An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods

In view of the problem that the traditional tracker does not adapt to the large displacement or abrupt motion well, the optimization method attracts more and more attention for a robust tracker. Considering population based has high feasibility for avoiding local optimal, the method of swarm optimiz...

Full description

Bibliographic Details
Main Authors: Huanlong Zhang, Xiujiao Zhang, Yan Wang, Kunfeng Shi, Jianwei Zhang, Chao Li
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8476544/
id doaj-20a9d5f6eb6846fba26abfb30bd84187
record_format Article
spelling doaj-20a9d5f6eb6846fba26abfb30bd841872021-03-29T21:39:42ZengIEEEIEEE Access2169-35362018-01-016753837539410.1109/ACCESS.2018.28725248476544An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking MethodsHuanlong Zhang0Xiujiao Zhang1https://orcid.org/0000-0001-9962-5526Yan Wang2Kunfeng Shi3Jianwei Zhang4Chao Li5College of Electric and Information Engineering, Zhengzhou University of Light Industry, Zhengzhou, ChinaCollege of Electric and Information Engineering, Zhengzhou University of Light Industry, Zhengzhou, ChinaCollege of Electric and Information Engineering, Zhengzhou University of Light Industry, Zhengzhou, ChinaCollege of Electric and Information Engineering, Zhengzhou University of Light Industry, Zhengzhou, ChinaSoftware Engineering College, Zhengzhou University of Light Industry, Zhengzhou, ChinaShandong SNTON Optical Material Technology Co. Ltd., Dongying, ChinaIn view of the problem that the traditional tracker does not adapt to the large displacement or abrupt motion well, the optimization method attracts more and more attention for a robust tracker. Considering population based has high feasibility for avoiding local optimal, the method of swarm optimization is introduced to visual tracking. These methods convert visual tracking to search the optimal solution in global. To show their merits, this paper reviews and evaluates three relatively classical swarm optimization-based tracking algorithms. These algorithms are ant lion optimization, cuckoo search, and particle swarm optimization. Their running results are compared with those of the probabilistic optimization algorithm, namely, simulated annealing. The experiments demonstrate the strength as well as the weakness of these methods. For illustrating their operational efficiency, run time is recorded and the convergence speed is analyzed. In addition, quantitative and qualitative analysis experiments are performed to interpret the accuracy of the tracking methods. In addition, the relation between parameters and tracking results is explained.https://ieeexplore.ieee.org/document/8476544/Experimental comparisonswarm optimizationabrupt motionvisual tracking
collection DOAJ
language English
format Article
sources DOAJ
author Huanlong Zhang
Xiujiao Zhang
Yan Wang
Kunfeng Shi
Jianwei Zhang
Chao Li
spellingShingle Huanlong Zhang
Xiujiao Zhang
Yan Wang
Kunfeng Shi
Jianwei Zhang
Chao Li
An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods
IEEE Access
Experimental comparison
swarm optimization
abrupt motion
visual tracking
author_facet Huanlong Zhang
Xiujiao Zhang
Yan Wang
Kunfeng Shi
Jianwei Zhang
Chao Li
author_sort Huanlong Zhang
title An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods
title_short An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods
title_full An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods
title_fullStr An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods
title_full_unstemmed An Experimental Comparison of Swarm Optimization Based Abrupt Motion Tracking Methods
title_sort experimental comparison of swarm optimization based abrupt motion tracking methods
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description In view of the problem that the traditional tracker does not adapt to the large displacement or abrupt motion well, the optimization method attracts more and more attention for a robust tracker. Considering population based has high feasibility for avoiding local optimal, the method of swarm optimization is introduced to visual tracking. These methods convert visual tracking to search the optimal solution in global. To show their merits, this paper reviews and evaluates three relatively classical swarm optimization-based tracking algorithms. These algorithms are ant lion optimization, cuckoo search, and particle swarm optimization. Their running results are compared with those of the probabilistic optimization algorithm, namely, simulated annealing. The experiments demonstrate the strength as well as the weakness of these methods. For illustrating their operational efficiency, run time is recorded and the convergence speed is analyzed. In addition, quantitative and qualitative analysis experiments are performed to interpret the accuracy of the tracking methods. In addition, the relation between parameters and tracking results is explained.
topic Experimental comparison
swarm optimization
abrupt motion
visual tracking
url https://ieeexplore.ieee.org/document/8476544/
work_keys_str_mv AT huanlongzhang anexperimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT xiujiaozhang anexperimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT yanwang anexperimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT kunfengshi anexperimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT jianweizhang anexperimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT chaoli anexperimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT huanlongzhang experimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT xiujiaozhang experimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT yanwang experimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT kunfengshi experimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT jianweizhang experimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
AT chaoli experimentalcomparisonofswarmoptimizationbasedabruptmotiontrackingmethods
_version_ 1724192475099168768