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Visual Tracking Based on Adaptive Mean Shift Multiple Appearance Models

机译:基于自适应平均换档多个外观模型的视觉跟踪

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摘要

To overcome the tracking issues caused by the complex environment namely, illumination variation and background clutters, tracking algorithm was proposed based on multi-cues fusion to construct a robust appearance model, indeed the global motion is estimated using the H∞ filter based on the nearly constant velocity motion model, then the traditional Mean Shift (MS) estimate the local state associated with each sub appearance model, finally the weights of the sub appearance models are adjusted and combined to estimate the final state. The proposed method is tested on public videos that present different environment issues. Experiences and comparisons conducted show the robustness of our methods in challenging tracking conditions.
机译:为了克服复杂环境(光照变化和背景杂波)带来的跟踪问题,提出了基于多线索融合的跟踪算法,建立了鲁棒的外观模型,并利用H∞ 基于近似等速运动模型进行滤波,然后传统的均值漂移(MS)估计与每个子外观模型相关的局部状态,最后调整子外观模型的权重并组合以估计最终状态。该方法在呈现不同环境问题的公共视频上进行了测试。经验和比较表明,我们的方法在具有挑战性的跟踪条件下具有鲁棒性。

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