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Segmentation for robust tracking in the presence of severe occlusion

机译:在严重遮挡的情况下进行分割以进行可靠的跟踪

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摘要

Tracking an object in a sequence of images can fail due to partial occlusion or clutter. Robustness to occlusion can be increased by tracking the object as a set of "parts" such that not all of these are occluded at the same time. However, successful implementation of this idea hinges upon finding a suitable set of parts. In this paper we propose a novel segmentation, specifically designed to improve robustness against occlusion in the context of tracking. The main result shows that tracking the parts resulting from this segmentation outperforms both tracking parts obtained through traditional segmentations, and tracking the entire target. Additional results include a statistical analysis of the correlation between features of a part and tracking error, and identifying a cost function that exhibits a high degree of correlation with the tracking error.
机译:跟踪图像序列中的对象可能会由于部分遮挡或混乱而失败。可以通过将对象作为一组“部分”进行跟踪来提高遮挡的鲁棒性,这样就不会同时遮挡所有这些部分。但是,该想法的成功实施取决于找到合适的零件组。在本文中,我们提出了一种新颖的分割方法,该方法专门设计用于在跟踪的情况下提高针对遮挡的鲁棒性。主要结果表明,跟踪由此分割产生的零件要优于通过传统分割获得的跟踪零件和跟踪整个目标。其他结果包括对零件特征和跟踪误差之间的相关性进行统计分析,并确定与跟踪误差具有高度相关性的成本函数。

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