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Recognition of occluded objects by reducing feature interactions

机译:通过减少特征交互来识别被遮挡的对象

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The main difficulty for the recognition of occluded objects lies in the fact that the original feature set is corrupted and no longer reliable to represent the object of interest. This corruption is caused by the interactions between features from different objects, denoted as feature interactions, which is a key issue addressed in our algorithm. In this paper, a local to global strategy is represented for the occlusion recognition problem, which combines the pairwise grouping and graph matching algorithms. Local appearance similarity serves as priors to reduce feature interactions, by which the performance of graph matching algorithms is improved in order to deal with the contaminated data set. With our formulation, a global decision on object recognition can be made based on locally gathered information. Experimental results show that the proposed framework can dramatically reduce incorrect matches and objects under severe occlusions can still be recognized.
机译:识别被遮挡对象的主要困难在于以下事实:原始特征集已损坏,并且不再能够可靠地表示感兴趣的对象。这种损坏是由来自不同对象的要素之间的相互作用引起的,称为要素相互作用,这是我们算法中解决的关键问题。本文提出了一种针对遮挡识别问题的局部到全局策略,该策略结合了成对分组和图匹配算法。局部外观相似性是减少特征交互的先决条件,从而提高了图形匹配算法的性能,以处理受污染的数据集。通过我们的表述,可以基于本地收集的信息做出有关对象识别的全球决策。实验结果表明,所提出的框架可以大大减少不正确的匹配,并且在严重遮挡下的物体仍然可以被识别。

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