An efficient particle filter for color-based tracking in complex scenes

J. M. D. Rincón, C. Orrite-Uruñuela, J. Jaraba
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引用次数: 9

Abstract

In this paper, we introduce an efficient method for particle selection in tracking objects in complex scenes. First, we improve the proposal distribution function of the tracking algorithm, including current observation, reducing the cost of evaluating particles with a very low likelihood. In addition, we use a partitioned sampling approach to decompose the dynamic state in several stages. It enables to deal with high-dimensional states without an excessive computational cost. To represent the color distribution, the appearance of the tracked object is modelled by sampled pixels. Based on this representation, the probability of any observation is estimated using non-parametric techniques in color space. As a result, we obtain a probability color density image (PDI) where each pixel points its membership to the target color model. In this way, the evaluation of all particles is accelerated by computing the likelihood p(z\x) using the integral image of the PDI.
一种用于复杂场景中基于颜色跟踪的高效粒子滤波器
本文介绍了一种用于复杂场景中目标跟踪的粒子选择方法。首先,我们改进了跟踪算法的建议分布函数,包括当前观测值,减少了极低似然粒子的评估成本。此外,我们还采用分段抽样的方法将动态状态分解为几个阶段。它可以在不增加计算成本的情况下处理高维状态。为了表示颜色分布,跟踪对象的外观由采样像素建模。基于这种表示,使用非参数技术在色彩空间中估计任何观测的概率。因此,我们得到一个概率颜色密度图像(PDI),其中每个像素指向其隶属于目标颜色模型。这样,通过使用PDI的积分图像计算可能性p(z\x)来加速所有粒子的评估。
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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