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Efficient and robust multi-template tracking using multi-start interactive hybrid search

机译:使用多起点交互式混合搜索进行高效且强大的多模板跟踪

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摘要

This paper presents an efficient, accurate, and robust template-based visual tracker. In this method, the target is represented by two heterogeneous and adaptive Gaussian-based templates which can model both short- and long-term changes in the target appearance. The proposed localization algorithm features an interactive multi-start optimization process that takes into account generic transformations using a combination of sampling- and gradient-based techniques in a unified probabilistic framework. Both the short- and long-term templates are used to find the best location of the target, simultaneously. This approach further increased both the efficiency and accuracy of the proposed tracker. The contributions of the proposed tracking method include: (1) Flexible multi-model target representation which in general can accurately and robustly handle challenging situations such as significant appearance and shape changes, (2) Robust template updating algorithm where a combination of tracking time step, a forgetting factor, and an uncertainty margin are used to update the mean and variance of the Gaussian functions, and (3) Efficient and interactive multi-start optimization which can improve the accuracy, robustness, and efficiency of the target localization by parallel searching in different time-varying templates. Several challenging and publicly available videos have been used to both demonstrate and quantify the superiority of the proposed tracking method in comparison with other state-of-the-art trackers.
机译:本文提出了一种高效,准确和健壮的基于模板的视觉跟踪器。在这种方法中,目标由两个基于异构和自适应高斯的模板表示,这些模板可以对目标外观的短期和长期变化进行建模。所提出的定位算法具有交互式多起点优化过程,该过程考虑了在统一概率框架中结合使用基于采样和基于梯度的技术的通用转换。短期和长期模板均用于同时找到目标的最佳位置。这种方法进一步提高了所提出的跟踪器的效率和准确性。所提出的跟踪方法的贡献包括:(1)灵活的多模型目标表示,通常可以准确而稳健地处理具有挑战性的情况,例如外观和形状发生重大变化;(2)结合跟踪时间步长的稳健模板更新算法,遗忘因子和不确定性裕度用于更新高斯函数的均值和方差,以及(3)高效的交互式多起点优化,可通过并行搜索提高目标定位的准确性,鲁棒性和效率在不同的时变模板中。与其他最新的跟踪器相比,已经使用了几个具有挑战性且可公开获得的视频来演示和量化建议的跟踪方法的优越性。

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