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Inverse Filtering for Hidden Markov Models With Applications to Counter-Adversarial Autonomous Systems

Robert Mattila, Cristian R. Rojas, Vikram Krishnamurthy, Bo Wahlberg

2020IEEE Transactions on Signal Processing27 citationsDOIOpen Access PDF

Abstract

Bayesian filtering deals with computing the posterior distribution of the state of a stochastic dynamic system given noisy observations. In this paper, motivated by applications in counter-adversarial autonomous systems, we consider the following inverse filtering problem: Given a sequence of posterior distributions from a Bayesian filter, what can be inferred about the transition kernel of the state, the observation likelihoods of the sensor and the measured observations? For finite-state Markov chains observed in noise (hidden Markov models), we show that a least-squares fit for estimating the parameters and observations amounts to a combinatorial optimization problem with non-convex objective. Instead, by exploiting the algebraic structure of the corresponding Bayesian filter, we propose an algorithm based on convex optimization for reconstructing the transition kernel, the observation likelihoods and the observations. We discuss and derive conditions for identifiability. As an application of our results, we demonstrate the design of a counter-adversarial autonomous system: By observing the actions of an autonomous enemy, we estimate the accuracy of its sensors and the observations it has received. The proposed algorithms are illustrated via several numerical examples.

Topics & Concepts

Markov chainAlgorithmHidden Markov modelKernel (algebra)IdentifiabilityMathematicsMathematical optimizationConvex optimizationBayesian probabilityComputer scienceParticle filterArtificial intelligenceKalman filterRegular polygonMachine learningCombinatoricsGeometryFault Detection and Control SystemsTarget Tracking and Data Fusion in Sensor NetworksDistributed Sensor Networks and Detection Algorithms
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