Monte Carlo techniques to estimate the conditional expectation in multi-stage non-linear filtering† 论文
1969International Journal of Control引用 239
Target Tracking and Data Fusion in Sensor NetworksProbabilistic and Robust Engineering DesignWater Systems and Optimization
摘要
Using Bayes' theorem the conditional mean of the posterior probability density function is estimated via Monte Carlo techniques. Multi-stage, non-linear filtering requires the solution of high dimensional integrals. The new feature of the approach presented is that a combination of analytical and numerical methods yields a variance reduction which can also be interpreted as an accuracy improvement of approximate non-linear filter equations. Theorems are derived to prove zero sampling variance for the linear Gaussian case and experimental results indicate that the proposed estimators are feasible in non-linear situations.