Journal Article10.1117/1.JEI.28.2.021008
Improved target tracking algorithm based on kernelized correlation filter
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TL;DR: An improved object tracking algorithm based on kernelized correlation filter (KCF), which can overcome the drawback of traditional KCF algorithms in that they cannot effectively adapt to target-scale variations and target occlusion in tracking is proposed.
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Abstract: We propose an improved object tracking algorithm based on kernelized correlation filter (KCF), which can overcome the drawback of traditional KCF algorithms in that they cannot effectively adapt to target-scale variations and target occlusion in tracking. First, the target-scale pyramid is built, whose histogram of oriented gradients feature extracted of every layer multiplied by the correlation filters; the maximum response of current scale of the filters is the best target scale. In addition, the improved algorithm is combined with the improved correlation filter framework, and the background information around the target is appropriately increased. When the target is occluded, the background information can be effectively used to track the target. The proposed algorithm is validated on the benchmark evaluation and compared with the traditional algorithms, such as KCF and circulation structure of tracking-by-detection with kernel. The results indicate that our tracking accuracy can reach 66.9% and the success rate can be 58.2. When the target is scale variation, the accuracy and success rate increase by 1.1% and 10.3%, respectively, compared with KCF. If the tracked target is occluded, a second improved algorithm is compared with the detection algorithm which only adds the scale detection, the tracking accuracy increases by 8%, and the success rate increases by 4.9%.
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Citations
An improved Kernelized Correlation Filter tracking algorithm based on multi-channel memory model
TL;DR: The experimental results show that the proposed improved Kernelized Correlation Filter (KCF) tracking algorithm can achieve accurate and robust target tracking under the conditions of occlusions, deformations and background clutters.
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Improved hyperspectral target tracking algorithm
Weiping Li,Mingjing Li,Lixia Cao +2 more
- 23 Sep 2022
TL;DR: In this article , an improved material-based background sensing correlation filter in target deformation was proposed to improve the tracking success rate and tracking accuracy compared with the original MHT algorithm.
1
KCF-Match Target Tracking Algorithm for Tracking Swing Angle of Coupler Based on Video
Jiahao Du,Na Qin,Yiming Zhang,Bi Wu,Shiqian Chen +4 more
- 14 May 2021
TL;DR: In this paper, a kernelized correlation filter-template matching (KCF-Match) target tracking algorithm is proposed to track the position and calculate the swing angles of the couplers.
1
Improved hyperspectral target tracking algorithm
23 Sep 2022
TL;DR: In this article , an improved material-based background sensing correlation filter in target deformation was proposed to improve the tracking success rate and tracking accuracy compared with the original MHT algorithm.
1
KCF Tracking Algorithm Based on Outlier Detection
Yan-fei Liu,Yanhui He,Qi Tian,Jingjing Yang +3 more
- 01 Jan 2019
TL;DR: The anomaly detection method as the target loss warning mechanism based on KCF, and at the same time, a target loss re-detection mechanism is proposed that detects the peak value of the response of each frame and solves the problem that the KCF tracker can recover the target to keep tracking after the target is lost.