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Adaptive SIFT Matching Using Cascading Vocabulary Tree

机译:使用级联词汇树的自适应SIFT匹配

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We present a novel vocabulary tree data structure for adaptive SIFT matching. Our matching process contains an offline module to cluster features from a group of reference images and an online module to match them to the live images in order to enhance matching robustness. The main contribution lies in constructing two different vocabulary structures cascaded in one tree, which we have called cascading vocabulary tree that can be used to not only cluster features but also implement exact feature matching as k-d tree does. Cascading key frame selection using our vocabulary structure can be put the matching process forward, which gives us a way to employ a cascading feature matching strategy to combine matching results of cascading vocabulary tree and key frame. Experimental results show that our method not only dramatically enhances matching robustness but also has enough flexibility to adaptively adjust itself to meet diverse requirements of domain applications for efficiency and robustness of SIFT matching.
机译:我们提出了一种新颖的词汇树数据结构,用于自适应SIFT匹配。我们的匹配过程包括一个离线模块,用于对一组参考图像中的要素进行聚类;一个在线模块,用于将其与实时图像进行匹配,以增强匹配的鲁棒性。主要的贡献在于构建了在一个树中级联的两种不同的词汇结构,我们称其为层叠词汇树,它不仅可以用来聚类特征,而且可以像k-d树一样实现精确的特征匹配。可以提出利用我们的词汇结构进行级联关键帧选择的方法,这为我们提供了一种采用级联特征匹配策略来组合级联词汇树和关键帧的匹配结果的方法。实验结果表明,我们的方法不仅极大地提高了匹配的鲁棒性,而且还具有足够的灵活性来自适应地调整自身,以满足领域应用对SIFT匹配的效率和鲁棒性的各种要求。

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