改进的KCF算法及其在目标损失预测中的应用

Yuhuan Fei, Guo-wang Gao, Dan Wu, Fei Wang, Ze Wang
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引用次数: 1

摘要

为了解决模糊环境下的跟踪漂移问题,降低模糊场景下目标跟踪的失败率,本文在传统KCF算法的基础上,提出了一种模糊情况下的目标损失预警机制,该机制利用了对目标跟踪过程中三维响应图的分析。并利用响应最大值(Fmax)和相邻两帧之间响应的平均值来测量目标的跟踪状态,判断目标是否存在跟踪漂移。同时,采用APCE评价准则,减少了不必要的模型更新,提高了计算速度。仿真结果表明,目标损失预警机制能够在跟踪漂移发生时准确预警KCF算法,在遮挡场景下,与传统目标跟踪算法相比,KCF算法的跟踪成功率和跟踪精度分别提高9.5%和5.3%。
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Improved KCF algorithm and its application to target lost prediction
In order to solve the tracking drift problem in the obscured environment and reduce the failure rate of target tracking in the obscured scene, this paper proposes a target loss warning mechanism in the obscured situation based on the traditional KCF algorithm, which uses the analysis of the 3D response map during the target tracking process, and uses the response maximum (Fmax) and the average value of the response between 2 adjacent frames to measure the tracking status of the target and determine whether the target has tracking drift. At the same time, the APCE evaluation criterion is used to reduce unnecessary model updates and increase the speed of computation. The simulation results demonstrate that the target loss warning mechanism can accurately warn the KCF algorithm when tracking drift occurs, and the tracking success rate and tracking accuracy can be improved by 9.5% and 5.3% respectively compared to the traditional target tracking algorithm in the occlusion scenario.
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