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| style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px">'''Length:''' 3 hours (half day) | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px">'''Length:''' 3 hours (half day) | ||
− | '''Intended Audience:'''Anyone who is interested in multi-target tracking. | + | '''Intended Audience:''' Anyone who is interested in multi-target tracking. |
'''Description:''' The Finite Set Statistics framework for multi-sensor multi-target tracking has attached considerable interest in recent years. It provides a unified perspective of multi-target tracking in a very intuitive manner by drawing direct parallels with the simpler problem of single-target tracking. This framework has lead to the development of multi-target filters such as the Probability Hypothesis Density (PHD), Cardinalized PHD (CPHD), Multi-Bernoulli filters and recently, the Generalized Labeled Multi-Bernoulli filter. In this tutorial, we show how these filters are implemented and illustrate via Matlab how these filters work. In particular, the tutorial will present the implementations of<br /> | '''Description:''' The Finite Set Statistics framework for multi-sensor multi-target tracking has attached considerable interest in recent years. It provides a unified perspective of multi-target tracking in a very intuitive manner by drawing direct parallels with the simpler problem of single-target tracking. This framework has lead to the development of multi-target filters such as the Probability Hypothesis Density (PHD), Cardinalized PHD (CPHD), Multi-Bernoulli filters and recently, the Generalized Labeled Multi-Bernoulli filter. In this tutorial, we show how these filters are implemented and illustrate via Matlab how these filters work. In particular, the tutorial will present the implementations of<br /> | ||
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Matlab code will be provided to the participants. It is envisaged that participants will come away with sufficient know-how to implement and apply these algorithms in their work. | Matlab code will be provided to the participants. It is envisaged that participants will come away with sufficient know-how to implement and apply these algorithms in their work. | ||
− | '''Prerequisites:'''Working knowledge of random variable, probability density function, Gaussian distribution, and concepts such as state space models. Taking Ron Mahler's companion tutorial " A Finite-Set Statistics Prime" is desirable. This tutorial is also a prerequisite for Stephan Reuter and Karl Granstrom's tutorial on extended target tracking. | + | '''Prerequisites:''' Working knowledge of random variable, probability density function, Gaussian distribution, and concepts such as state space models. Taking Ron Mahler's companion tutorial " A Finite-Set Statistics Prime" is desirable. This tutorial is also a prerequisite for Stephan Reuter and Karl Granstrom's tutorial on extended target tracking. |
'''Presenter:''' [mailto:ba-ngu.vo@curtin.edu.au Ba-Ngu Vo] and Ba-Tuong Vo | '''Presenter:''' [mailto:ba-ngu.vo@curtin.edu.au Ba-Ngu Vo] and Ba-Tuong Vo |
Revision as of 10:51, 24 February 2016
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