PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS

Our work addresses the problem of long-term visual people tracking in complex environments. Tracking a varying number of objects entails the problem of associating detected objects to tracked targets. To overcome the data association problem, we apply a Tracking-by-Detection strategy that uses Rand...

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Bibliographic Details
Main Authors: T. Klinger, D. Muhle
Format: Article
Language:English
Published: Copernicus Publications 2012-07-01
Series:The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XXXIX-B3/403/2012/isprsarchives-XXXIX-B3-403-2012.pdf
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spelling doaj-6e5bca2b48404c65b5d5008bb97163c92020-11-25T00:27:22ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342012-07-01XXXIX-B340340710.5194/isprsarchives-XXXIX-B3-403-2012PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTST. Klinger0D. Muhle1Leibniz Universitaet Hannover, Institute of Photogrammetry and GeoInformation, Nienburger Strasse 1, 30167 Hannover, GermanyLeibniz Universitaet Hannover, Institute of Photogrammetry and GeoInformation, Nienburger Strasse 1, 30167 Hannover, GermanyOur work addresses the problem of long-term visual people tracking in complex environments. Tracking a varying number of objects entails the problem of associating detected objects to tracked targets. To overcome the data association problem, we apply a Tracking-by-Detection strategy that uses Randomized Forests as a classifier together with a Kalman filter. Randomized Forests build a strong classifier for multi-class problems through aggregating simple decision trees. Due to their modular setup, Randomized Forests can be built incrementally, which makes them useful for unsupervised learning of object features in real-time. New training samples can be incorporated on the fly, while not drifting away from previously learnt features. To support further analysis of the automatically generated trajectories, we annotate them with quality metrics based on the association confidence. To build the metrics we analyse the confidence values that derive from the Randomized Forests and the similarity of detected and tracked objects. We evaluate the performance of the overall approach with respect to available reference data of people crossing the scene.https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XXXIX-B3/403/2012/isprsarchives-XXXIX-B3-403-2012.pdf
collection DOAJ
language English
format Article
sources DOAJ
author T. Klinger
D. Muhle
spellingShingle T. Klinger
D. Muhle
PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
author_facet T. Klinger
D. Muhle
author_sort T. Klinger
title PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS
title_short PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS
title_full PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS
title_fullStr PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS
title_full_unstemmed PERSISTENT OBJECT TRACKING WITH RANDOMIZED FORESTS
title_sort persistent object tracking with randomized forests
publisher Copernicus Publications
series The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
issn 1682-1750
2194-9034
publishDate 2012-07-01
description Our work addresses the problem of long-term visual people tracking in complex environments. Tracking a varying number of objects entails the problem of associating detected objects to tracked targets. To overcome the data association problem, we apply a Tracking-by-Detection strategy that uses Randomized Forests as a classifier together with a Kalman filter. Randomized Forests build a strong classifier for multi-class problems through aggregating simple decision trees. Due to their modular setup, Randomized Forests can be built incrementally, which makes them useful for unsupervised learning of object features in real-time. New training samples can be incorporated on the fly, while not drifting away from previously learnt features. To support further analysis of the automatically generated trajectories, we annotate them with quality metrics based on the association confidence. To build the metrics we analyse the confidence values that derive from the Randomized Forests and the similarity of detected and tracked objects. We evaluate the performance of the overall approach with respect to available reference data of people crossing the scene.
url https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XXXIX-B3/403/2012/isprsarchives-XXXIX-B3-403-2012.pdf
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