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'''Length:''' 3 hours | '''Length:''' 3 hours | ||
− | '''Intended Audience:''' | + | '''Intended Audience and Prerequisites:''' The tutorial is intendend for listeners interested in non-linear state estimation problems and fundamental aspects of solving |
+ | them (by other means than sequential Monte-Carlo methods). Prerequisite is a knowledge of probability theory on graduate | ||
+ | level plus (linear and non-linear) algebra. | ||
− | '''Description:''' | + | '''Description:''' The Kalman filter is well-known as the workhorse of recursive state estimation. For linear state estimation problems |
− | + | under noisy measurements, the Kalman filter provides consistent estimates being optimal in various senses. In many tracking | |
− | + | applications however, the equations describing the state propagation and/or that for the measurement process are non-linear. As | |
+ | long as those non-linearities remain mild in a certain sense, relatives of the Kalman filter suffice to provide suitable estimates | ||
+ | with at least approximate consistency.<br /> | ||
+ | The proposed tutorial focusses on a variety of those relatives. It starts by recalling the basic relationships and properties of | ||
+ | the Kalman filter. As a motivation for the later topics, its different optimality properties are shortly discussed as are various | ||
+ | ways to write in particular its update equation (e. g., the Joseph form and the information form). The latter then leads over to | ||
+ | the aspect of data fusion with convex combination (CC) and covariance intersection (CI) as two prominent approaches. The | ||
+ | interacting multiple model (IMM) is presented as a method to deal with jump-Markovian linear systems.<br /> | ||
+ | Starting from those results for linear systems, the generalization to non-linear systems is discussed. The best linear unbiased | ||
+ | estimator (BLUE) filter is introduced and general-purpose approximations like the extended Kalman filter (EKF), the unscented | ||
+ | Kalman filter (UKF), and the Gauss filter (GF) are put in its context, detailed for polar measurements. For that same example, | ||
+ | converted measurement (CM) filters are examined. While being straight-forward to implement, they come with the inherent | ||
+ | problem of generating estimation bias. This problem and proposed solutions are investigated.<br /> | ||
+ | An alternative to converting the measurements to state-(sub-)space is given by a conversion of the states to measurement | ||
+ | space. For the example of angular-only measurements, log-spherical coordinates (LSCs) are presented as such a suitable statespace | ||
+ | representation that is, in particular, capable to deal with the fact that part of the state-space is not observable by the | ||
+ | measurements. Filter initialization, propagation, and update are handled. The discussion on how to use those coordinates for | ||
+ | fusing state estimates from different types of sensors in sense-and-avoid-applications wraps up the proposed tutorial. | ||
'''Presenter:''' [mailto:dietrich.fraenken@airbus.com Dietrich Fränken] | '''Presenter:''' [mailto:dietrich.fraenken@airbus.com Dietrich Fränken] | ||
+ | '''Dietrich Fränken''' is systems engineer and expert for ground target tracking at Airbus DS Electronics and Border Security | ||
+ | GmbH, where he is responsible for tracking and data fusion in various national and international projects. Additionally, he | ||
+ | is a lecturer (Privatdozent) at Ulm University. He presents on a regular basis at conferences, universities, and in front of | ||
+ | customers. He is member of the technical program comittee for symposia and serves as a reviewer for scientific journals. | ||
+ | Research interests include modeling, simulation, and estimation of physical systems, nonlinear filtering, graph and system | ||
+ | theory, and digital signal processing. Dr. Fr¨anken holds a Dipl.-Ing. degree from Bochum University and a Dr.-Ing. degree as | ||
+ | well as a Habilitation degree from Paderborn University, all of them in electrical engineering. | ||
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[[Tutorials| Back to Tutorials]] | [[Tutorials| Back to Tutorials]] | ||
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Latest revision as of 10:37, 29 June 2016
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