Implicit sampling for particle filters

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Abstract

We present a particle-based nonlinear filtering scheme, related to recent work on chainless Monte Carlo, designed to focus particle paths sharply so that fewer particles are required. The main features of the scheme are a representation of each new probability density function by means of a set of functions of Gaussian variables (a distinct function for each particle and step) and a resampling based on normalization factors and Jacobians. The construction is demonstrated on a standard, ill-conditioned test problem.

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APA

Chorin, A. J., & Tu, X. (2009). Implicit sampling for particle filters. Proceedings of the National Academy of Sciences of the United States of America, 106(41), 17249–17254. https://doi.org/10.1073/pnas.0909196106

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