A sorted weighting lookahead sampling scheme for accurate and fast particle filtering

R. Gurajala, P. Choppala, J. Meka, Paul D. Teal
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Abstract

The particle filter is known to be a powerful tool for estimating hidden Markov processes in nonlinear and nonGaussian state space models. The filter involves generating new particles from old ones, from regions of high importance in the state space using a proposal distribution and then weighing them using the incoming observation. However a poor choice of the proposal distribution may migrate the new particles into regions that do not contribute to the posterior and hence lead to one particle accumulating all the weight (termed particle degeneracy). This degeneracy is overcome using the resampling step that eliminates those particles with low weights and replaces them by those with large weights. However this resampling step is a computationally demanding operation. In the literature, the methods that speed up the particle filter, like the Gaussian particle filter, trade tracking accuracy with speed while methods that sample particles from high importance regions, like the auxiliary particle filters and lookahead particle filters, trade speed with accuracy. In this paper we propose a simple lookahead sampling scheme. Here the particles that fall into high importance regions are predetermined (seen ahead) and then propagated in copies to make up for those that should be discarded. This strategy avoids the resampling step and consequently leads to high speed and accuracy. Using two nonlinear models, we show the tracking efficiency of the proposed method.
一种精确快速的排序加权前瞻采样方案
粒子滤波是估计非线性和非高斯状态空间模型中隐马尔可夫过程的有力工具。该过滤器包括从旧粒子中生成新粒子,使用建议分布从状态空间中高度重要的区域生成新粒子,然后使用传入的观测值对它们进行加权。然而,一个糟糕的建议分布选择可能会迁移新粒子到不贡献后值的区域,从而导致一个粒子积累了所有的权重(称为粒子退化)。这种退化是通过重采样步骤克服的,重采样步骤消除那些低权重的粒子,并用大权重的粒子代替它们。然而,这个重采样步骤是一个计算要求很高的操作。在文献中,加速粒子滤波的方法,如高斯粒子滤波,以速度换取跟踪精度,而从高重要区域采样粒子的方法,如辅助粒子滤波和前瞻粒子滤波,以速度换取精度。本文提出了一种简单的前向抽样方案。在这里,落入高度重要区域的粒子是预先确定的(预先看到的),然后复制繁殖,以弥补那些应该被丢弃的粒子。该策略避免了重采样步骤,从而提高了速度和精度。通过两个非线性模型,验证了该方法的跟踪效率。
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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