间时,粒子滤波器可能是低效的,因为为了以期望的精度近似潜在的密度函数,可能需要大量的样本。本文提出了一种基于rao - blackwell化粒子滤波器(RBPF)的跟踪算法,展示了如何利用状态变量之间的解析关系来提高常规粒子滤波器的效率和精度。本质上,我们估计一些状态变量在一个规则的粒子滤波器中,剩余变量的分布使用一个精确的滤波器(本文中的卡尔曼滤波器)进行解析更新。我们讨论了该方法如何应用于典型监控应用中的视觉跟踪任务。在模拟数据和真实视频序列上的实验表明,该方法比常规粒子滤波方法具有更高的跟踪精度和效率。
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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