Publication | Open Access
Robust Variational-Based Kalman Filter for Outlier Rejection With Correlated Measurements
48
Citations
39
References
2020
Year
State EstimationDependent Observation ModelsNonlinear FilteringEngineeringRobust ModelingData ScienceUncertainty QuantificationUncertainty EstimationOutlier RejectionOutlier DetectionFiltering TechniqueRobust StatisticInverse ProblemsEstimation TheorySignal ProcessingStatisticsMultiple Outlier Indicators
State estimation is a fundamental task in many engineering fields, and therefore robust nonlinear filtering techniques able to cope with misspecified, uncertain and/or corrupted models must be designed for real-life applicability. In this contribution we explore nonlinear Gaussian filtering problems where measurements may be corrupted by outliers, and propose a new robust variational-based filtering methodology able to detect and mitigate their impact. This method generalizes previous contributions to the case of multiple outlier indicators for both independent and dependent observation models. An illustrative example is provided to support the discussion and show the performance improvement.
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