Optimization of the Regularization in Background and Foreground Modeling

Background and foreground modeling is a typical method in the application of computer vision. The current general “low-rank + sparse” model decomposes the frames from the video sequences into low-rank background and sparse foreground. But the sparse assumption in such a model may not conform with th...

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Main Authors: Si-Qi Wang, Xiang-Chu Feng
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:Journal of Applied Mathematics
Online Access:http://dx.doi.org/10.1155/2014/592834
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spelling doaj-3406ecae385a4f1db6e9fda7636399742020-11-24T23:13:56ZengHindawi LimitedJournal of Applied Mathematics1110-757X1687-00422014-01-01201410.1155/2014/592834592834Optimization of the Regularization in Background and Foreground ModelingSi-Qi Wang0Xiang-Chu Feng1School of Mathematics and Statistics, Xidian University, Xi’an 710126, ChinaSchool of Mathematics and Statistics, Xidian University, Xi’an 710126, ChinaBackground and foreground modeling is a typical method in the application of computer vision. The current general “low-rank + sparse” model decomposes the frames from the video sequences into low-rank background and sparse foreground. But the sparse assumption in such a model may not conform with the reality, and the model cannot directly reflect the correlation between the background and foreground either. Thus, we present a novel model to solve this problem by decomposing the arranged data matrix D into low-rank background L and moving foreground M. Here, we only need to give the priori assumption of the background to be low-rank and let the foreground be separated from the background as much as possible. Based on this division, we use a pair of dual norms, nuclear norm and spectral norm, to regularize the foreground and background, respectively. Furthermore, we use a reweighted function instead of the normal norm so as to get a better and faster approximation model. Detailed explanation based on linear algebra about our two models will be presented in this paper. By the observation of the experimental results, we can see that our model can get better background modeling, and even simplified versions of our algorithms perform better than mainstream techniques IALM and GoDec.http://dx.doi.org/10.1155/2014/592834
collection DOAJ
language English
format Article
sources DOAJ
author Si-Qi Wang
Xiang-Chu Feng
spellingShingle Si-Qi Wang
Xiang-Chu Feng
Optimization of the Regularization in Background and Foreground Modeling
Journal of Applied Mathematics
author_facet Si-Qi Wang
Xiang-Chu Feng
author_sort Si-Qi Wang
title Optimization of the Regularization in Background and Foreground Modeling
title_short Optimization of the Regularization in Background and Foreground Modeling
title_full Optimization of the Regularization in Background and Foreground Modeling
title_fullStr Optimization of the Regularization in Background and Foreground Modeling
title_full_unstemmed Optimization of the Regularization in Background and Foreground Modeling
title_sort optimization of the regularization in background and foreground modeling
publisher Hindawi Limited
series Journal of Applied Mathematics
issn 1110-757X
1687-0042
publishDate 2014-01-01
description Background and foreground modeling is a typical method in the application of computer vision. The current general “low-rank + sparse” model decomposes the frames from the video sequences into low-rank background and sparse foreground. But the sparse assumption in such a model may not conform with the reality, and the model cannot directly reflect the correlation between the background and foreground either. Thus, we present a novel model to solve this problem by decomposing the arranged data matrix D into low-rank background L and moving foreground M. Here, we only need to give the priori assumption of the background to be low-rank and let the foreground be separated from the background as much as possible. Based on this division, we use a pair of dual norms, nuclear norm and spectral norm, to regularize the foreground and background, respectively. Furthermore, we use a reweighted function instead of the normal norm so as to get a better and faster approximation model. Detailed explanation based on linear algebra about our two models will be presented in this paper. By the observation of the experimental results, we can see that our model can get better background modeling, and even simplified versions of our algorithms perform better than mainstream techniques IALM and GoDec.
url http://dx.doi.org/10.1155/2014/592834
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AT xiangchufeng optimizationoftheregularizationinbackgroundandforegroundmodeling
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