State space partitioning based on constrained spectral clustering for block particle filtering

Rui Min, C. Garnier, Françcois Septier, John Klein
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Abstract

The particle filter (PF) is a powerful inference tool widely used to estimate the filtering distribution in non-linear and/or non-Gaussian problems. To overcome the curse of dimensionality of PF, the block PF (BPF) inserts a blocking step to partition the state space into several subspaces or blocks of smaller dimension so that the correction and resampling steps can be performed independently on each subspace. Using blocks of small size reduces the variance of the filtering distribution estimate, but in turn the correlation between blocks is broken and a bias is introduced. When the dependence relationships between state variables are unknown, it is not obvious to decide how to split the state space into blocks and a significant error overhead may arise from a poor choice of partitioning. In this paper, we formulate the partitioning problem in the BPF as a clustering problem and we propose a state space partitioning method based on spectral clustering (SC). We design a generalized BPF algorithm that contains two new steps: (i) estimation of the state vector correlation matrix from predicted particles, (ii) SC using this estimate as the similarity matrix to determine an appropriate partition. In addition, a constraint is imposed on the maximal cluster size to prevent SC from providing too large blocks. We show that the proposed method can bring together in the same blocks the most correlated state variables while successfully escaping the curse of dimensionality.
基于约束谱聚类的块粒子滤波状态空间划分
粒子滤波(PF)是一种强大的推理工具,广泛用于估计非线性和/或非高斯问题中的滤波分布。为了克服PF的维数问题,块PF (BPF)插入一个块步骤,将状态空间划分为几个较小维数的子空间或块,以便在每个子空间上独立执行校正和重采样步骤。使用小尺寸的块减少了滤波分布估计的方差,但反过来又破坏了块之间的相关性并引入了偏差。当状态变量之间的依赖关系未知时,决定如何将状态空间划分为块是不明显的,并且由于划分的选择不当可能会产生重大的错误开销。本文将BPF中的划分问题转化为聚类问题,提出了一种基于谱聚类的状态空间划分方法。我们设计了一种广义BPF算法,该算法包含两个新步骤:(i)从预测粒子中估计状态向量相关矩阵,(ii)使用该估计作为相似矩阵来确定适当的划分。此外,还对最大簇大小施加了约束,以防止SC提供太大的块。我们的研究表明,该方法可以将最相关的状态变量聚集在同一块中,同时成功地避免了维度的诅咒。
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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