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A Target Model Construction Algorithm for Robust Real-Time Mean-Shift Tracking

机译:鲁棒的实时均值漂移跟踪目标模型构建算法

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Mean-shift tracking has gained more interests, nowadays, aided by its feasibility of real-time and reliable tracker implementation. In order to reduce background clutter interference to mean-shift object tracking, this paper proposes a novel indicator function generation method. The proposed method takes advantage of two ‘a priori’ knowledge elements, which are inherent to a kernel support for initializing a target model. Based on the assured background labels, a gradient-based label propagation is performed, resulting in a number of objects differentiated from the background. Then the proposed region growing scheme picks up one largest target object near the center of the kernel support. The grown object region constitutes the proposed indicator function and this allows an exact target model construction for robust mean-shift tracking. Simulation results demonstrate the proposed exact target model could significantly enhance the robustness as well as the accuracy of mean-shift object tracking.
机译:如今,借助其实时性和可靠跟踪器实施的可行性,均值漂移跟踪已引起了更多关注。为了减少背景杂波对均值移动目标跟踪的干扰,提出了一种新的指标函数生成方法。所提出的方法利用了两个“先验”知识元素,这是内核对初始化目标模型的支持所固有的。基于保证的背景标签,将执行基于梯度的标签传播,从而导致许多对象与背景有所不同。然后,提出的区域增长方案在内核支持中心附近拾取了一个最大的目标对象。增长的对象区域构成了建议的指标函数,这可以为稳健的均值漂移跟踪提供精确的目标模型构造。仿真结果表明,提出的精确目标模型可以显着提高鲁棒性以及均值移动目标跟踪的准确性。

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