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Student's t Kalman Smoother

Abstract

We propose a new nonlinear outlier-robust Kalman smoother, which we call T-Robust. The smoother finds the maximum {\it a posteriori} likelihood (MAP) solutions for statistical models with heavy tailed observation noise. Specifically, the T-Robust Kalman smoother assumes a Gaussian process model and Student's t observation model. It compares favorably to the recently developed 1\ell_1-Robust smoother - it performs as well as the 1\ell_1-Robust on several simulated examples and even better when the level of contamination is high or contaminating errors come from the uniform distribution. The T-Robust smoother was also used to construct a smoothed fit for a nonlinear underwater tracking application without data removal in the presence of large outliers. The number of arithmetic operations required by the smoother grows linearly with the number of time points NN.

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