2016
DOI: 10.1109/maes.2016.150083
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Recursive Bayesian filtering in circular state spaces

Abstract: For recursive circular filtering based on circular statistics, we introduce a general framework for estimation of a circular state based on different circular distributions, specifically the wrapped normal distribution and the von Mises distribution. We propose an estimation method for circular systems with nonlinear system and measurement functions. This is achieved by relying on efficient deterministic sampling techniques. Furthermore, we show how the calculations can be simplified in a variety of important … Show more

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Cited by 62 publications
(67 citation statements)
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“…Since the predictive prior distribution resulting from the mixture components is non-parametric we used a discrete circular filter to approximate the distributions in this simulation. The discrete filter is based on a grid of weighted Dirac components equally distributed along the circle (Kurz et al, 2016;Kurz, Gilitschenski, & Hanebeck, 2013) and was implemented with libDirectional toolbox for Matlab (Kurz, Gilitschenski, Pfaff, & Drude, 2015). Because in the unidimensional circular state space of orientations the quality of approximation is only given by the number of components, we felt that 10,000 Dirac components can adequately approximate a distribution of a circular variable.…”
Section: Model Parametersmentioning
confidence: 99%
See 1 more Smart Citation
“…Since the predictive prior distribution resulting from the mixture components is non-parametric we used a discrete circular filter to approximate the distributions in this simulation. The discrete filter is based on a grid of weighted Dirac components equally distributed along the circle (Kurz et al, 2016;Kurz, Gilitschenski, & Hanebeck, 2013) and was implemented with libDirectional toolbox for Matlab (Kurz, Gilitschenski, Pfaff, & Drude, 2015). Because in the unidimensional circular state space of orientations the quality of approximation is only given by the number of components, we felt that 10,000 Dirac components can adequately approximate a distribution of a circular variable.…”
Section: Model Parametersmentioning
confidence: 99%
“…A detailed derivation of the circular filter using Dirac mixtures can be found in Kurz et al (2013Kurz et al ( , 2016. Briefly, a wrapped Dirac mixture with L components and Dirac positions β 1 , .…”
Section: Discrete Circular Filter With Dirac Componentsmentioning
confidence: 99%
“…For the nonlinear dynamics (14), there is no exact expression and approximate methods, like Euler approximations, must be used.…”
Section: B Rotation Dynamicsmentioning
confidence: 99%
“…Some of them still use rotation states in the filtering but explicitly take into account that these states reside in SO (3). Examples include the Lie Algebra-EKF [13] and approaches making use of distributions on manifolds [14,15]. In this paper, however, we consider a quite natural modification of the above-mentioned EKF implementations.…”
Section: Introductionmentioning
confidence: 99%
“…This has formed the majority of extensions of the model-driven framework, e.g., a huge number of works for noise covariance estimation [17], but also formed new challenges to the real time implementation due to escalated computational requirement. More importantly, it is unclear how to optimally use some important but fuzzy information such as a linguistic context that the target moves close to a straight line, which might not be easily defined as constraints [14], [15], [35]- [37] and [2,Chapter 6]. This class of information is very common and useful to targets like aircraft, satellites, large cruise ships, and trains, which are supposed to move on pre-defined runways.…”
Section: A Challenges To Hmmmentioning
confidence: 99%