Fast Visual Tracking With Robustifying Kernelized Correlation Filters

Robust visual tracking is a challenging work because the target object suffers appearance variations over time. Tracking algorithms based on correlation filter have presently attracted much attention because of their high efficiency and computation speed. However, these algorithms can easily drift f...

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Main Authors: Qianbo Liu, Guoqing Hu, Md Mojahidul Islam
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8423606/
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spelling doaj-606409af306d402ebb2964877b72c5972021-03-29T20:51:33ZengIEEEIEEE Access2169-35362018-01-016433024331410.1109/ACCESS.2018.28618278423606Fast Visual Tracking With Robustifying Kernelized Correlation FiltersQianbo Liu0https://orcid.org/0000-0002-4334-065XGuoqing Hu1Md Mojahidul Islam2School of Mechanical and Automotive Engineering, South China University of Technology, Guangzhou, ChinaSchool of Mechanical and Automotive Engineering, South China University of Technology, Guangzhou, ChinaSchool of Mechanical and Automotive Engineering, South China University of Technology, Guangzhou, ChinaRobust visual tracking is a challenging work because the target object suffers appearance variations over time. Tracking algorithms based on correlation filter have presently attracted much attention because of their high efficiency and computation speed. However, these algorithms can easily drift for the noisy updates. Moreover, they are out of action and cannot re-track when trackers failure caused by heavy occlusion or target being out of view. In this paper, we propose a robust correlation filter that is constructed by considering all the extracted target appearances from the initial image to the current image. The numerator and denominator of the filter model are updated separately instead of linearly interpolated only by storing the current model. Strategies, such as reducing feature dimensionality and interpolating correlation scores, are investigated to reduce computational cost for fast tracking. Occlusion and fast motion problems can be effectively solved by the expansion of the search area. In addition, model updates occur under the condition of a confidence metric (i.e., peak-to-sidelobe ratio) threshold. Comprehensive experiments were conducted on object tracking data sets and the results showed that our method performs well compared to the other competitive methods. Moreover, it runs on a single central processing unit at a speed of 69.5 frames per second, which is suitable for real-time application.https://ieeexplore.ieee.org/document/8423606/Adaptive model updatingfeature dimensionality reductionkernel correlation filtersvisual object tracking
collection DOAJ
language English
format Article
sources DOAJ
author Qianbo Liu
Guoqing Hu
Md Mojahidul Islam
spellingShingle Qianbo Liu
Guoqing Hu
Md Mojahidul Islam
Fast Visual Tracking With Robustifying Kernelized Correlation Filters
IEEE Access
Adaptive model updating
feature dimensionality reduction
kernel correlation filters
visual object tracking
author_facet Qianbo Liu
Guoqing Hu
Md Mojahidul Islam
author_sort Qianbo Liu
title Fast Visual Tracking With Robustifying Kernelized Correlation Filters
title_short Fast Visual Tracking With Robustifying Kernelized Correlation Filters
title_full Fast Visual Tracking With Robustifying Kernelized Correlation Filters
title_fullStr Fast Visual Tracking With Robustifying Kernelized Correlation Filters
title_full_unstemmed Fast Visual Tracking With Robustifying Kernelized Correlation Filters
title_sort fast visual tracking with robustifying kernelized correlation filters
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Robust visual tracking is a challenging work because the target object suffers appearance variations over time. Tracking algorithms based on correlation filter have presently attracted much attention because of their high efficiency and computation speed. However, these algorithms can easily drift for the noisy updates. Moreover, they are out of action and cannot re-track when trackers failure caused by heavy occlusion or target being out of view. In this paper, we propose a robust correlation filter that is constructed by considering all the extracted target appearances from the initial image to the current image. The numerator and denominator of the filter model are updated separately instead of linearly interpolated only by storing the current model. Strategies, such as reducing feature dimensionality and interpolating correlation scores, are investigated to reduce computational cost for fast tracking. Occlusion and fast motion problems can be effectively solved by the expansion of the search area. In addition, model updates occur under the condition of a confidence metric (i.e., peak-to-sidelobe ratio) threshold. Comprehensive experiments were conducted on object tracking data sets and the results showed that our method performs well compared to the other competitive methods. Moreover, it runs on a single central processing unit at a speed of 69.5 frames per second, which is suitable for real-time application.
topic Adaptive model updating
feature dimensionality reduction
kernel correlation filters
visual object tracking
url https://ieeexplore.ieee.org/document/8423606/
work_keys_str_mv AT qianboliu fastvisualtrackingwithrobustifyingkernelizedcorrelationfilters
AT guoqinghu fastvisualtrackingwithrobustifyingkernelizedcorrelationfilters
AT mdmojahidulislam fastvisualtrackingwithrobustifyingkernelizedcorrelationfilters
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