2015
DOI: 10.1109/tac.2014.2340591
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Optimal Filter Approximations in Conditionally Gaussian Pairwise Markov Switching Models

Abstract: Abstract-We consider a general triplet Markov Gaussian linear system (X, R, Y), where X is an hidden continuous random sequence, R is an hidden discrete Markov chain, Y is an observed continuous random sequence. When the triplet (X, R, Y) is a classical "Conditionally Gaussian Linear State-Space Model" (CGLSSM), the mean square error optimal filter is not workable with a reasonable complexity and different approximate methods, e.g. based on particle filters, are used. We propose two contributions. The first on… Show more

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Cited by 18 publications
(12 citation statements)
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“…Examples of particle filters implemented using these more general models as mathematical foundation can be found in the literature [23]. However, and since the objective of this work is to show the benefits of both evolutionary computing and hardware acceleration in particle filtering, the classical HMMs approach is sufficient.…”
Section: Further Discussionmentioning
confidence: 99%
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“…Examples of particle filters implemented using these more general models as mathematical foundation can be found in the literature [23]. However, and since the objective of this work is to show the benefits of both evolutionary computing and hardware acceleration in particle filtering, the classical HMMs approach is sufficient.…”
Section: Further Discussionmentioning
confidence: 99%
“…At the end of each estimation step, the current state is obtained from the whole particle population using the expression (23 (23) Xk is the estimated state at time k, x x k are the state variables of the particle i at time k, and w l k are the normalized weights for each particle, computed as in (24).…”
Section: Estimationmentioning
confidence: 99%
“…The distribution of is defined by , Gaussian distributions transitions , and the system (1), in which represents the noises independent of and Thus, system parameters , depend on the switches , and denotes the item about the mean values, where and are the means of the two processes respectively, which are only decided by the value of and without dependence on . Such a system, named "conditionally Gaussian pairwise Markov switching model" CGPMSM [1], extends the wellknown "conditionally Gaussian linear state-space model" (CGLSSM) [2][3]. The latter in which and in (1) are set to be zero, is considered as the "natural" switching Gaussian system, however, its application is quite limited as it does not allow fast optimal filters [4][5].…”
Section: Introductionmentioning
confidence: 99%
“…Such a system, named "conditionally Gaussian pairwise Markov switching model" CGPMSM [1], extends the wellknown "conditionally Gaussian linear state-space model" (CGLSSM) [2][3]. The latter in which and in (1) are set to be zero, is considered as the "natural" switching Gaussian system, however, its application is quite limited as it does not allow fast optimal filters [4][5]. Another recent particular case of CGPMSM, called "conditionally Gaussian observed Markov switching model" (CGOMSM), consists in taking CGPMSM with .…”
Section: Introductionmentioning
confidence: 99%
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