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Towards a Robust Scale Invariant Feature Correspondence

机译:迈向鲁棒尺度不变特征对应

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In this paper, we introduce an improved scale invariant feature correspondence algorithm which depends on the Similarity-Topology Matching algorithm. It pays attention not only to the similarity between features but also to the spatial layout of every matched feature and its neighbours. The features are represented as an undirected graph where every node represents a local feature and every edge represents adjacency between them. The topology of the resulting graph can be considered as a robust global feature of the represented object. The matching process is modeled as a graph matching problem; which in turn is formulated as a variation of the quadratic assignment problem. The Similarity-Topology Matching algorithm achieves superior performance in almost all the experiments except when the image has been exposed to scaling deformations. An amendment has been done to the algorithm in order to cope with this limitation. In this work, we depend not only on the distance between the two interest points but also on the scale at which the interest points are detected to decide the neighbourhood relations between every pair of features. A set of challenging experiments conducted using 50 images (contain repeated structure) representing 5 objects from COIL-100 data-set with extra synthetic deformations reveal that the modified version of the Similarity-Topology Matching algorithm has better performance. It is considered more robust especially under the scale deformations.
机译:在本文中,我们介绍了一种改进的尺度不变特征对应算法,该算法依赖于相似性拓扑匹配算法。它不仅关注要素之间的相似性,还关注每个匹配要素及其邻居的空间布局。这些要素表示为无向图,其中每个节点代表一个局部要素,每个边代表它们之间的邻接。结果图的拓扑可以视为所表示对象的鲁棒全局特征。匹配过程被建模为图匹配问题;反过来,它被表述为二次分配问题的变体。相似度-拓扑匹配算法在几乎所有实验中均具有出色的性能,但当图像暴露于缩放变形时除外。为了应对该限制,已对该算法进行了修改。在这项工作中,我们不仅取决于两个兴趣点之间的距离,而且还取决于检测到兴趣点的规模来决定每对特征之间的邻域关系。使用代表来自COIL-100数据集的5个对象的50张图像(包含重复结构)进行的一组具有挑战性的实验,这些结果具有额外的合成变形,这些结果表明,相似度拓扑匹配算法的修改版本具有更好的性能。它被认为更坚固,尤其是在水垢变形下。

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