Multitarget bayes filtering via first-order multitarget moments
Lockheed Martin (United States)
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Abstract
The theoretically optimal approach to multisensor-multitarget detection, tracking, and identification is a suitable generalization of the recursive Bayes nonlinear filter. Even in single-target problems, this optimal filter is so computationally challenging that it must usually be approximated. Consequently, multitarget Bayes filtering will never be of practical interest without the development of drastic but principled approximation strategies. In single-target problems, the computationally fastest approximate filtering approach is the constant-gain Kalman filter. This filter propagates a first-order statistical moment - the posterior expectation - in the place of the posterior distribution. The purpose of…
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Topics
Keywords
- Moment (physics)
- Kalman filter
- Bayes' theorem
- Filter (signal processing)
- Mathematics
- Posterior probability
- Probability density function
- Recursive Bayesian estimation
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