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Stochastic sampling algorithms for state estimation of jump Markov linear systems
2000
IEEE Transactions on Automatic Control
Jump Markov linear systems are linear systems whose parameters evolve with time according to a finite-state Markov chain. Given a set of observations, our aim is to estimate the states of the finite-state Markov chain and the continuous (in space) states of the linear system. The computational cost in computing conditional mean or maximum a posteriori (MAP) state estimates of the Markov chain or the state of the jump Markov linear system grows exponentially in the number of observations. In
doi:10.1109/9.839943
fatcat:22y3s2dsy5hdlpwvvqocd7fkwu