自适应结构化子块跟踪

Liu Jing-Wen, Sun Wei-Ping, Xia Tao
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引用次数: 0

摘要

局部特征以其在光照、变形、旋转和局部遮挡等方面的鲁棒性被广泛应用于视觉目标跟踪中。传统的基于前帧知识积累的特征选择算法通常采用变化连续性的视角,这可能导致算法的退化。利用局部子块的区别性和唯一性,建立了局部特征的自动预选机制,提出了粒子滤波框架下的结构化子块跟踪算法。根据当前帧中子块的判别函数分布,自动选择最优子块。此外,我们还利用历史预测的准确性降低了块搜索成本。实验验证了该算法在处理小变形和局部遮挡时的鲁棒性。
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Adaptive structured sub-blocks tracking
Local features have been widely used in visual object tracking for their robustness in illumination, deformation, rotation and partial occlusion. Traditional feature selection algorithms based on accumulated knowledge of previous frames usually adopt the perspective of continuity of changes, which could lead to degradation. Exploiting discrimination and uniqueness of local sub-blocks, we build an automatic preselection mechanism for local features and propose the structured sub-blocks tracking algorithm under particle filter framework. Optimal sub-blocks are chosen automatically according to their discriminant function distribution in current frame. Furthermore, we reduce blocks search costs with help of historical prediction accuracy. Experiments validate the robustness of our algorithm in tackling with small deformation and partial occlusion.
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