Přejít k hlavnímu obsahu
top

Bibliografie

Journal Article

Collaborative sequential state estimation under unknown heterogeneous noise covariance matrices

Dedecius Kamil, Tichý Ondřej

: IEEE Transactions on Signal Processing vol.68, 10 (2020), p. 5365-5378

: GA20-27939S, GA ČR

: Diffusion network, Diffusion strategz, State estimation

: 10.1109/TSP.2020.3023823

: http://library.utia.cas.cz/separaty/2020/AS/dedecius-0532181.pdf

: https://ieeexplore.ieee.org/document/9195780

(eng): We study the problem of distributed sequential estimation of common states and measurement noise covariance matrices of hidden Markov models by networks of collaborating nodes. We adopt a realistic assumption that the true covariance matrices are possibly different (heterogeneous) across the network. This setting is frequent in many distributed real-world systems where the sensors (e.g., radars) are deployed in a spatially anisotropic environment, or where the networks may consist of sensors with different measuring principles (e.g., using different wavelengths). Our solution is rooted in the variational Bayesian paradigm. In order to improve the estimation performance, the measurements and the posterior estimates are communicated among adjacent neighbors within one network hop distance using the information diffusion strategy. The resulting adaptive algorithm selects neighbors with compatible information to prevent degradation of estimates.

: BB

: 20202