Long Time Object Tracking Using Structural Features With Particle Filter

Although long time tracking is an old research subject, it is still among the research subject actively attracting the attention of researchers and it is one of the research topic many studies conducted about. Object tracking with particle filter, known to be among stochastic methods, models dynamic...

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Main Author: Muhammet Fatih TALU
Format: Article
Language:English
Published: Gazi University 2017-01-01
Series:Gazi Üniversitesi Fen Bilimleri Dergisi
Subjects:
Online Access:http://dergipark.gov.tr/download/article-file/290263
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spelling doaj-1e3e5136faaf48508bda9f91307cbc002021-09-02T09:52:45ZengGazi UniversityGazi Üniversitesi Fen Bilimleri Dergisi2147-95262017-01-0151107118Long Time Object Tracking Using Structural Features With Particle FilterMuhammet Fatih TALUAlthough long time tracking is an old research subject, it is still among the research subject actively attracting the attention of researchers and it is one of the research topic many studies conducted about. Object tracking with particle filter, known to be among stochastic methods, models dynamics related to tracking subjects by taking advantage of state space variables, implemented in this study. Presenting improvements in the measurement models used to determine the weight of the particles, a new measurement model based on structural features of similarity coefficients used by SSIM with adaptive histogram equalization and weighting center of the object has been developed in The Particle Filter. Experimental results show that the proposed measurement model in object tracking increase classical tracking performance by at least %18.59. http://dergipark.gov.tr/download/article-file/290263Particle FilterLong Time Object TrackingImage Similarity MetricsModel Free Object Tracking
collection DOAJ
language English
format Article
sources DOAJ
author Muhammet Fatih TALU
spellingShingle Muhammet Fatih TALU
Long Time Object Tracking Using Structural Features With Particle Filter
Gazi Üniversitesi Fen Bilimleri Dergisi
Particle Filter
Long Time Object Tracking
Image Similarity Metrics
Model Free Object Tracking
author_facet Muhammet Fatih TALU
author_sort Muhammet Fatih TALU
title Long Time Object Tracking Using Structural Features With Particle Filter
title_short Long Time Object Tracking Using Structural Features With Particle Filter
title_full Long Time Object Tracking Using Structural Features With Particle Filter
title_fullStr Long Time Object Tracking Using Structural Features With Particle Filter
title_full_unstemmed Long Time Object Tracking Using Structural Features With Particle Filter
title_sort long time object tracking using structural features with particle filter
publisher Gazi University
series Gazi Üniversitesi Fen Bilimleri Dergisi
issn 2147-9526
publishDate 2017-01-01
description Although long time tracking is an old research subject, it is still among the research subject actively attracting the attention of researchers and it is one of the research topic many studies conducted about. Object tracking with particle filter, known to be among stochastic methods, models dynamics related to tracking subjects by taking advantage of state space variables, implemented in this study. Presenting improvements in the measurement models used to determine the weight of the particles, a new measurement model based on structural features of similarity coefficients used by SSIM with adaptive histogram equalization and weighting center of the object has been developed in The Particle Filter. Experimental results show that the proposed measurement model in object tracking increase classical tracking performance by at least %18.59.
topic Particle Filter
Long Time Object Tracking
Image Similarity Metrics
Model Free Object Tracking
url http://dergipark.gov.tr/download/article-file/290263
work_keys_str_mv AT muhammetfatihtalu longtimeobjecttrackingusingstructuralfeatureswithparticlefilter
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