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High Confidence Updating Strategy on Staple Trackers

机译:装订跟踪器的高可信度更新策略

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摘要

In the visual tracking, correlation filtering (CF) based on tracking algorithms have shown favorable performance in recent years, and have the impressive performance on benchmark datasets. However, the tracking model has limited information about their context and can easily drift in cases of fast motion, occlusion or background clutter, and the trackers update tracking models at each frame without considering whether the detection is accurate or not. In this paper, we present an improved strategy that is adding more background context and changing the tracker model updating strategy. Experimental results show that the performance of the model has been improved effectively.
机译:在视觉跟踪中,基于跟踪算法的相关过滤(CF)近年来显示出良好的性能,并且在基准数据集上具有令人印象深刻的性能。但是,跟踪模型有关其上下文的信息有限,并且在快速运动,遮挡或背景混乱的情况下很容易漂移,并且跟踪器会在每帧更新跟踪模型,而无需考虑检测是否准确。在本文中,我们提出了一种改进的策略,该策略增加了更多背景上下文并更改了跟踪器模型更新策略。实验结果表明,该模型的性能得到了有效改善。

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