Performance of correlational filtering and deep learning based single target tracking algorithms / ZhongMing Liao and Azlan Ismail

ZhongMing, Liao and Ismail, Azlan (2023) Performance of correlational filtering and deep learning based single target tracking algorithms / ZhongMing Liao and Azlan Ismail. Journal of Smart Science and Technology, 3 (1): 7. pp. 63-79. ISSN 2785-924X

Abstract

Visual target tracking is an important research element in the field of computer vision. The applications are very wide. In terms of the computer vision field, deep learning has achieved remarkable results. It has broken through many complex problems that are difficult to be solved by traditional algorithms. Therefore, reviewing the visual target tracking algorithms based on deep learning from different perspectives is important. This paper closely follows the tracking framework of target tracking algorithms and discusses in detail the traditional visual target tracking methods, the mainstream single target tracking algorithms based on correlation filtering, and the video single target tracking algorithms based on deep learning. Experiments were conducted on OTB100 and VOT2018 benchmark datasets, and the experimental data obtained were analyzed to derive two visual single-target tracking algorithms with optimal tracking performance. Finally, the future development of tracking algorithms is envisioned.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
ZhongMing, Liao
UNSPECIFIED
Ismail, Azlan
UNSPECIFIED
Subjects: H Social Sciences > H Social Sciences (General)
H Social Sciences > H Social Sciences (General) > Research
Divisions: Universiti Teknologi MARA, Sarawak
Journal or Publication Title: Journal of Smart Science and Technology
UiTM Journal Collections: UiTM Journal > Journal of Smart Science and Technology (JSST)
ISSN: 2785-924X
Volume: 3
Number: 1
Page Range: pp. 63-79
Keywords: Deep learning, Correlation filtering, Target tracking algorithms
Date: March 2023
URI: https://ir.uitm.edu.my/id/eprint/79851
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