Electronics Optics & Control, Volume. 28, Issue 8, 44(2021)
A Kernel Correlation Filter Tracking Algorithm Based on Re-detection Mechanism
The traditional Kernel Correlation Filter (KCF) tracking algorithm cannot handle well when the target is moving fast or has large-area occlusionwhich may cause the target to be lost. Based on the traditional KCF algorithmthis paper proposes three mechanismsnamelytarget loss detectionfirst frame re-detection and extended area re-detectionto solve the above problems.The maximum response score and Average Peak Correlation Energy (APCE)are used to determine whether the target is missing.When the target is about to be lostthe extended area re-detection mechanism is adopted. When the target image is similar to the first-frame image of the targetthe first frame re-detection mechanism is adopted. In order to reflect the tracking performance of the proposed algorithm14 sets of video sequences were selected from the VOT2016 and OTB100 data sets as the test setsin which 7 sets of video sequences had the scenarios of target occlusion and fast motion.A quantitative comparative experiment shows thatcompared with the traditional KCF algorithmthe improved algorithm reduces the average Center Position Error (CPE) by 20 pixelsand increases the average Overlapping Rate (OR) by 16.1%.
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SUN Xiaofeng, JIA Ziyan, ZHANG Lei, WU Xuetao. A Kernel Correlation Filter Tracking Algorithm Based on Re-detection Mechanism[J]. Electronics Optics & Control, 2021, 28(8): 44
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Received: Aug. 17, 2020
Accepted: --
Published Online: Aug. 16, 2021
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