Background subtraction using ensembles of classifiers with an extended feature set

The limitations of foreground segmentation in difficult environments using standard color space features often result in poor performance during autonomous tracking. This work presents a new approach for classification of foreground and background pixels in image sequences by employing an ensemble o...

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Main Author: Klare, Brendan F
Format: Others
Published: Scholar Commons 2008
Subjects:
Online Access:https://scholarcommons.usf.edu/etd/338
https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=1337&context=etd
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spelling ndltd-USF-oai-scholarcommons.usf.edu-etd-13372019-10-04T05:16:50Z Background subtraction using ensembles of classifiers with an extended feature set Klare, Brendan F The limitations of foreground segmentation in difficult environments using standard color space features often result in poor performance during autonomous tracking. This work presents a new approach for classification of foreground and background pixels in image sequences by employing an ensemble of classifiers, each operating on a different feature type such as the three RGB features, gradient magnitude and orientation features, and eight Haar features. These thirteen features are used in an ensemble classifier where each classifier operates on a single image feature. Each classifier implements a Mixture of Gaussians-based unsupervised background classification algorithm. The non-thresholded, classification decision score of each classifier are fused together by taking the average of their outputs and creating one single hypothesis. The results of using the ensemble classifier on three separate and distinct data sets are compared to using only RGB features through ROC graphs. The extended feature vector outperforms the RGB features on all three data sets, and shows a large scale improvement on two of the three data sets. The two data sets with the greatest improvements are both outdoor data sets with global illumination changes and the other has many local illumination changes. When using the entire feature set, to operate at a 90% true positive rate, the per pixel, false alarm rate is reduced five times in one data set and six times in the other data set. 2008-06-30T07:00:00Z text application/pdf https://scholarcommons.usf.edu/etd/338 https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=1337&context=etd default Graduate Theses and Dissertations Scholar Commons Tracking Classification Segmentation Fusion Illumination invariant American Studies Arts and Humanities
collection NDLTD
format Others
sources NDLTD
topic Tracking
Classification
Segmentation
Fusion
Illumination invariant
American Studies
Arts and Humanities
spellingShingle Tracking
Classification
Segmentation
Fusion
Illumination invariant
American Studies
Arts and Humanities
Klare, Brendan F
Background subtraction using ensembles of classifiers with an extended feature set
description The limitations of foreground segmentation in difficult environments using standard color space features often result in poor performance during autonomous tracking. This work presents a new approach for classification of foreground and background pixels in image sequences by employing an ensemble of classifiers, each operating on a different feature type such as the three RGB features, gradient magnitude and orientation features, and eight Haar features. These thirteen features are used in an ensemble classifier where each classifier operates on a single image feature. Each classifier implements a Mixture of Gaussians-based unsupervised background classification algorithm. The non-thresholded, classification decision score of each classifier are fused together by taking the average of their outputs and creating one single hypothesis. The results of using the ensemble classifier on three separate and distinct data sets are compared to using only RGB features through ROC graphs. The extended feature vector outperforms the RGB features on all three data sets, and shows a large scale improvement on two of the three data sets. The two data sets with the greatest improvements are both outdoor data sets with global illumination changes and the other has many local illumination changes. When using the entire feature set, to operate at a 90% true positive rate, the per pixel, false alarm rate is reduced five times in one data set and six times in the other data set.
author Klare, Brendan F
author_facet Klare, Brendan F
author_sort Klare, Brendan F
title Background subtraction using ensembles of classifiers with an extended feature set
title_short Background subtraction using ensembles of classifiers with an extended feature set
title_full Background subtraction using ensembles of classifiers with an extended feature set
title_fullStr Background subtraction using ensembles of classifiers with an extended feature set
title_full_unstemmed Background subtraction using ensembles of classifiers with an extended feature set
title_sort background subtraction using ensembles of classifiers with an extended feature set
publisher Scholar Commons
publishDate 2008
url https://scholarcommons.usf.edu/etd/338
https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=1337&context=etd
work_keys_str_mv AT klarebrendanf backgroundsubtractionusingensemblesofclassifierswithanextendedfeatureset
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