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Occlusion-Aware Fragment-Based Tracking With Spatial-Temporal Consistency

机译:具有时空一致性的基于遮挡感知片段的跟踪

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摘要

In this paper, we present a robust tracking method by exploiting a fragment-based appearance model with consideration of both temporal continuity and discontinuity information. From the perspective of probability theory, the proposed tracking algorithm can be viewed as a two-stage optimization problem. In the first stage, by adopting the estimated occlusion state as a prior, the optimal state of the tracked object can be obtained by solving an optimization problem, where the objective function is designed based on the classification score, occlusion prior, and temporal continuity information. In the second stage, we propose a discriminative occlusion model, which exploits both foreground and background information to detect the possible occlusion, and also models the consistency of occlusion labels among different frames. In addition, a simple yet effective training strategy is introduced during the model training (and updating) process, with which the effects of spatial-temporal consistency are properly weighted. The proposed tracker is evaluated by using the recent benchmark data set, on which the results demonstrate that our tracker performs favorably against other state-of-the-art tracking algorithms.
机译:在本文中,我们通过同时考虑时间连续性和不连续性信息,利用基于片段的外观模型,提出了一种鲁棒的跟踪方法。从概率论的角度来看,提出的跟踪算法可以看作是两阶段优化问题。在第一阶段,通过将估计的遮挡状态作为先验,可以通过解决优化问题来获得被跟踪对象的最佳状态,其中基于分类得分,遮挡先验和时间连续性信息设计目标函数。在第二阶段,我们提出了一种判别性遮挡模型,该模型利用前景和背景信息来检测可能的遮挡,并对不同帧之间遮挡标签的一致性进行建模。此外,在模型训练(和更新)过程中引入了一种简单而有效的训练策略,通过该策略可以适当权衡时空一致性的影响。通过使用最新的基准数据集对拟议的跟踪器进行了评估,其结果表明我们的跟踪器在性能上优于其他最新的跟踪算法。

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