子空间层次粒子滤波

B. C. Brandao, Jacques Wainer, S. Goldenstein
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引用次数: 20

摘要

粒子滤波已经成为计算机视觉跟踪中非参数估计的标准工具。这是随机搜索的一个例子。每个粒子代表系统的一种可能状态。在任何给定的搜索空间区域,粒子浓度越高意味着概率越高。它的主要缺点之一是随着搜索空间维度的增加,粒子数量呈指数增长。我们提出了一种基于图的分层模型跟踪过滤框架,能够极大地缓解这一问题。该方法依赖于将搜索空间划分为可单独估计的子空间。低相关子空间可以用并行或串行滤波器估计,并通过一个特殊的聚合器滤波器组合它们的概率分布。我们描述了一种从系统模型中提取参数组的新算法,参数组定义了子空间。在一个简单的手部跟踪实验中,我们用合成数据和真实数据验证了我们的方法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subspace Hierarchical Particle Filter
Particle filtering has become a standard tool for non-parametric estimation in computer vision tracking applications. It is an instance of stochastic search. Each particle represents a possible state of the system. Higher concentration of particles at any given region of the search space implies higher probabilities. One of its major drawbacks is the exponential growth in the number of particles for increasing dimensions in the search space. We present a graph based filtering framework for hierarchical model tracking that is capable of substantially alleviate this issue. The method relies on dividing the search space in subspaces that can be estimated separately. Low correlated subspaces may be estimated with parallel, or serial, filters and have their probability distributions combined by a special aggregator filter. We describe a new algorithm to extract parameter groups, which define the subspaces, from the system model. We validate our method with different graph structures within a simple hand tracking experiment with both synthetic and real data
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