Bernoulli forward-backward smoothing for joint target detection and tracking
journal contribution
posted on 2024-11-01, 23:18 authored by Ba-Tuong Vo, Daniel Clark, Ba-Ngu Vo, Branko RisticBranko RisticIn this correspondence, we derive a forward-backward smoother for joint target detection and estimation and propose a sequential Monte Carlo implementation. We model the target by a Bernoulli random finite set since the target can be in one of two present or absent modes. Finite set statistics is used to derive the smoothing recursion. Our results indicate that smoothing has two distinct advantages over just using filtering: First, we are able to more accurately identify the appearance and disappearance of a target in the scene, and second, we can provide improved state estimates when the target exists. © 2011 IEEE.
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Journal
IEEE Transactions on Signal ProcessingVolume
59Issue
9Start page
4473End page
4477Total pages
5Publisher
Institute of Electrical and Electronics EngineersPlace published
United StatesLanguage
EnglishCopyright
© 2011 IEEEFormer Identifier
2006057405Esploro creation date
2020-06-22Fedora creation date
2015-12-22Usage metrics
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