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Research on Objective Tracking of Mean Shift Algorithm Based on Particle Swarm Optimization

机译:基于粒子群算法的均值漂移算法目标跟踪研究

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摘要

In light of Mean Shiftȁ9;s inability to update model during objective tracking process, an updating solution for models of Means Shift algorithm is proposed by utilization of Particle Swarm Optimization. This solution improves each Eigen value probability, as a single particle, in model image characteristic space by using Particle Swarm Optimization algorithm, time variations according to probability can be calculated to acquire variation of all Eigen value in models, which in turn, results in updating of models. In the solution, the combinational advantage of Particle Swarmȁ9;s global and regional search is fully utilized to acquire self-adaptable and optimal models. Experiment results indicate the solution can effectively solve modelsȁ9; un-matching problems resulted from spinning and masking of moving objective so as to realize accurate and fast objective tracking and improve self-adapting ability of tracking algorithm.
机译:针对MeanShiftȁ9在目标跟踪过程中无法更新模型的问题,提出了利用粒子群算法对Mean Shift算法模型进行更新的方法。该解决方案通过使用粒子群优化算法提高了模型图像特征空间中每个特征值的概率,成为单个粒子,可以根据概率计算时间变化,以获取模型中所有特征值的变化,进而导致更新。的模型。在该解决方案中,充分利用了“粒子群” 9的全局和区域搜索的组合优势来获取自适应的最佳模型。实验结果表明,该解决方案可以有效地求解模型ȁ9;运动目标的旋转和掩蔽导致不匹配问题,从而实现了准确,快速的目标跟踪,提高了跟踪算法的自适应能力。

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