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An adaptive coupled-layer visual model for robust visual tracking

机译:用于鲁棒视觉跟踪的自适应耦合层视觉模型

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This paper addresses the problem of tracking objects which undergo rapid and significant appearance changes. We propose a novel coupled-layer visual model that combines the target's global and local appearance. The local layer in this model is a set of local patches that geometrically constrain the changes in the target's appearance. This layer probabilistically adapts to the target's geometric deformation, while its structure is updated by removing and adding the local patches. The addition of the patches is constrained by the global layer that probabilistically models target's global visual properties such as color, shape and apparent local motion. The global visual properties are updated during tracking using the stable patches from the local layer. By this coupled constraint paradigm between the adaptation of the global and the local layer, we achieve a more robust tracking through significant appearance changes. Indeed, the experimental results on challenging sequences confirm that our tracker outperforms the related state-of-the-art trackers by having smaller failure rate as well as better accuracy.
机译:本文解决了跟踪快速发生明显外观变化的对象的问题。我们提出了一种新颖的耦合层视觉模型,该模型结合了目标的全局和局部外观。此模型中的局部层是一组局部补丁,这些补丁在几何上约束了目标外观的变化。该层可能会适应目标的几何变形,同时通过删除和添加局部补丁来更新其结构。补丁的添加受到全局层的约束,该全局层概率地模拟目标的全局视觉属性,例如颜色,形状和明显的局部运动。全局视觉属性在跟踪过程中使用本地层的稳定补丁更新。通过全局层和局部层的适应之间的这种耦合约束范例,我们可以通过显着的外观变化实现更强大的跟踪。确实,具有挑战性的序列的实验结果证实了我们的跟踪器具有更低的故障率以及更好的准确性,其性能优于相关的最新跟踪器。

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