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Object tracking in the presence of shaking motions

机译:在存在摇动运动的情况下跟踪

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摘要

Visual tracking can be particularly interpreted as a process of searching for targets and optimizing the searching. In this paper, we present a novel tracker framework for tracking shaking targets. We formulate the underlying geometrical relevance between a search scope and a target displacement. A uniform sampling among the search scopes is implemented by sliding windows. To alleviate any possible redundant matching, we propose a double-template structure comprising of initial and previous tracking results. The element-wise similarities between a template and its candidates are calculated by jointly using kernel functions which provide a better outlier rejection property. The STC algorithm is used to improve the tracking results by maximizing a confidence map incorporating temporal and spatial context cues about the tracked targets. For better adaptation to appearance variations, we employ a linear interpolation to update the context prior probability of the STC method. Both qualitative and quantitative evaluations are performed on all sequences that contain shaking motions and are selected from the OTB-50 challenging benchmark. The proposed approach is compared with and outperforms 12 state-of-the-art tracking methods on the selected sequences while running on MATLAB without code optimization. We have also performed further experiments on the whole OTB-50 and VOT 2015 datasets. Although the most of sequences in these two datasets do not contain motion blur that this paper is focusing on, the results of our method are still favorable compared with all of the state-of-the-art approaches.
机译:可视跟踪可以特别解释为搜索目标并优化搜索的过程。在本文中,我们提出了一种用于跟踪摇动目标的新型跟踪框架。我们制定搜索范围和目标位移之间的潜在几何相关性。搜索范围之间的统一采样由滑动窗口实现。为了减轻任何可能的冗余匹配,我们提出了一种双模板结构,包括初始和以前的跟踪结果。模板和其候选者之间的元素和其候选的相似性通过共同使用内核函数来计算,该函数提供更好的异常值拒绝属性。 STC算法用于通过最大化结合关于跟踪目标的时间和空间上下文提示的置信度图来改进跟踪结果。为了更好地适应外观变化,我们采用线性插值来更新STC方法的上下文概率。定性和定量评估都是对含有振动运动的所有序列进行,并且选自OTB-50具有挑战性的基准。将所提出的方法与在未经代码优化的MATLAB上运行时与所选序列的12型最新的跟踪方法进行比较和胜过12个最先进的跟踪方法。我们还在整个OTB-50和VOT 2015数据集上执行了进一步的实验。虽然这两个数据集中的大部分序列不含本文专注的运动模糊,但我们的方法结果与所有最先进的方法相比仍然有利。

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