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Memory-based particle filter for real-time object tracking

机译:基于内存的粒子过滤器,用于实时对象跟踪

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Particle filter tracking algorithm based on global features becomes invalid when the target's appearance changes or is similar to the background. In order to solve such problems, we propose a memory-based particle filter which considers both local and global feature. Particles provide reliable matching area for local features so that error matching points can be eliminated. Then, local feature points matched to the target will guide the propagation of particles in order to avoid particle degeneration. Experimental results show the tracking effect of the proposed method under various conditions such as scale variation, sudden change of illumination, rotation and so on.
机译:当目标的外观发生变化或与背景相似时,基于全局特征的粒子滤波跟踪算法将失效。为了解决这些问题,我们提出了一种同时考虑局部和全局特征的基于存储器的粒子滤波器。粒子为局部特征提供了可靠的匹配区域,因此可以消除错误匹配点。然后,与目标匹配的局部特征点将引导粒子的传播,以避免粒子退化。实验结果表明,该方法在尺度变化,光照突变,旋转等多种条件下的跟踪效果。

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