MLDSLGSYNov 11, 2021

Kalman Filtering with Adversarial Corruptions

arXiv:2111.06395v110 citations
Originality Highly original
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This addresses a foundational issue in control and estimation for systems with non-Gaussian or heavy-tailed noise, offering a robust solution for applications like robotics and signal processing.

The paper tackles the problem of linear quadratic estimation in linear dynamical systems when a constant fraction of measurements are adversarially corrupted, providing the first strong provable guarantees for robust Kalman filtering that competes with an optimal algorithm aware of corruption locations.

Here we revisit the classic problem of linear quadratic estimation, i.e. estimating the trajectory of a linear dynamical system from noisy measurements. The celebrated Kalman filter gives an optimal estimator when the measurement noise is Gaussian, but is widely known to break down when one deviates from this assumption, e.g. when the noise is heavy-tailed. Many ad hoc heuristics have been employed in practice for dealing with outliers. In a pioneering work, Schick and Mitter gave provable guarantees when the measurement noise is a known infinitesimal perturbation of a Gaussian and raised the important question of whether one can get similar guarantees for large and unknown perturbations. In this work we give a truly robust filter: we give the first strong provable guarantees for linear quadratic estimation when even a constant fraction of measurements have been adversarially corrupted. This framework can model heavy-tailed and even non-stationary noise processes. Our algorithm robustifies the Kalman filter in the sense that it competes with the optimal algorithm that knows the locations of the corruptions. Our work is in a challenging Bayesian setting where the number of measurements scales with the complexity of what we need to estimate. Moreover, in linear dynamical systems past information decays over time. We develop a suite of new techniques to robustly extract information across different time steps and over varying time scales.

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