2011
DOI: 10.1017/cbo9780511975837
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Fundamentals of Object Tracking

Abstract: Kalman filter, particle filter, IMM, PDA, ITS, random sets... The number of useful object-tracking methods is exploding. But how are they related? How do they help track everything from aircraft, missiles and extra-terrestrial objects to people and lymphocyte cells? How can they be adapted to novel applications? Fundamentals of Object Tracking tells you how. Starting with the generic object-tracking problem, it outlines the generic Bayesian solution. It then shows systematically how to formulate the major trac… Show more

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Cited by 319 publications
(344 citation statements)
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“…The transition density is induced by the system dynamic equation (3.9a), while the measurement likelihood is generated from the measurement equation (3.9b) according to [53,166] …”
Section: Stochastic State Space Systemsmentioning
confidence: 99%
See 4 more Smart Citations
“…The transition density is induced by the system dynamic equation (3.9a), while the measurement likelihood is generated from the measurement equation (3.9b) according to [53,166] …”
Section: Stochastic State Space Systemsmentioning
confidence: 99%
“…if the initial conditions are chosen wrongly [17,113]. The UKF presented in the following does not suffer from the first drawback and often performs better with regard to false initial conditions [53].…”
Section: Extended Kalman Filtermentioning
confidence: 99%
See 3 more Smart Citations