Multi-object filtering with second-order moment statistics

The focus of this work lies on multi-object estimation techniques, in particular the Probability Hypothesis Density (PHD) filter and its variations. The PHD filter is a recursive, closed-form estimation technique which tracks a population of objects as a group, hence avoiding the combinatorics of da...

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Main Author: Schlangen, Isabel Christiane
Other Authors: Clark, Daniel ; Rickman, Colin
Published: Heriot-Watt University 2017
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.754488
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spelling ndltd-bl.uk-oai-ethos.bl.uk-7544882019-02-05T03:26:05ZMulti-object filtering with second-order moment statisticsSchlangen, Isabel ChristianeClark, Daniel ; Rickman, Colin2017The focus of this work lies on multi-object estimation techniques, in particular the Probability Hypothesis Density (PHD) filter and its variations. The PHD filter is a recursive, closed-form estimation technique which tracks a population of objects as a group, hence avoiding the combinatorics of data association and therefore yielding a powerful alternative to methods like Multi-Hypothesis Tracking (MHT). Its relatively low computational complexity stems from strong modelling assumptions which have been relaxed in the Cardinalized PHD (CPHD) filter to gain more flexibility, but at a much higher computational cost. We are concerned with the development of two suitable alternatives which give a compromise between the simplicity and elegance of the PHD filter and the versatility of the CPHD filter. The first alternative generalises the clutter model of the PHD filter, leading to more accurate estimation results in the presence of highly variable numbers of false alarms; the second alternative provides a closed-form recursion of a second-order PHD filter that propagates variance information along with the target intensity, thus providing more information than the PHD filter while keeping a much lower computational complexity than the CPHD filter. The discussed filters are applied on simulated data, furthermore their practicality is demonstrated on live-cell super-resolution microscopy images to provide powerful techniques for molecule and cell tracking, stage drift estimation and estimation of background noise.Heriot-Watt Universityhttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.754488http://hdl.handle.net/10399/3337Electronic Thesis or Dissertation
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sources NDLTD
description The focus of this work lies on multi-object estimation techniques, in particular the Probability Hypothesis Density (PHD) filter and its variations. The PHD filter is a recursive, closed-form estimation technique which tracks a population of objects as a group, hence avoiding the combinatorics of data association and therefore yielding a powerful alternative to methods like Multi-Hypothesis Tracking (MHT). Its relatively low computational complexity stems from strong modelling assumptions which have been relaxed in the Cardinalized PHD (CPHD) filter to gain more flexibility, but at a much higher computational cost. We are concerned with the development of two suitable alternatives which give a compromise between the simplicity and elegance of the PHD filter and the versatility of the CPHD filter. The first alternative generalises the clutter model of the PHD filter, leading to more accurate estimation results in the presence of highly variable numbers of false alarms; the second alternative provides a closed-form recursion of a second-order PHD filter that propagates variance information along with the target intensity, thus providing more information than the PHD filter while keeping a much lower computational complexity than the CPHD filter. The discussed filters are applied on simulated data, furthermore their practicality is demonstrated on live-cell super-resolution microscopy images to provide powerful techniques for molecule and cell tracking, stage drift estimation and estimation of background noise.
author2 Clark, Daniel ; Rickman, Colin
author_facet Clark, Daniel ; Rickman, Colin
Schlangen, Isabel Christiane
author Schlangen, Isabel Christiane
spellingShingle Schlangen, Isabel Christiane
Multi-object filtering with second-order moment statistics
author_sort Schlangen, Isabel Christiane
title Multi-object filtering with second-order moment statistics
title_short Multi-object filtering with second-order moment statistics
title_full Multi-object filtering with second-order moment statistics
title_fullStr Multi-object filtering with second-order moment statistics
title_full_unstemmed Multi-object filtering with second-order moment statistics
title_sort multi-object filtering with second-order moment statistics
publisher Heriot-Watt University
publishDate 2017
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.754488
work_keys_str_mv AT schlangenisabelchristiane multiobjectfilteringwithsecondordermomentstatistics
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