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Robust Visual Tracking with Double Bounding Box Model

机译:使用双边界框模型强大的视觉跟踪

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A novel tracking algorithm that can track a highly non-rigid target robustly is proposed using a new bounding box representation called the Double Bounding Box (DBB). In the DBB, a target is described by the combination of the Inner Bounding Box (IBB) and the Outer Bounding Box (OBB). Then our objective of visual tracking is changed to find the IBB and OBB instead of a single bounding box, where the IBB and OBB can be easily obtained by the Dempster-Shafer (DS) theory. If the target is highly non-rigid, any single bounding box cannot include all foreground regions while excluding all background regions. Using the DBB, our method does not directly handle the ambiguous regions, which include both the foreground and background regions. Hence, it can solve the inherent ambiguity of the single bounding box representation and thus can track highly non-rigid targets robustly. Our method finally finds the best state of the target using a new Constrained Markov Chain Monte Carlo (CMCMC)-based sampling method with the constraint that the OBB should include the IBB. Experimental results show that our method tracks non-rigid targets accurately and robustly, and outperforms state-of-the-art methods.
机译:一种新的跟踪算法,可以使用称为双边界框(DBB)的新边界框表示来追踪强大的非刚性目标。在DBB中,通过内边界框(IBB)和外边界框(OBB)的组合来描述目标。然后,我们的视觉跟踪的目的被更改为查找IBB和OBB而不是单个边界框,其中IBB和OBB可以通过Dempster-Shafer(DS)理论轻松获得。如果目标是高度刚性的,则任何单个边界框都不能包含所有前景区域,同时排除所有背景区域。使用DBB,我们的方法不直接处理含糊不清的区域,包括前景和背景区域。因此,它可以解决单个边界框表示的固有模糊性,因此可以鲁棒地跟踪高度刚性目标。我们的方法最终使用新的约束的Markov链Monte Carlo(CMCMC)的采样方法找到了目标的最佳状态,其中约束了OBB应包括IBB。实验结果表明,我们的方法准确且鲁棒地跟踪非刚性目标,并且优于最先进的方法。

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