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Robust mean-shift tracking with corrected background-weighted histogram

机译:校正背景加权直方图的稳健均值漂移跟踪

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摘要

The background-weighted histogram (BWH) algorithm proposed by Comaniciu et al. attempts to reduce the interference of background in target localisation in mean-shift tracking. However, the authors prove that the weights assigned to pixels in the target candidate region by BWH are proportional to those without background information, that is, BWH does not introduce any new information because the mean-shift iteration formula is invariant to the scale transformation of weights. Then a corrected BWH (CBWH) formula is proposed by transforming only the target model but not the target candidate model. The CBWH scheme can effectively reduce background's interference in target localisation. The experimental results show that CBWH can lead to faster convergence and more accurate localisation than the usual target representation in mean-shift tracking. Even if the target is not well initialised, the proposed algorithm can still robustly track the object, which is hard to achieve by the conventional target representation.
机译:Comaniciu等人提出的背景加权直方图(BWH)算法。尝试在均值漂移跟踪中减少背景对目标定位的干扰。然而,作者证明BWH分配给目标候选区域中像素的权重与没有背景信息的权重成正比,也就是说,BWH不会引入任何新信息,因为均值漂移迭代公式对于Scale的尺度变换是不变的。重量。然后通过仅变换目标模型而不变换目标候选模型来提出校正的BWH(CBWH)公式。 CBWH方案可以有效减少背景对目标定位的干扰。实验结果表明,与均值漂移跟踪中的常规目标表示相比,CBWH可以导致更快的收敛和更准确的定位。即使目标没有很好地初始化,所提出的算法仍然可以稳健地跟踪目标,这是常规目标表示难以实现的。

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