Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding

Target tracking is an important task in computer vision. Now many tracking algorithms have achieved great results. However, several challenges still hinder the development of tracking algorithms, such as abrupt motion, occlusion and so on. In order to use the feature information of the target more e...

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Main Authors: Jia Hu, Xiaoping Fan
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9078076/
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spelling doaj-3f66360c6f5d418fb1cd92d16cca4e1e2021-03-30T01:39:23ZengIEEEIEEE Access2169-35362020-01-018767377675110.1109/ACCESS.2020.29902859078076Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse CodingJia Hu0https://orcid.org/0000-0003-1170-3548Xiaoping Fan1School of Computer Science and Engineering, Central South University, Changsha, ChinaSchool of Computer Science and Engineering, Central South University, Changsha, ChinaTarget tracking is an important task in computer vision. Now many tracking algorithms have achieved great results. However, several challenges still hinder the development of tracking algorithms, such as abrupt motion, occlusion and so on. In order to use the feature information of the target more effectively and improve the accuracy and robustness of target tracking, a novel model is designed which is different from the previous discriminative component and generative component, and a novel discriminative-generative collaborative appearance model is presented to combine the two components in this paper. First, for the discriminative component, Locality-Constrained Sparse Coding Algorithm is proposed. In this algorithm, the objective function of the local feature of the target spatial information is determined by fusing the pyramid maximum pool and local feature histogram method. The objective function has three important parameters, which are solved by different optimization strategies. Second, for the generative component, the Histogram of Locality-Constrained Feature Algorithm is proposed. In this algorithm, the locality constraint is served to describe the spatial information of the target as a generative appearance model. Each image patch can be approximated by a linear combination of a local coordinate system formed by a dictionary whose elements are cluster centers that contain the most representative model of the target. Third, this paper designs a collaborative target tracking framework based on semi-supervised learning algorithm with locality constraint coding. The framework can quickly and robustly determine the feature information of the tracking region. The proposed algorithm is evaluated on the comprehensive test platform. The experimental results show that our method is more robust and efficient, and the precision and success rate of our algorithm are improved by 5.4% and 4.7%, respectively.https://ieeexplore.ieee.org/document/9078076/Locality-constrainedcollaborative modelvisual trackingBayesian framework
collection DOAJ
language English
format Article
sources DOAJ
author Jia Hu
Xiaoping Fan
spellingShingle Jia Hu
Xiaoping Fan
Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding
IEEE Access
Locality-constrained
collaborative model
visual tracking
Bayesian framework
author_facet Jia Hu
Xiaoping Fan
author_sort Jia Hu
title Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding
title_short Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding
title_full Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding
title_fullStr Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding
title_full_unstemmed Robust Visual Tracking via a Collaborative Model Based on Locality-Constrained Sparse Coding
title_sort robust visual tracking via a collaborative model based on locality-constrained sparse coding
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Target tracking is an important task in computer vision. Now many tracking algorithms have achieved great results. However, several challenges still hinder the development of tracking algorithms, such as abrupt motion, occlusion and so on. In order to use the feature information of the target more effectively and improve the accuracy and robustness of target tracking, a novel model is designed which is different from the previous discriminative component and generative component, and a novel discriminative-generative collaborative appearance model is presented to combine the two components in this paper. First, for the discriminative component, Locality-Constrained Sparse Coding Algorithm is proposed. In this algorithm, the objective function of the local feature of the target spatial information is determined by fusing the pyramid maximum pool and local feature histogram method. The objective function has three important parameters, which are solved by different optimization strategies. Second, for the generative component, the Histogram of Locality-Constrained Feature Algorithm is proposed. In this algorithm, the locality constraint is served to describe the spatial information of the target as a generative appearance model. Each image patch can be approximated by a linear combination of a local coordinate system formed by a dictionary whose elements are cluster centers that contain the most representative model of the target. Third, this paper designs a collaborative target tracking framework based on semi-supervised learning algorithm with locality constraint coding. The framework can quickly and robustly determine the feature information of the tracking region. The proposed algorithm is evaluated on the comprehensive test platform. The experimental results show that our method is more robust and efficient, and the precision and success rate of our algorithm are improved by 5.4% and 4.7%, respectively.
topic Locality-constrained
collaborative model
visual tracking
Bayesian framework
url https://ieeexplore.ieee.org/document/9078076/
work_keys_str_mv AT jiahu robustvisualtrackingviaacollaborativemodelbasedonlocalityconstrainedsparsecoding
AT xiaopingfan robustvisualtrackingviaacollaborativemodelbasedonlocalityconstrainedsparsecoding
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