Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating

<p>Abstract</p> <p>A new collaborative tracking approach is introduced which takes advantage of classified features. The core of this tracker is a single tracker that is able to detect occlusions and classify features contributing in localizing the object. Features are classified i...

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Main Authors: Asadi M, Monti F, Regazzoni CS
Format: Article
Language:English
Published: SpringerOpen 2008-01-01
Series:EURASIP Journal on Image and Video Processing
Online Access:http://jivp.eurasipjournals.com/content/2008/274349
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spelling doaj-d96a79e6f5ca4a6b8cce12470aa738ee2020-11-24T22:01:27ZengSpringerOpenEURASIP Journal on Image and Video Processing1687-51761687-52812008-01-0120081274349Feature Classification for Robust Shape-Based Collaborative Tracking and Model UpdatingAsadi MMonti FRegazzoni CS<p>Abstract</p> <p>A new collaborative tracking approach is introduced which takes advantage of classified features. The core of this tracker is a single tracker that is able to detect occlusions and classify features contributing in localizing the object. Features are classified in four classes: good, suspicious, malicious, and neutral. Good features are estimated to be parts of the object with a high degree of confidence. Suspicious ones have a lower, yet significantly high, degree of confidence to be a part of the object. Malicious features are estimated to be generated by clutter, while neutral features are characterized with not a sufficient level of uncertainty to be assigned to the tracked object. When there is no occlusion, the single tracker acts alone, and the feature classification module helps it to overcome distracters such as still objects or little clutter in the scene. When more than one desired moving objects bounding boxes are close enough, the collaborative tracker is activated and it exploits the advantages of the classified features to localize each object precisely as well as updating the objects shape models more precisely by assigning again the classified features to the objects. The experimental results show successful tracking compared with the collaborative tracker that does not use the classified features. Moreover, more precise updated object shape models will be shown.</p>http://jivp.eurasipjournals.com/content/2008/274349
collection DOAJ
language English
format Article
sources DOAJ
author Asadi M
Monti F
Regazzoni CS
spellingShingle Asadi M
Monti F
Regazzoni CS
Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating
EURASIP Journal on Image and Video Processing
author_facet Asadi M
Monti F
Regazzoni CS
author_sort Asadi M
title Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating
title_short Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating
title_full Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating
title_fullStr Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating
title_full_unstemmed Feature Classification for Robust Shape-Based Collaborative Tracking and Model Updating
title_sort feature classification for robust shape-based collaborative tracking and model updating
publisher SpringerOpen
series EURASIP Journal on Image and Video Processing
issn 1687-5176
1687-5281
publishDate 2008-01-01
description <p>Abstract</p> <p>A new collaborative tracking approach is introduced which takes advantage of classified features. The core of this tracker is a single tracker that is able to detect occlusions and classify features contributing in localizing the object. Features are classified in four classes: good, suspicious, malicious, and neutral. Good features are estimated to be parts of the object with a high degree of confidence. Suspicious ones have a lower, yet significantly high, degree of confidence to be a part of the object. Malicious features are estimated to be generated by clutter, while neutral features are characterized with not a sufficient level of uncertainty to be assigned to the tracked object. When there is no occlusion, the single tracker acts alone, and the feature classification module helps it to overcome distracters such as still objects or little clutter in the scene. When more than one desired moving objects bounding boxes are close enough, the collaborative tracker is activated and it exploits the advantages of the classified features to localize each object precisely as well as updating the objects shape models more precisely by assigning again the classified features to the objects. The experimental results show successful tracking compared with the collaborative tracker that does not use the classified features. Moreover, more precise updated object shape models will be shown.</p>
url http://jivp.eurasipjournals.com/content/2008/274349
work_keys_str_mv AT asadim featureclassificationforrobustshapebasedcollaborativetrackingandmodelupdating
AT montif featureclassificationforrobustshapebasedcollaborativetrackingandmodelupdating
AT regazzonics featureclassificationforrobustshapebasedcollaborativetrackingandmodelupdating
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