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| style="padding:2px;" | <h2 id="mp-tfa-h2" style="margin:3px; background:#ceecf2; font-family:inherit; font-size:120%; font-weight:bold; border:1px solid #a3babf; text-align:left; color:#000; padding:0.2em 0.4em;">T12 Implementations of Random-Finite-Set-Based Multi-Target Filters</h2> | | style="padding:2px;" | <h2 id="mp-tfa-h2" style="margin:3px; background:#ceecf2; font-family:inherit; font-size:120%; font-weight:bold; border:1px solid #a3babf; text-align:left; color:#000; padding:0.2em 0.4em;">T12 Implementations of Random-Finite-Set-Based Multi-Target Filters</h2> | ||
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− | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px">'''Length:''' 1/2 day | + | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px">'''Length:''' 1/2 day |
− | '''Intended Audience:'''Anyone who is interested in multi-target tracking. | + | |
+ | '''Intended Audience:'''Anyone who is interested in multi-target tracking. | ||
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'''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 /> | ||
*(1) Single target tracking in clutter<br /> | *(1) Single target tracking in clutter<br /> | ||
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*(4) PHD and CPHD filters<br /> | *(4) PHD and CPHD filters<br /> | ||
*(5) Generalized Labeled Multi-Bernoulli filter.<br /> | *(5) Generalized Labeled Multi-Bernoulli filter.<br /> | ||
− | 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. | + | |
− | '''Presenter:''' [mailto:ba-ngu.vo@curtin.edu.au Ba-Ngu Vo] and Ba-Tuong Vo | + | '''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 | ||
+ | |||
'''Ba-Ngu Vo''' received his B.Sc. degree in Pure Mathematics and B.E. degree in Electrical Engineering with first class honors in 1994, and PhD in 1997. He had held various research positions before joining the department of Electrical and Electronic Engineering at the University of Melbourne in 2000. In 2010, he joined the School of Electrical Electronic and Computer Engineering at the University of Western Australia as Winthrop Professor and Chair of Signal Processing. Currently he is Professor and Chair of Signals and Systems in the Department of Electrical and Computer Engineering at Curtin University. Prof. Vo is a recipient of the Australian Research Council’s inaugural Future Fellowship His research interests are Signal Processing, Systems Theory and Stochastic Geometry with emphasis on target tracking, robotics, computer vision and space situational awareness. | '''Ba-Ngu Vo''' received his B.Sc. degree in Pure Mathematics and B.E. degree in Electrical Engineering with first class honors in 1994, and PhD in 1997. He had held various research positions before joining the department of Electrical and Electronic Engineering at the University of Melbourne in 2000. In 2010, he joined the School of Electrical Electronic and Computer Engineering at the University of Western Australia as Winthrop Professor and Chair of Signal Processing. Currently he is Professor and Chair of Signals and Systems in the Department of Electrical and Computer Engineering at Curtin University. Prof. Vo is a recipient of the Australian Research Council’s inaugural Future Fellowship His research interests are Signal Processing, Systems Theory and Stochastic Geometry with emphasis on target tracking, robotics, computer vision and space situational awareness. | ||
Revision as of 10:49, 24 February 2016
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